The present disclosure relates to an apparatus and a method for channel encoding and decoding in a communication or broadcasting system.
To meet the demand for wireless data traffic having increased since deployment of 4G communication systems, efforts have been made to develop an improved 5G or pre-5G communication system. Therefore, the 5G or pre-5G communication system is also called a ‘Beyond 4G Network’ or a ‘Post LTE System’.
The 5G communication system is considered to be implemented in higher frequency (mm Wave) bands, e.g., 60 GHz bands, so as to accomplish higher data rates. To decrease propagation loss of the radio waves and increase the transmission distance, the beamforming, massive multiple-input multiple-output (MIMO), Full Dimensional MIMO (FD-MIMO), array antenna, an analog beam forming, large scale antenna techniques are discussed in 5G communication systems.
In addition, in 5G communication systems, development for system network improvement is under way based on advanced small cells, cloud Radio Access Networks (RANs), ultra-dense networks, device-to-device (D2D) communication, wireless backhaul, moving network, cooperative communication, Coordinated Multi-Points (CoMP), reception-end interference cancellation and the like.
In the 5G system, Hybrid FSK and QAM Modulation (FQAM) and sliding window superposition coding (SWSC) as an advanced coding modulation (ACM), and filter bank multi carrier (FBMC), non-orthogonal multiple access (NOMA), and sparse code multiple access (SCMA) as an advanced access technology have been developed. In a communication or broadcasting system, link performance may remarkably deteriorate due to various types of noises, a fading phenomenon, and inter-symbol interference (ISI) of a channel. Therefore, to implement high-speed digital communication or broadcasting systems requiring high data throughput and reliability like next-generation mobile communications, digital broadcasting, and portable Internet, there is a need to develop technologies to overcome the noises, the fading, and the inter-symbol interference. As part of studies to overcome the noises, etc., a study on an error-correcting code which is a method for increasing reliability of communications by efficiently recovering distorted information has been actively conducted recently.
The above information is presented as background information only to assist with an understanding of the present disclosure. No determination has been made, and no assertion is made, as to whether any of the above might be applicable as prior art with regard to the present disclosure.
Aspects of the present disclosure are to address at least the above-mentioned problems and/or disadvantages and to provide at least the advantages described below. Accordingly, an aspect of the present disclosure is to provide a method and an apparatus for low density parity-check (LDPC) encoding/decoding capable of supporting various input lengths and code rates.
Another aspect of the present disclosure is to provide a method and an apparatus for LDPC encoding/decoding capable of supporting various codeword lengths from a designed parity-check matrix.
Aspects of the present disclosure are not limited to the above-mentioned aspects. That is, other aspects that are not mentioned may be obviously understood by those skilled in the art to which the present disclosure pertains from the following description.
In accordance with an aspect of the present disclosure, a method for channel encoding in a communication or broadcasting system is provided. The method includes determining a block size of a parity-check matrix, determining a sequence for generating the parity-check matrix, determining a section including the determined block size, determining a representative value corresponding to the determined section, and transforming the sequence by applying the sequence a predefined operation to the sequence using the representative value.
In accordance with another aspect of the present disclosure, a method for channel encoding in a communication or broadcasting system is provided. The method includes determining a block size of a parity-check matrix, determining a sequence for generating the parity-check matrix, determining an integer value based on the predetermined block size according to the predetermined method, and transforming the sequence by applying the sequence a predefined operation to the sequence using the integer value.
According to the present disclosure, it is possible to support the LDPC code for the variable length and the variable rate.
The effects that may be achieved by the embodiments of the present disclosure are not limited to the above-mentioned aspects. That is, other effects that are not mentioned may be obviously understood by those skilled in the art to which the present disclosure pertains from the following description.
In accordance with another aspect of the present disclosure, a method for channel encoding in a communication or broadcasting system is provided. The method includes determining a block size Z, and performing encoding based on the block size and a parity-check matrix corresponding to the block size, in which the block size is included in any one of the plurality of block size groups and the parity-check matrix is different for each block size group.
In accordance with another aspect of the present disclosure, a method for channel decoding in a communication or broadcasting system is provided. The method includes determining a block size Z, and performing decoding based on the block size and a parity-check matrix corresponding to the block size, in which the block size is included in any one of the plurality of block size groups and the parity-check matrix is different for each block size group.
In accordance with another aspect of the present disclosure, an apparatus for channel encoding in a communication or broadcasting system is provided. The apparatus includes a transceiver, and a controller configured to determine a block size Z, and perform encoding based on the block size and a parity-check matrix corresponding to the block size, in which the block size is included in any one of the plurality of block size groups and the parity-check matrix is different for each block size group.
In accordance with another aspect of the present disclosure, an apparatus for channel decoding in a communication or broadcasting system is provided. The apparatus includes a transceiver, and a controller configured to determine a block size Z, and perform decoding based on the block size and a parity-check matrix corresponding to the block size, in which the block size is included in any one of the plurality of block size groups and the parity-check matrix is different for each block size group.
Other aspects, advantages, and salient features of the disclosure will become apparent to those skilled in the art from the following detailed description, which, taken in conjunction with the annexed drawings, discloses various embodiments of the present disclosure.
The above and other aspects, features, and advantages of certain embodiments of the present disclosure will be more apparent from the following description taken in conjunction with the accompanying drawings, in which:
Throughout the drawings, like reference numerals will be understood to refer to like parts, components, and structures.
The following description with reference to the accompanying drawings is provided to assist in a comprehensive understanding of various embodiments of the present disclosure as defined by the claims and their equivalents. It includes various specific details to assist in that understanding but these are to be regarded as merely exemplary. Accordingly, those of ordinary skill in the art will recognize that various changes and modifications of the various embodiments described herein can be made without departing from the scope and spirit of the present disclosure. In addition, descriptions of well-known functions and constructions may be omitted for clarity and conciseness.
The terms and words used in the following description and claims are not limited to the bibliographical meanings, but, are merely used by the inventor to enable a clear and consistent understanding of the present disclosure. Accordingly, it should be apparent to those skilled in the art that the following description of various embodiments of the present disclosure is provided for illustration purpose only and not for the purpose of limiting the present disclosure as defined by the appended claims and their equivalents.
It is to be understood that the singular forms “a,” “an,” and “the” include plural referents unless the context clearly dictates otherwise. Thus, for example, reference to “a component surface” includes reference to one or more of such surfaces.
Various advantages and features of the present disclosure and methods accomplishing the same will become apparent from the following detailed description of embodiments with reference to the accompanying drawings. However, the present disclosure is not limited to the embodiments disclosed herein but will be implemented in various forms. The embodiments have made disclosure of the present disclosure complete and are provided so that those skilled in the art can easily understand the scope of the present disclosure. Therefore, the present disclosure will be defined by the scope of the appended claims. Like reference numerals throughout the description denote like elements.
Low density parity-check (LDPC) codes that are first introduced by Gallager in the 1960s remain forgotten for a very long time due to complexity that may hardly be implemented at the technology level at that time. However, as performance of turbo codes proposed by Berrou, Glavieux, and Thitimajshima in 1993 approaches Shannon's channel capacity, many studies on channel encoding based on iterative decoding and a graph thereof by performing many different interpretations on performance and characteristics of the turbo codes have been conducted. As a result, if as the LDPC code in the late 1990s is studied again, the LDPC code is decoded by applying sum-product algorithm based iterative decoding to the LDPC code on a tanner graph corresponding to the LDPC code, it was found that the performance of the LDPC code also approaches the Shannon's channel capacity.
The LDPC code may be generally defined as a parity-check matrix and represented using a bipartite graph commonly called the tanner graph.
Hereinafter, systematic LDPC codewords will be described with reference to
The LDPC codes are LDPC encoded by receiving an information word 102 consisting of Kldpc bits or symbols to generate a codeword 100 consisting of Nldpc bits or symbols. Hereinafter, for convenience of explanation, it is assumed that the codeword 100 consisting of Nldpc bits is generated by receiving the information word 102 including Kldpc bits. That is, when the information word I=[i0, i1, i2, . . . , iK
The LDPC code is a kind of linear block codes and includes a process of determining a codeword satisfying conditions of the following Equation 1.
In the above Equation 1, c=[c0, c1, c3, . . . , cK
In the above Equation 1, H represents the parity-check matrix, C represents the codeword, ci represents an i-th codeword bit, and Nldpc represents an LDPC codeword length. In the above Equation 1, hi represents an i-th column of the parity-check matrix H.
The parity-check matrix H consists of the Nldpc columns that are equal to the number of LDPC codeword bits. The above Equation 1 represents that since a sum of a product of the i-th column hi and the i-th codeword bit ci of the parity-check matrix becomes “0’, the i-th column hi has a relationship with the i-th codeword bit ci.
A graph representation method of the LDPC code will be described with reference to
Referring to
A degree of the variable node and the check node on the tanner graph of the LDPC code means the number of edges connected to each node, which is equal to the number of entries other than 0 in the column or the row corresponding to the corresponding node in the parity-check matrix of the LDPC code. For example, in
The LDPC code may be decoded using the iterative encoding algorithm based on the sum-product algorithm on the bipartite graph illustrated in
Herein, a value of an i-th encoding bit may be determined based on a message of an i-th variable node. The value of the i-th encoding bit may be applied with both of a hard decision and a soft decision. Therefore, the performance of the i-th bit ci of the LDPC codeword corresponds to the performance of the i-th variable node of the tanner graph, which may be determined depending on positions and the number of 1's of the i-th column of the parity-check matrix. In other words, the performance of Nldpc codeword bits of the codeword may rely on the positions and the number of 1's of the parity-check matrix, which means that the performance of the LDPC code is greatly affected by the parity-check matrix. Therefore, to design the LDPC code having excellent performance, a method for designing a good parity-check matrix is required.
To easily implement the parity-check matrix used in a communication or broadcasting system, generally, a quasi-cycle LDPC code (QC-LDPC code) using the parity-check matrix of a quasi-cyclic form is mainly used.
The QC-LDPC code has the parity-check matrix consisting of a 0-matrix (zero matrix) having a small square matrix form or circulant permutation matrices. At this time, the permutation matrix means a matrix in which all elements of a square matrix are 0 or 1 and each row or column includes only one 1. Further, the circulant permutation matrix means a matrix in which each element of an identity matrix is circularly shifted.
Hereinafter, the QC-LDPC code will be described in detail.
First of all, the circulant permutation matrix P=(Pi,j) having a size of L×L is defined by the following Equation 2. Here, Pi,j means entries of an i-th row and a j-th column in the matrix P (here, 0≤j<L).
For the permutation matrix P defined as described above, it can be appreciated that Pi (0≤i<L) is the circulant permutation matrices in the form in which each entry of an identify matrix having the size of L×L is circularly shifted in a right direction i times.
The parity-check matrix H of the simplest QC-LDPC code may be expressed by the following Equation 3.
If is defined as the 0-matrix having the size of L×L, each exponent ai,j of the circulant permutation matrices or the 0-matrix in the above Equation 3 has one of {−1, 0, 1, 2, . . . , L−1} values. Further, it can be appreciated that the parity-check matrix H of the above Equation 3 has n column blocks and m row blocks and therefore has a size of mL×nL.
If the parity-check matrix of the above Equation 3 has a full rank, it is apparent that the size of the information word bit of the QC-LDPC code corresponding to the parity-check matrix is (n−m)L. For convenience, (n−m) column blocks corresponding to the information bit are called the information column block, and ma column blocks corresponding to the rest parity bits are called the parity column block.
Generally, a binary matrix having a size of m×n obtained by replacing each of the circulant permutation matrices and the 0-matrix in the parity-check matrix of the above Equation 3 with 1 and 0, respectively, is called a mother matrix or a base matrix M(H) of the parity-check matrix H and an integer matrix having a size of m×n obtained like the following Equation 4 by selecting only exponents of each of the a size of m×n or the 0-matrix is called an exponent matrix E(H) of the parity-check matrix H.
As a result, one integer included in the exponent matrix corresponds to the circulant permutation matrix in the parity-check matrix, and therefore, the exponent matrix may be represented by sequences consisting of integers for convenience. (The sequence is also called an LDPC sequence or an LDPC code sequence to be distinguished from another sequence). In general, the parity-check matrix may be represented by a sequence having algebraically the same characteristics as well as an exponent matrix. In the present disclosure, for convenience, the parity-check matrix is represented by a sequence indicating the location of 1 within the exponent matrix or the parity-check matrix, but a sequence notation that may identify a location of 1 or 0 included in the parity-check matrix is various and therefore is not limited to the notation in the present specification. Therefore, there are various sequence forms showing algebraically the same effect.
In addition, even the transmitting/receiving apparatus on the device may directly generate the parity-check matrix to perform the LDPC encoding and decoding, but, according to the feature of the implementation, the LDPC encoding and decoding may also be performed using the exponent matrix or the sequence having the algebraically same effect as the parity-check matrix. Accordingly, although the present disclosure describes the encoding and decoding using the parity-check matrix for convenience, it is to be noted that the encoding and decoding can be implemented by various methods which can obtain the same effect as the parity-check matrix on the actual device.
For reference, the algebraically same effect means that two or more different representations can be explained or transformed to be perfectly identical to each other logically or mathematically.
For convenience, the embodiment of the present disclosure describes that the circulant permutation matrix corresponding to one block is only one, but the same disclosure may be applied even to the case in which several circulant permutation matrices are included in one block. For example, when the sum of two circulant permutation matrices Pa
According to the above embodiment, generally, in the QC-LDPC code, a plurality of circulant permutation matrices may correspond to one row block and column block in the parity-check matrix, but the present disclosure describes that one circular permutation matrix corresponds to one block for the sake of convenience. However, the gist of the present disclosure is not limited thereto. For reference, a matrix having a size of L×L in which a plurality of circulant permutation matrices overlap in one row block and column block is called a circulant matrix or a circulant.
Meanwhile, the mother matrix or the base matrix for the parity-check matrix and the exponent matrix of the above Equations 5 and 6 means a binary matrix obtained by replacing each circulant permutation matrix and the 0-matrix into 1 and 0, respectively, similar to the definition used in the Equation 3. Here, the sum of the plurality of circulant permutation matrices (i.e., circulant matrix) included in one block is also replaced into 1.
Since the performance of the LDPC code is determined according to the parity-check matrix, there is a need to design the parity-check matrix for the LDPC code having excellent performance. Further, the method for LDPC encoding and decoding capable of supporting various input lengths and code rates is required.
Lifting means a method which is used not only for efficiently designing the QC-LDPC code but also for generating the parity-check matrices having various lengths from a given exponent matrix or generating the LDPC codeword. That is, the lifting means a method which is applied to efficiently design a very large parity-check matrix by setting an L-value determining the size of the circulant permutation matrix or the 0-matrix from the given small mother matrix according to a specific rule, or generates parity-check matrices having various lengths or generates the LDPC codeword or generates the LDPC codeword by applying an appropriate L value to the given exponent matrix or the sequence corresponding thereto.
The existing lifting method and the feature of the QC-LDPC code designed by the lifting are briefly described with reference to the document, S. Myung, K. Yang, and Y. Kim, “Lifting Methods for Quasi-Cyclic LDPC Codes,” IEEE Communications Letters. vol. 10, pp. 489-491, June 2006 (hereinafter Myung2006).
First, when an LDPC code C0 is given, S QC-LDPC codes to be designed by the lifting method are set to be C1, . . . , CS and values corresponding to sizes of row blocks and column blocks of the parity-check matrices of each QC-LDPC code are set to be Lk. Here, C0 corresponds to the smallest LDPC code having the mother matrix of C1, . . . , CS codes as the parity-check matrix and the L0 value corresponding to the size of the row block and the column block is 1. Further, for convenience, a parity-check matrix Hk of each code Ck has an exponent matrix E(Hk)=(ei,j(k)) having a size of m×n and each exponent ei,j(k) is selected as one of the {−1, 0, 1, 2, . . . , Lk−1} values.
The existing lifting method includes operations such as C0→C1→ . . . →CS and has the feature satisfying conditions such as L(k+1)=q(k+1)Lk (here, q(k+1) is a positive integer, k=0, 1, . . . , S−1). Further, if only a parity-check matrix HS of CS is stored by the feature of the lifting process, all of the QC-LDPC codes C0, C1, . . . , CS may be expressed by the following Equation 7 according to the lifting method.
In this manner, not only a method of designing QC-LDPC codes C1, . . . , CS or the like greater than C0 but also a method of generating small codes Ci (i=k−1, k−2, . . . , 1, 0) by an appropriate method such as shown in the above Equation 7 or 8 from the large code Ck is called lifting.
According to the lifting method of the above Equation 7 or 8, Lk values corresponding to the sizes of the row blocks or the column blocks of the parity-check matrices of each QC-LDPC code Ck have a multiple relationship with each other, and thus the exponent matrix is also selected by the specific scheme. As described above, the existing lifting method helps facilitate a design of the QC-LDPC code having improved error floor characteristics by making algebraic or graphical characteristics of each parity-check matrix designed by the lifting good.
However, there is a problem in that each of the Lk values has the multiple relationship with each other and therefore the lengths of each code are greatly limited. For example, it is assumed that a minimum lifting method such as L (k+1)=2*Lk is applied to each Lk value. In this case, the size of the parity-check matrix of each QC-LDPC code may have 2km×2kn. That is, when the lifting is applied in 10 operations (S=10), the size of the parity-check matrix may generate a total of 10 sizes, which means that the QC-LDPC codes having 10 kinds of lengths may be supported.
For this reason, the existing lifting method has slightly unfavorable characteristics in designing the QC-LDPC code supporting various lengths. However, the communication systems generally used require length compatibility of a very high level in consideration of various types of data transmission. For this reason, there is a problem in that the LDPC encoding technique based on the existing lifting method is hardly applied to the mobile communication system.
In order to overcome such a problem, the lifting method considered in the present disclosure will be described in detail as follows.
First, the S LDPC codes to be designed by the lifting method are set to be C1, . . . , CS, and a value corresponding to a size of one row block and column block in the parity-check matrix of each LDPC code CZ is set to be Z (Z=1, . . . , S). (Hereinafter, for convenience, which is named a block size) In addition, the parity-check matrix Hz of each code CZ has an exponent matrix E(Hz)=(ei,j(Z)) of size of m×n. Each of the exponents ei,j(Z) is selected as one of {−1, 0, 1, 2, . . . , Z−1} values. For convenience, in the present disclosure, the exponent representing the 0-matrix is represented as −1 but may be changed to other values according to the convenience of the system.
Therefore, an exponent matrix of the LDPC code CS having the largest parity-check matrix is defined as E(Hs)=(ei,j(S)).
The general lifting method may be expressed by the following Equation 9 to obtain E(Hz)=(ei,j(Z)).
In above Equation 9, the lifting function f (x, Z) is an integer function defined by integers x and Z. That is, the lifting function f (x, Z) is a function which is determined by the size value of the circulant matrix configuring the exponent matrix (or sequence corresponding thereto) for the parity-check matrix of the given QC-LDPC code and the parity-check matrix of the QC-LDPC code. Therefore, briefly summarizing the process of operating the lifting method used in the present disclosure, each exponents are transformed by the Z value determined based on the integers corresponding to each exponent from the exponent matrix given to define the LDPC code and the size Z×Z of the circulant matrix and the LDPC encoding or decoding is performed based on each transformed exponent.
Since the lifting method is applied to the exponent matrix having the size of m×n, the parity-check matrix or the corresponding exponent matrix can be obtained for all cases where the codeword length is n×Z (Z=1, 2, . . . ). In addition, if the parity-check matrix has the full rank, it is apparent that all the cases where the size of the information word bit of the QC-LDPC code corresponding to the parity-check matrix is (n−m) Z (Z=1, 2, . . . ) can be supported. Therefore, it can be seen that the lifting method is a suitable method for the QC-LDPC encoding/decoding that supports very various information word lengths and codeword lengths.
However, according to the document, S. Myung, K. Yang, and J. Kim, “Quasi-Cyclic LDPC Codes for Fast Encoding,” IEEE Transactions on Information Theory. vol. 51, No. 8, pp. 2894-2901, August 2005 (hereinafter Myung2005). The cycle characteristics of the QC-LDPC code are determined according to the mother matrix and the exponent matrix for the parity-check matrix. Since the lifting method of the above Equation 9 changes the exponent matrix for very various Z values from one exponent matrix, it is difficult to control the cycle characteristics of the parity-check matrix.
In other words, when the exponent matrix for all Z values is transformed from the given exponent matrix E(Hs)=(ei,j(S)), it is very difficult to satisfy the conditions described in the above reference document [Myung2005] so that the cycle characteristics are always good. Therefore, according to the present disclosure, by limiting the Z value according to the range of the Z value to be supported, the code design and the lifting method which deteriorates flexibility of the codeword length and the information word length but can instead improve the code performance are suggested.
First of all, it is assumed that a plurality of Z values may be divided into A sets (or groups) Zi (i=1, 2, . . . , A) as shown in the following Equation 10.
Zi={Z|Z=Xi+k·Di,k=0,1, . . . ,Yi},i=1,2, . . . ,A Equation 10
As the detailed example of the above Equation 10, the block size Z=1, 2, 3, . . . , 15, 16, 17, 18, . . . , 31, 32, 34, 36, 38, . . . , 60, 62, 64, 68, 72, 76, . . . , 120, 124, 128, 136, 144, 152, . . . , 240, 248, and 256 are divided into 5 (=A) sets or groups as shown in the following Equation 11.
Z1={1,2, . . . ,15},Z2={16,17, . . . ,31},Z3={32,34,36, . . . ,60,62},Z4={64,68,72, . . . ,120,124},Z5={128,136,144, . . . ,240,248} Equation 11
Representing the above Equation 11 by the method similar to the above Equation 10 is as shown in the following Equation 12.
Zi={Z|Z=Xi+k·Di,k=0,1, . . . ,Yi},i=1,2, . . . ,A
A=5
X1=1,X2=16,X3=32,X4=64,X5=12B
Y1=15,Y2=Y3=Y4=Y5=16
D1=D2=1,D3=2,D4=4,D5=8 Equation 12
The above Equations 10 to 12 are only one method of the representations and may be represented by various methods, and therefore are not necessarily limited thereto.
Describing the above Equations 10 to 12, the block size Z to be supported is first divided into the plurality of sets or groups. For convenience, in the present disclosure, the group of the block size is divided according to the range of the value of the block size and the increasing value of the block size, but it is apparent that the block size may be divided by various methods. For example, there may be various methods, such as dividing block sizes having a certain multiple or divisor relation into groups or dividing the remainders of certain fixed numbers into the same block sizes.
Di, which means a width at which the block size values are increased in each group Zi, is a value that determines granularity for the block size group. For example, according to the above Equations 11 to 12, the number of block sizes and the number of block sizes which are included in Z1 and Z2 are different from each other as 16 to 15, but have a feature increasing by one. In this manner, if the Di values are equal to each other, the granularity is represented as being equal. Referring to Z2 and Z3, the number of block sizes is the same as 16, but are different from each other as D2=1 and D3=2. In this case, the granularities are different from each other, and the D2 is represented as having granularity than that of the D3. That is, the smaller the Di value, the larger the granularity. Generally, the smaller the Di value, the finer the granularity is.
The significance of the decision on the granularity in the design of the QC-LDPC code will be described in more detail.
It is assumed that the mother matrix or the base matrix is defined to generate the parity-check matrix required for the LDPC encoding, and the size of the mother matrix or the base matrix is m×n. In addition, for convenience, if the parity-check matrix has the full rank, the number of information bits and the number of codeword bits each are (n−m) Z and nZ as described above. Therefore, according to the above Equations 10 to 12, if Z∈Zi, then the number of information words and the number of codeword bits are expressed by (n−m)(Xi+k·Di) and n(Xi+k·Di) (k=0, 1, . . . ).
As a result, it may be seen that the number of information bits and the number of codeword bits are each increased by intervals of (n−m) Di and nDi, with (n−m) Xi and nXi being a minimum value. That is, the increase in the information word length or the codeword length is determined by the Di when the mother matrix or the base matrix is determined.
If all Di values are 1, the number of information bits and the number of codeword bits are each increased by intervals of (n−m) and n, so it may be seen that the granularity is considerably large. If the granularity is considerably large, it is possible to maximize and support the flexibility the length in applying the QC-LDPC encoding. (In the case of the LDPC code, the length flexibility can be supported by the conventional shortening and puncturing techniques. However, detailed description thereof will be omitted because it is out of the gist of the present disclosure.)
However, if the granularity is large, the length flexibility is improved, but there are some problems.
First of all, generally, a well-designed LDPC code and other linear block codes improve minimum distance characteristics or the cycle characteristics on the Tanner graph as the length is increased. If a coding gain is represented based on a signal-to-noise ratio (SNR) in units of dB, the coding gain is also improved approximately at a constant rate when the code length is generally increased at a predetermined rate. (However, if the codeword length is gradually increased, the encoding performance is close to Shannon Limit, so the improvement in the encoding performance is limited and the effect is decreased bit by bit) More specifically, for example, for the same code rate, the coding gain also has a similar characteristic if the coding gain when the coding length is increased from 500 to 1000 is the same as the increase rate of the codeword like the case of increasing from 4000 to 8000. On the other hand, if the coding gain when the codeword length increases from 500 to 1000 is the same as the increase length of the codeword like the case of increasing from 4000 to 4500, the difference in the coding gain is larger compared to the case in which the rate is the same. (Generally, in the latter case, the effect of improving the coding gain is usually small.) As described above, it can be seen that the improvement in the coding gain is closely related to the increase rate of the codeword length.
Therefore, as shown in the above Equations 10 to 12, if all D_i values are set to be 1, since the number of information bits and the number of codeword bits are each increased by (n−m) and n, the length flexibility has a great advantage but is more complicated when considering the hardware implementation. In addition, as the codeword length is increased, the performance improvement effect is gradually decreased due to the increase in the codeword length, and therefore setting the Di value by appropriately considering the performance improvement effect compared to the hardware implementation complexity required in the system may be important in the design in the good system.
Therefore, if the performance improvement effect required when the performance improvement effect when the codeword or information word length is increased in the system is equal to or higher than a predetermined level, the Di value may be set to be a value other than 1 according to the range of the Z value. For example, as shown in the above Equation 11 to 12, when the minimum block size value Z=128 at Z5, the information word length and the codeword length are 128 (n−m) and 128n. If the granularity is set to be high and thus Z=129 is included in the Z5, the increase rate in the length becomes a maximum of 129/128 when it is considered the information word length and the codeword length are 129 (n−m) and 129n, such that the increase rate of the information word and the codeword for the Z1 is much smaller than a minimum value 15/14 (corresponding to the case of Z=14, 15). Therefore, it may be easy to consider that the coding gain effect according to the increase of the codeword length is very small. Therefore, if the Z value is relatively large, it is more efficient to approximately adjust and use the Di value to obtain the coding gain required by the system.
In the above Equations 10 to 12, for convenience, only the case in which the Di value is defined in one set of block sizes to have the predetermined granularity is described, but the present disclosure is not limited thereto. If the increase length of the block size is not constant, among the differences in the block sizes included in one set, a value having a minimum absolute value, or an average value or a median or the like for a difference between two neighboring elements may be represented as the granularity of the set. In other words, if one set of the block sizes is given as {64, 68, 76, 84, 100}, for convenience, the granularity may be defined as 4 which is the smallest difference between the two elements, or as 9 which is an average value of 48, 8, or 16, or 8 which is the difference in two neighboring elements, or as 8 which is a median.
The length flexibility is improved when the granularity is high, like setting all the Di values to be 1, whereas there may be a difficulty in designing a good QC-LDPC code.
In general, a system using LDPC encoding has a disadvantage in that the complexity of the implementation is increased if there are a lot of parity-check matrices independent of each other. Therefore, like the lifting method, a plurality of parity-check matrices are designed to perform the LDPC encoding using the method corresponding to one exponent matrix or LDPC sequence However, referring to the following document, S. Myung, K. Yang, and J. Kim, “Quasi-Cyclic LDPC Codes for Fast Encoding,” IEEE Transactions on Information Theory. vol. 51, No. 8, pp. 2894-2901, August 2005 (hereinafter Myung 2005). Generally, the QC-LDPC encoding has the cycle characteristics on a special Tanner graph according to the mother matrix (or base matrix) and the exponent matrix of the parity-check matrix and the block size. If the parity-check matrix for various block sizes is supported from one exponent matrix or LDPC sequence, it is very difficult to maintain the good cycle characteristics for all the block sizes. This is because the more kinds of block sizes, the more difficult it becomes.
The cycle characteristics of the QC-LDPC code will be briefly described with reference to the above reference document [Myung2005]. First, it is assumed that the number of circulant permutation matrices forming 4-cycle on the mother matrix as shown in the following Equation 13 is four. Here, it is assumed that the size of the circulant permutation matrix is Z×Z.
According to the reference document [Myung2005], when the minimum positive integer r satisfying the following expression 14 is present, there exists a cycle having a length of 4r on the Tanner graph of the parity-check matrix corresponding to the above Equation 13.
r·(a1−a2+a3−a4)≡0(mod Z) Equation 14
Referring to
As described above, the QC-LDPC code has the cycle characteristic on the special Tanner graph according to the mother matrix (or base matrix) and the exponent matrix of the parity-check matrix and the block size. When the parity-check matrix for various block sizes is supported from one exponent matrix or LDPC sequence, as shown in the above Equations 13 and 14, even when the exponent matrix is fixed, the calculated value is changed by a modulo Z operation in the above Equation 14, and thus the cycle characteristics may be changed. Therefore, it is obvious that the more the kinds of block sizes are, the more likely the cycle characteristics will become worse.
Therefore, as in the examples of Equations (10) to (12), it is easy to design codes by adjusting the number of block sizes to be supported by appropriately setting the granularity in the set of the specific block sizes.
As described above, the lifting method proposed by the present disclosure proposes a method of dividing into a plurality of block size groups having granularity set appropriately. In the detailed embodiment, at least two groups of the plurality of groups have different particle sizes. In another embodiment, there may be at least two block size groups satisfying the feature that the maximum value of the increase rate for neighboring block sizes included in one block size group is greater than or equal to the minimum value of the increase rate for neighboring block sizes included in another block size group. In another embodiment, the features of the granularity and the increase rate of the block size may be simultaneously satisfied.
Referring to
Here, the components illustrated in
On the other hand, the transmitting apparatus 400 may transmit the necessary parameters (for example, input bit length, modulation and code rate (ModCod), parameters for zero padding (or shortening), code rate/codeword length of LDPC code, parameter for interleaving, parameter for repetition, puncturing or the like, modulation scheme and the like), perform encoding the parameters based on the determined parameters, and transmits the encoded parameters to the receiving apparatus 500.
Since the number of input bits is variable, when the number of input bits is greater than the preset value, the input bit may be segmented to have a length that is equal to or less than the preset value. Further, each of the segmented blocks may correspond to one LDPC coded block. However, when the number of input bits is equal to or smaller than the preset value, the input bit is not segmented. The input bits may correspond to one LDPC coded block.
Meanwhile, the transmitting apparatus 400 may previously store various parameters used for encoding, interleaving, and modulation. Here, the parameters used for the encoding may be information on the code rate of the LDPC code, the codeword length, and the parity-check matrix. Further, the parameters used for the interleaving may be the information on the interleaving rule and the parameters for the modulation may be the information on the modulation scheme. Further, the information on the puncturing may be a puncturing length. Further, the information on the repetition may be a repetition length. The information on the parity-check matrix may store the exponent value of the circulant matrix when the parity matrix proposed in the present disclosure is used.
In this case, each component configuring the transmitting apparatus 400 may perform the operations using the parameters.
Meanwhile, although not illustrated, in some cases, the transmitting apparatus 400 may further include a controller (not illustrated) for controlling the operation of the transmitting apparatus 400. Therefore, the operation of the transmitting apparatus as described above and the operation of the transmitting apparatus described in the present disclosure may be controlled by the controller, and the controller of the present disclosure may be defined as a circuit or application specific integration circuit or at least one processor.
Referring to
Here, the components illustrated in
The parity-check matrix in the present disclosure may be determined using a memory, or may be given in advance in a transmitting apparatus or a receiving apparatus, or may be generated directly in a transmitting apparatus or a receiving apparatus. In addition, the transmitting apparatus may store or generate a sequence, an exponent matrix or the like corresponding to the parity-check matrix, and apply the generated sequence or exponent matrix to the encoding. Similarly, even the receiving apparatus may store or generate a sequence, an exponent matrix or the like corresponding to the parity-check matrix, and apply the generated sequence or exponent matrix to the encoding.
Hereinafter, the detailed description of the operation of the receiver will be described with reference to
The demodulator 510 demodulates the signal received from the transmitting apparatus 400.
In detail, the demodulator 510 is a component corresponding to the modulator 450 of the transmitting apparatus 400 of
For this purpose, the receiving apparatus 500 may pre-store the information on the modulation scheme modulating the signal according to a mode in the transmitting apparatus 400. Therefore, the demodulator 510 may demodulate the signal received from the transmitting apparatus 400 according to the mode to generate the values corresponding to the LDPC codeword bits.
Meanwhile, the values corresponding to the bits transmitted from the transmitting apparatus 400 may be an LLR value.
In detail, the LLR value may be represented by a value obtained by applying Log to a ratio of the probability that the bit transmitted from the transmitting apparatus 400 is 0 and the probability that the bit transmitted from the transmitting apparatus 400 is 1. Alternatively, the LLR value may be the bit value itself and the LLR value may be a representative value determined depending on a section to which the probability that the bit transmitted from the transmitting apparatus 400 is 0 and the probability that the bit transmitted from the transmitting apparatus 400 is 1 belongs.
The demodulator 510 includes the process of performing multiplexing (not illustrated) on an LLR value. In detail, the demodulator 510 is a component corresponding to a bit demultiplexer (not illustrated) of the transmitting apparatus 400 and may perform the operation corresponding to the bit demultiplexer (not illustrated).
For this purpose, the receiving apparatus 500 may pre-store the information on the parameters used for the transmitting apparatus 400 to perform the demultiplexing and the block interleaving. Therefore, the multiplexer (not illustrated) may reversely perform the operations of the demultiplexing and the block interleaving performed by the bit demultiplexer (not illustrated) on the LLR value corresponding to the cell word to multiplex the LLR value corresponding to the cell word in a bit unit.
The rate de-matcher 520 may insert the LLR value into the LLR value output from the demodulator 510. In this case, the rate de-matcher 520 may insert previously promised LLR values between the LLR values output from the demodulator 510.
In detail, the rate de-matcher 520 is a component corresponding to the rate matcher 440 of the transmitting apparatus 400 and may perform operations corresponding to the interleaver 441 and the zero removing and puncturing/repetition/zero remover 442.
First of all, the rate de-matcher 520 performs deinterleaving to correspond to the interleaver 441 of the transmitter. The output values of the deinterleaver 524 may allow the LLR inserter 522 to insert the LLR values corresponding to the zero bits into the location where the zero bits in the LDPC codeword are padded. In this case, the LLR values corresponding to the padded zero bits, that is, the shortened zero bits may be ∞ or −∞. However, ∞ or −∞ are a theoretical value but may actually be a maximum value or a minimum value of the LLR value used in the receiving apparatus 500.
For this purpose, the receiving apparatus 500 may pre-store the information on the parameters used for the transmitting apparatus 400 to pad the zero bits. Therefore, the rate de-matcher 520 may determine the locations where the zero bits in the LDPC codeword are padded and insert the LLR values corresponding to the shortened zero bits into the corresponding locations.
Further, the LLR inserter 522 of the rate de-matcher 520 may insert the LLR values corresponding to the punctured bits into the locations of the punctured bits in the LDPC codeword. In this case, the LLR values corresponding to the punctured bits may be 0.
For this purpose, the receiving apparatus 500 may pre-store the information on the parameters used for the transmitting apparatus 400 to perform the puncturing. Therefore, the LLR inserter 522 may insert the LLR value corresponding thereto into the locations where the LDPC parity bits are punctured.
The LLR combiner 523 may combine, that is, sum the LLR values output from the LLR inserter 522 and the demultiplexer 510. In detail, the LLR combiner 523 is a component corresponding to the puncturing/repetition/zero remover 442 of the transmitting apparatus 400 and may perform the operation corresponding to the repeater 442. First of all, the LLR combiner 523 may combine the LLR values corresponding to the repeated bits with other LLR values. Here, the other LLR values may be bits which are a basis of the generation of the repeated bits by the transmitting apparatus 400, that is, the LLR values for the LDPC parity bits selected as the repeated object.
That is, as described above, the transmitting apparatus 400 selects bits from the LDPC parity bits and repeats the selected bits between the LDPC information bits and the LDPC parity bits and transmits the repeated bits to the receiving apparatus 500.
As a result, the LLR values for the LDPC parity bits may consist of the LLR values for the repeated LDPC parity bits and the LLR values for the non-repeated LDPC parity bits, that is, the LDPC parity bits generated by the encoding. Therefore, the LLR combiner 523 may combine the LLR values with the same LDPC parity bits.
For this purpose, the receiving apparatus 500 may pre-store the information on the parameters used for the transmitting apparatus 400 to perform the repetition. Therefore, the LLR combiner 523 may determine the LLR values for the repeated LDPC parity bits and combine the determined LLR values with the LLR values for the LDPC parity bits that are a basis of the repetition.
Further, the LLR combiner 523 may combine LLR values corresponding to retransmitted or incremental redundancy (IR) bits with other LLR values. Here, the other LLR values may be the LLR values for the bits selected to generate the LDPC codeword bits which are a basis of the generation of the retransmitted or IR bits in the transmitting apparatus 400.
That is, as described above, when NACK is generated for the HARQ, the transmitting apparatus 400 may transmit some or all of the codeword bits to the receiving apparatus 500.
Therefore, the LLR combiner 523 may combine the LLR values for the bits received through the retransmission or the IR with the LLR values for the LDPC codeword bits received through the previous frame.
For this purpose, the receiving apparatus 500 may pre-store the information on the parameters used for the transmitting apparatus 400 to generate the retransmitted or IR bits. As a result, the LLR combiner 523 may determine the LLR values for the number of retransmitted or IR bits and combine the determined LLR values with the LLR values for the LDPC parity bits that are a basis of the generation of the retransmitted bits.
The deinterleaver 524 may deinterleaving the LLR value output from the LLR combiner 523.
In detail, the deinterleaver 524 is a component corresponding to the interleaver 441 of the transmitting apparatus 400 and may perform the operation corresponding to the interleaver 441.
For this purpose, the receiving apparatus 500 may pre-store the information on the parameters used for the transmitting apparatus 400 to perform the interleaving. As a result, the deinterleaver 524 may reversely perform the interleaving operation performed by the interleaver 441 on the LLR values corresponding to the LDPC codeword bits to deinterleave the LLR values corresponding to the LDPC codeword bits.
The LDPC decoder 530 may perform the LDPC decoding based on the LLR value output from the rate de-matcher 520.
In detail, the LDPC decoder 530 is components corresponding to the LDPC encoder 430 of the transmitting apparatus 400 and may perform the operation corresponding to the LDPC encoder 430.
For this purpose, the receiving apparatus 500 may pre-store information on parameters used for the transmitting apparatus 400 to perform the LDPC encoding according to the mode. As a result, the LDPC decoder 530 may perform the LDPC decoding based on the LLR value output from the rate de-matcher 520 according to the mode.
For example, the LDPC decoder 530 may perform the LDPC decoding based on the LLR valued output from the rate de-matcher 520 based on the iterative decoding scheme based on a sum-product algorithm and output the bits error-corrected depending on the LDPC decoding.
The zero remover 540 may remove the zero bits from bits output from the LDPC decoder 530.
In detail, the zero remover 540 is a component corresponding to the zero padder 420 of the transmitting apparatus 400 and may perform the operation corresponding to the zero padder 420.
For this purpose, the receiving apparatus 500 may pre-store the information on the parameters used for the transmitting apparatus 400 to pad the zero bits. As a result, the zero remover 540 may remove the zero bits padded by the zero padder 420 from the bits output from the LDPC decoder 530.
The de-segmentator 550 is a component corresponding to the segmentator 410 of the transmitting apparatus 400 and may perform the operation corresponding to the segmentator 410.
For this purpose, the receiving apparatus 500 may pre-store the information on the parameters used for the transmitting apparatus 400 to perform the segmentation. As a result, the de-segmentator 550 may combine the bits output from the zero remover 540, that is, the segments for the variable length input bits to recover the bits before the segmentation.
Meanwhile, although not illustrated, in some cases, the transmitting apparatus 400 may further include a controller (not illustrated) for controlling the operation of the transmitting apparatus 400. Therefore, the operation of the transmitting apparatus as described above and the operation of the receiving apparatus described in the present disclosure may be controlled by the controller, and the controller of the present disclosure may be defined as a circuit or application specific integration circuit or at least one processor.
Meanwhile, the LDPC code may be decoded using an iterative decoding algorithm based on a sum-product algorithm on the bipartite graph illustrated in
Hereinafter, the message passing operation generally used at the time of the LDPC decoding will be described with reference to
In this case, a message update rule based on the sum-product algorithm may be expressed by the following Equation 15.
In the above Equation 15, Sign (En, m) represents a sign of En,m and |En,m| represents a magnitude of message En,m. Meanwhile, a function Φ(x) may be expressed by the following Equation 16.
Meanwhile,
In the above Equation 17, Ex represents an initial message value of the variable node x.
Further, upon determining a bit value of the node x, it may be expressed by the following Equation 18.
In this case, the encoding bit corresponding to the node x may be decided based on a Px value.
The method illustrated in
Klpdc bits may form Kldpc LDPC information word bits for the LDPC encoder 700. The LDPC encoder 700 may systematically perform the LDPC encoding on the Kldpc LDPC information word bits to generate the LDPC codeword Λ=(c0, c1, . . . , cNldpc-1)=(i0, i1, . . . , iKldpc-1, p0, p1, . . . , pNldpc-Kldpc-1) consisting of the Nldpc bits.
As described in the above Equation 1, the generation process includes the process of determining a codeword so that the product of the LDPC codeword by the parity-check matrix is a zero vector.
Referring to
Meanwhile, the encoding apparatus 700 may further include a memory (not illustrated) for pre-storing the information on the code rate of the LDPC code, the codeword length, and the parity-check matrix and the LDPC encoder 710 may use the information to perform the LDPC encoding. The information on the parity-check matrix may store the information on the exponent value of the circulant matrix when the parity matrix proposed in the present disclosure is used.
Referring to
The LDPC decoder 810 performs the LDPC decoding on the LDPC codeword based on the parity-check matrix or the exponent matrix or sequence corresponding thereto.
For example, the LDPC decoder 810 may pass the LLR value corresponding to the LDPC codeword bits using the iterative decoding algorithm to perform the LDPC decoding, thereby generating the information word bits.
Here, the LLR value is channel values corresponding to the LDPC codeword bits and may be represented by various methods.
For example, the LLR value may be represented by a value obtained by applying Log to a ratio of the probability that the bit transmitted from the transmitting side through the channel is 0 and the probability that the bit transmitted from the transmitting side through the channel is 1. Further, the LLR value may be the bit value itself determined depending on the soft decision and the LLR value may be a representative value determined depending on a section to which the probability that the bit transmitted from the transmitting side is 0 or 1 belongs.
In this case, as illustrated in
In this case, the LDPC decoder 810 may use the parity-check matrix differently defined depending on the code rate (that is, code rate of the LDPC code) to perform the LDPC decoding.
Meanwhile, as described above, the LDPC decoder 810 may use the iterative decoding algorithm to perform the LDPC decoding. In this case, the LDPC decoder 810 may configured to have the structure as illustrated in
Referring to
The input processor 901 stores the input value. In detail, the input processor 901 may store the LLR value of the signal received through a radio channel.
The controller 906 determines the block size (that is, codeword length) of the signal received through the radio channel, the number of values input to the variable node operator 904 and address values in the memory 902 based on the parity-check matrix corresponding to the code rate, the number of values input to the check node operator 908 and the address values in the memory 902, or the like.
The memory 902 stores the input data and the output data of the variable node operator 904 and the check node operator 908.
The variable node operator 904 receives data from the memory 902 depending on the information on the addresses of input data and the information on the number of input data that are received from the controller 906 to perform the variable node operation. Next, the variable node operator 904 stores the results of the variable node operation based on the information on the addresses of output data and the information on the number of output data, which are received from the controller 1106, in the memory 902 Further, the variable node operator 904 inputs the results of the variable node operation based on the data received from the input processor 901 and the memory 902 to the output processor 910. Here, the variable node operation is already described with reference to
The check node operator 908 receives the data from the memory 902 based on the information on the addresses of the input data and the information on the number of input data that are received from the controller 906, thereby performing the check node operation. Next, the check node operator 908 stores the results of the variable node operation based on the information on the addresses of output data and the information on the number of output data, which are received from the controller 906, in the memory 902 Here, the check node operation is already described with reference to
The output processor 910 performs the soft decision on whether the information word bits of the transmitting side are 0 or 1 based on the data received from the variable node operator 904 and then outputs the results of the soft decision, such that the output value of the output processor 910 is finally the decoded value. In this case, in
Meanwhile, the decoding apparatus 900 may further include a memory (not illustrated) for pre-storing the information on the code rate of the LDPC code, the codeword length, and the parity-check matrix and the LDPC decoder 910 may use the information to perform the LDPC encoding. However, this is only an example, and the corresponding information may also be provided from the transmitting apparatus.
Referring to
In addition, the <Null> bits may be added to match the information lengths of the LDPC code.
In the foregoing, a method of applying various block sizes based on the QC-LDPC code has been described in the communication and broadcasting system supporting LDPC codes of various lengths.
In order to support various block sizes, we proposed a method of dividing block sizes, in which granularity is set appropriately, into a plurality of block size groups considering the performance improvement, the length flexibility or the like. By setting the appropriate granularity according to the block size group, it is advantageous to design the parity-check matrix of the LDPC code or the exponent matrix or the sequence corresponding thereto, but also achieve the appropriate performance improvement and the length flexibility.
Next, a method for further improving the coding performance in the proposed method is proposed.
If the sequence is suitably transformed and used for all block sizes from one LDPC exponent matrix or sequence or the like as the lifting method described in the above Equations 7 to 9, since only one sequence is required to be implemented upon the system implementation, many advantages can be obtained. However, as described in the above Equations 13 and 14, it is very difficult to design the LDPC code having good performance for all block sizes as the number of kinds of block sizes to be supported increases.
Therefore, the method which can be easily applied to solve this problem is to use the plurality of LDPC sequences. For example, describing the examples of the above Equation 11 and 12, the LDPC encoding and decoding may be performed using different LDPC parity-check matrices (or exponent matrices or sequences) for the block size groups Z1, Z2, Z3, Z4, and Z5. In addition, the block size groups Z1 and Z2 may use one LDPC parity-check matrix (or exponent matrix or sequence), Z3 and Z4 may use another LDPC parity-check matrix (or exponent matrix or sequence), and Z5 may use the LDPC encoding and decoding using another LDPC parity-check matrix (or exponent matrix or sequence).
In the case of performing the LDPC encoding and decoding from a plurality of LDPC exponent matrices or sequences as described above, since the number of block sizes to be supported is greatly reduced compared with the case where all block sizes are supported from one LDPC exponent matrix or sequence, it is easy to design the exponent matrix or sequence of the LDPC code having good coding performance.
The exponent matrix or sequence of LDPC codes may be appropriately designed for each block size group to perform the LDPC encoding and decoding on all block sizes included in the block size group from one sequence. In this way, when designing the exponent matrices or sequences of the LDPC codes for each block size group, since the number of block sizes corresponding to one exponent matrix is limited to elements in the group, it is easier to design codes, thereby deigning the LDPC code having better coding performance.
As the number of parity-check matrices or exponent matrices or sequence of LDPC code increases, the coding performance may be improved, but the implementation complexity may be increased. Therefore, the LDPC code should be designed by appropriately determining the number of block size groups and the number of parity-check matrices of the LDPC code or the number of exponent matrices or LDPC sequences corresponding thereto according to the conditions required in the system design.
In the present disclosure, a method of lowering implementation complexity when the number of exponent matrices or sequences of an LDPC code is two or more is proposed as follows.
The present proposes a method for designing a plurality of exponent matrices or sequences on a given one base matrix. That is, the number of base matrices is one, and the exponent matrix, the sequence or the like of the LDPC code is obtained on the base matrix, and the lifting is applied according to the block size included in each block size group from the exponent matrix or the sequence, thereby performing the LDPC encoding and decoding of the variable length.
In other words, base matrices of the parity-check matrix corresponding to the exponent matrices or the sequences of the plurality of different LDPC codes are the same.
In this way, the elements or numbers configuring the exponent matrix or the LDPC sequence of the LDPC code may have different values, but the locations of the corresponding elements or numbers exactly coincide with each other. As described above, the exponent matrices or the LDPC sequences each refer to the exponent of the circulant permutation matrix, that is, a kind of circulant permutation values of bits. Therefore, by setting the locations of the elements or the numbers of the exponent matrices or the LDPC sequences to be the same, it is easy to grasp the locations of the bits corresponding to the circulant permutation matrix.
Another embodiment of the present disclosure is a method for lowering implementation complexity in a system for performing LDPC encoding and decoding so that exponent matrices or sequences correspond to each of the block size groups one by one. When the number of block size groups and the number of exponent matrices or sequences of the LDPC code are the same, all of the plurality of exponent matrices or sequences correspond to the same base matrix. That is, the number of base matrices is one, and the exponent matrix, the sequence or the like of the LDPC code is obtained on the base matrix, and the lifting is applied according to the block size included in each block size group from the exponent matrix or the sequence, thereby performing the LDPC encoding and decoding of the variable length.
The lifting method for each block size group may be the same or different. For example, when an exponent matrix given to a p-th group is Ep=(ei,j(p)) and an exponent matrix corresponding to a Z value included in the group is Ep(Z)=(ei,j(Z)), it may be expressed by the following Equation 19.
Fp (x, Z) may be set differently for each block size group as shown in the above Equation 19, and may be set to be the same for some or all thereof. As the transformation function, a function in which an x value is transformed by applying modulo or flooring according to Z like fp (x, Z)=x (mod Z) or fp (X, Z)=└xZ/Z′┘ may be used and merely, fp (x, Z)=x may be used regardless of the Z value. The latter case is the case in which the sequence defined for each group is used as it is without special transformation process. In addition, there may be various methods in which in fp (x, Z)=└xZ/Z′┘, Z′ may be selected as an appropriate value according to the requirement of the system, determined as a maximum value among values that the Z may have, or determined as a maximum value among values that the Z may have within a p-th block size group, and the like.
As a result, in the embodiment of the present disclosure, when the plurality of block size groups are defined and the LDPC exponent matrix or the sequence is determined for each block size group, determining the group corresponding to the determined block size is determined, determining the LDPC exponent matrix or the sequence corresponding to the group, and performing the LDPC encoding and decoding, the structure of the base matrix corresponding to the LDPC exponent matrix or the sequence is the same. Here, the LDPC exponent matrices or the sequences may be different for each block size group, and some thereof may be the same or different but at least two or more thereof may be different.
According to another embodiment of the present disclosure, when a plurality of block size groups are defined and the LDPC exponent matrix or the sequence is defined for each block size group, in determining the group corresponding to the determined block size, determining the LDPC exponent matrix or the sequence corresponding to the group, and then performing the LDPC encoding and decoding, the structure of the base matrix corresponding to the LDPC exponent matrix or the sequence is the same and at least one of the LDPC exponent matrices or the sequence3s corresponding to the block size groups is transformed according to the Z value determined before the LDPC encoding is performed. Here, the LDPC exponent matrices or the sequences may be different for each block size group, and some thereof may be the same or different but at least two or more thereof may be different.
In another embodiment of the present disclosure, the case in which the block size Z=1, 2, 3, . . . , 14, 15, 16, 18, 20, . . . , 28, 30, 32, 36, 40, . . . , 52, 56, 60, 64, 72, 80, . . . , 112, 120, 128, 144, 160, . . . , 240, and 256 are supported will be described.
First of all, this is divided into six groups as shown in the following Equation 20.
Z1={1,2,3, . . . ,7},Z2={8,9,10, . . . ,15},Z3={16,18,20, . . . ,30},Z4={32,36,40, . . . ,60},Z5={64,72,80, . . . ,120},Z6={128,144,160, . . . ,240,256} Equation 20
Representing the above Equation 20 by the method similar to the above Equation 10 is as shown in the following Equation 21.
Zi={Z|Z=Xi+k·Di,k=0,1, . . . ,Yi},i=1,2, . . . ,A
A=6
X1=1,X2=8,X3=16,X4=32,X5=64,X6=128,
Y1=7,Y2=Y3=Y4=Y5=8,Y6=9
D1=D2=1,D3=2,D4=4,D5=8,D6=16 Equation 21
Referring to the block size group shown in the above Equations 20 and 21, since the maximum value of the increase rate of neighboring block sizes among the block sizes included in Z5 is 72/64=1.125 and the minimum value of the increase rate for neighboring block sizes among the block size included in Z4 is 60/56 to 1.071, it can be seen that the former value is greater than the latter value. Likewise, since the maximum value of the increase rate of neighboring block sizes among the block sizes included in Z6 is 144/128=1.125, and the minimum value of the increase rate of neighboring block sizes among the block sizes included in Z5 is 120/112 to 1.071, it can be seen that the former value is greater than the latter value.
As described above, if the granularity is set well so that the maximum value of the increase rate of neighboring block sizes included in one block size group among at least two block size groups is greater than or equal to the minimum value of the increase ratio of neighboring block sizes included in another block size group, the appropriate encoding gain can be obtained. When the block size groups are set so that the maximum value of the increase rate of neighboring block sizes included in a specific block size group is always smaller than the minimum value of the increase rate of neighboring block sizes included in another block size group, the flexibility of the information word or codeword length may be increased, but the efficiency of the system is lowered because the coding gain is smaller than the increase in the codeword length.
It is assumed that the exponent matrix given to the p-th group Zp is defined as Ep=(ei,j(p)) as in the above Equation 19, and the exponent matrix corresponding to the Z value included in the group is defined as Ep(Z)=(ei,j(Z)). At this time, the LDPC exponent matrix or the sequence transformed by applying the lifting function as in the following Equation 22 may be used.
i)Z∈Z1,
f1(ei,j(1),Z)=ei,j(1)(mod 2└ log
ii)p=2,3,4,5,6,Z∈Zp,
fp(ei,j(p),Z)=ei,j(p) Equation 22
In some cases, the appropriate transformation may be applied to the LDPC exponent matrix and the sequence according to the block size.
The transformation of the sequence as shown in i) of the above Equation 22 may also be generated as a new group by separately storing each transformed sequence according to the block size. For example, in the above example, when Z=1 and Z=2 and 3, Z=4, 5, 6, and 7 are defined as separate block size groups, and the exponent matrix transformed in the case of Z=1, the exponent matrix transformed in the case of Z=2 and 3, and the exponent matrix transformed in the case of Z=4, 5, 6, and 7 may be separately stored and used. In this case, there is a disadvantage in that the number of block size groups and the number of exponent matrices to be stored may be increased matrices increases. In this case, to reduce the complexity, the method and apparatus for LDPC encoding and decoding based on the LDPC exponent matrix and the sequence can be implemented more simply by applying the appropriate lifting function according to the block size group as shown in the above Equation 22.
The techniques such as the shortening or the puncturing may be applied to the parity-check matrix that can be obtained from the exponent matrix to support more various code rates. A flowchart of an embodiment of an exponent matrix-based LDPC encoding and decoding process is shown in
First of all, the information word length is determined as in operation 1110 of
Next, the LDPC exponent matrix or the sequence matched to the determined CBS is determined as in operation 1120.
The LDPC encoding is performed in operation 1130 based on the exponent matrix or the sequence. As the detailed example, it is assumed that the CBS is determined to be 1280 in operation 1110. If the information word corresponds to 32 columns in the exponent matrix, Z=1280/32=40, so that the block size Z=40 is included in Z4. Therefore, in operation 1120, the exponent matrix or the sequence corresponding to the block size included in Z4={32, 36, 40, . . . , 60} of the above Equation 20 is determined, and the LDPC encoding may be performed using the exponent matrix or the sequence in operation 1130.
The LDPC decoding process may be similarly as illustrated in
Referring to
A flowchart of another embodiment of the LDPC encoding and decoding process is illustrated in
First of all, the size of the transport block size TBS to be transmitted is determined as in operation 1310 of
As the detailed example, it is assumed that the TBS is determined to be 9216 in operation 1310, and the given max CBS=8192 in the system. Apparently, since it is determined in operation 1320 that the TBS is greater than the max CBS, in operation 1330, two information word blocks (or code blocks) having CBS=4608 are obtained by appropriately applying the segmentation. If the information word corresponds to 32 columns in the exponent matrix, Z=4608/32=144, so that the block size Z=144 is included in Z6. Therefore, in operation 1340, the exponent matrix or the sequence corresponding to the block size included in Z6={128, 144, 160, . . . , 240, 256} of the above Equation 20 is determined, and the LDPC encoding may be performed using the determined exponent matrix or sequence in operation 1350.
The LDPC decoding process may be similarly as illustrated in
A flowchart of an embodiment of an exponent matrix-based LDPC encoding and decoding process is shown in
First of all, the transport block size TBS to be transmitted is determined as in operation 1510 of
The LDPC decoding process may be similarly as illustrated in
For reference, the operation 1650 may include the process of transforming the determined LDPC exponent matrix or sequence based on the determined block size in some cases.
The embodiment describes that the process of determining the exponent matrix or the sequence of the LDPC code in operations 1120, 1220, 1340, 1440, 1550, and 1650 of
As another embodiment of the present disclosure, the block size group is divided into five groups as shown in the following Equation 23.
Z1={1,2,3, . . . ,15},Z2={16,18,20, . . . ,30},Z3={32,36,40, . . . ,60},Z4={64,72,80, . . . ,120},Z5={128,144,160, . . . ,240,256} Equation 23
Representing the above Equation 23 by the method similar to the above Equation 10 is as shown in the following Equation 24.
Zi={Z|Z=Xi+k·Di,k=0,1, . . . ,Yi},i=1,2, . . . ,A
A=5
X1=1,X2=16,X3=32,X4=64,X5=128
Y1=15,Y2=Y3=Y4=8,Y5=9
D1=1,D2=2,D3=4,D4=8,D5=16 Equation 24
Referring to the block size group shown in the above Equations 23 and 24, since the maximum value of the increase rate of neighboring block sizes among the block sizes included in Z4 is 72/64=1.125 and the minimum value of the increase rate for neighboring block sizes among the block size included in Z3 is 60/56 to 1.071, it can be seen that the former value is greater than the latter value. Likewise, since the maximum value of the increase rate of neighboring block sizes among the block sizes included in Z5 is 144/128=1.125, and the minimum value of the increase rate of neighboring block sizes among the block sizes included in Z4 is 120/112 to 1.071, it can be seen that the former value is greater than the latter value.
As another embodiment of the present disclosure, the block size group is divided into seven groups as shown in the following Equation 25.
Z1={2,3},Z2={4,5,6,7},Z3={8,10,12,14},Z4={16,20,24,28},Z5={32,40,48,56},Z6={64,80,96,112},Z7={128,160,192,224,256} Equation 25
As another embodiment of the present disclosure, the LDPC code exponent matrix for dividing the block size group by the following Equation 25 and applying the same lifting method is shown in
It can be seen from
In general, when the initial support code rate, the information word length or the like before applying the single check code extension in which a degree is 1 is different, the base matrix should be different from each other. In the case of
For example, when the initial supporting code rate is a form of (38−6)/(38−a), the LDPC encoding and decoding are applied using the exponent matrix having the base matrix of
For reference,
In general, when designing the LDPC sequence or the exponent matrix well, the LDPC encoding having various lengths may be applied by one LDPC sequence or exponent matrix and one lifting function without differently applying the lifting function or the LDPC sequence or the exponent matrix according to the block size group having different granularity.
As another embodiment of the present disclosure, the block size group is divided into two groups as shown in the following Equation 26.
Z1={2,4,5,8,9,10,11,16,18,20,22,32,36,40,44,64,72,80,88,128,144,160,176,256,288,320,352}
Z2={3,6,7,12,13,14,15,24,26,28,30,48,52,56,60,96,104,112,120,192,208,224,240,384} Equation 26
The granularity for the block size included in the block size groups Z1 and Z2 shown in the above Equation 26 are not only different and the average granularities thereof each have different values as 13.46 and 16.67. Among the block size included in Z1, the maximum value of the increase rate of respect to neighboring block sizes is 4/2=2, and the minimum value thereof is 11/10=22/20=44/40=88/80=176/160=352/320=1.1. Similarly, it can be seen that among the block size included in Z2, the maximum value of the increase rate of neighboring block sizes is 6/3=2, and the minimum value thereof is 15/14=30/28=60/56=120/112=240/224 to 1.07143. That is, the maximum value of the block size increase rate of one group of the two block size groups in the above Equation 26 is always greater than the minimum value of the other groups.
At this time, the LDPC exponent matrix or the sequence is transformed based on the lifting function as in the following Equation 27, such that the LDPC exponent matrix or the sequence corresponding to each Z value may be determined.
Z∈Z1,2k≤Z<2k+1,eij(Z)=eij(1)(mod 2k),
Z∈Z2,3·2k−1≤Z<2k+1,eij(Z)=eij(2)(mod 3×2k−1) Equation 27
The lifting shown in the above Equation 27 may be briefly expressed by the following Equation 28.
This can be represented by various methods in which the same effect can be obtained in addition to the above Equations 27 and 28.
A process of performing LDPC encoding and decoding using the block size group and the lifting method shown in the above Equations 26 to 28 will be briefly described below.
If the block size Z value is determined in the transmitter, the LDPC exponent matrix or the sequence to be used for the encoding is determined according to the block size Z value (or the corresponding TBS or CBS size). In the next operation, the LDPC encoding is performed based on the determined block size, exponent matrix or sequence. For reference, before the LDPC encoding process, the process of transforming the determined LDPC exponent matrix or sequence based on the determined block size may be included. Also, in the process of transforming the LDPC exponent matrix or the sequence, different transformation methods may be applied according to the block size group including the block size as shown in the above Equation 27 or 28. When different transformation methods are applied according to the block size group in the LDPC encoding process, a process of determining a block size group including a predetermined block size in the encoding process may be included.
The LDPC decoding process can be similarly explained. The block size Z value to be applied to the LDPC decoding is determined, and then the LDPC exponent matrix or the sequence to be used for the decoding is determined according to the block size Z value (or the corresponding TBS or CBS size). In the next operation, the LDPC decoding is performed based on the determined block size, exponent matrix or sequence. For reference, before the LDPC decoding process, the process of transforming the determined LDPC exponent matrix or sequence based on the determined block size may be included. Also, in the process of transforming the LDPC exponent matrix or the sequence, different transformation methods may be applied according to the block size group including the block size as shown in the above Equation 27 or 28. When different transformation methods are applied according to the block size group in the LDPC decoding process, a process of determining a block size group including a predetermined block size in the encoding process may be included.
As another embodiment of the present disclosure, the block size group is divided into eight groups as shown in the following Equation 29.
Z1={2,4,8,16,32,64,128,256}
Z2={3,6,12,24,48,96,192,384}
Z3={5,10,20,40,80,160,320}
Z4={7,14,28,56,112,224}
Z5={9,18,36,72,144,288}
Z6={11,22,44,88,176,352}
Z7={13,26,52,104,208}
Z8={15,30,60,120,240} Equation 29
The block size groups in the above Equation 29 are not only different granularities, but also have the feature that all the rates of neighboring block sizes have the same integer. In other words, each block size is a divisor or multiple relation to each other.
When each of the exponent matrices (or LDPC sequence) corresponding to the p (p=1, 2, . . . , 8)-th group is Ep=(ei,j(p)) and the exponent matrix (or LDPC sequence) corresponding to the Z value included in the p-th group is Ep(Z)=(ei,j(Z)), the method for transforming the sequence as shown in the above Equation 19 is applied using fp (x, Z)=x (mod Z). That is, for example, when the block size Z is determined as Z=28, each element ei,j(28) of an exponent matrix (or LDPC sequence) E4(28)=(ei,j(28)) for Z=28 for an exponent matrix (or LDPC sequence) E4=(e(i,j)(4)) corresponding to a fourth block size group including Z=28 can be obtained by the following Equation 30.
The transformation as in the above Equation 30 may be briefly expressed by the following Equation 31.
Z∈Zp,
Ep(Z)=Ep(mod Z) Equation 31
The exponent matrix (LDPC sequence) of the LDPC code designed in consideration of the above Equations 29 to 31 is shown in
For reference, in the above description, it is described that the lifting or the method for transforming the exponent matrix in Equation 19 is applied to the entire exponent matrix corresponding to the parity-check matrix, but the exponent matrix may be partially applied. For example, a partial matrix corresponding to a parity bit of the parity-check matrix usually has a special structure for efficient encoding. In this case, the encoding method or the complexity may change due to lifting. Therefore, in order to maintain the same encoding method or the complexity, a lifting method is not applied to a part of the exponent matrix corresponding to a parity in the parity-check matrix or may apply different lifting from the lifting method applied to the exponent matrix for the partial matrix corresponding to the information word bit. In other words, the lifting method applied to the sequence corresponding to the information word bits in the exponent matrix and the lifting method applied to the sequence corresponding to the parity bits can be set differently. In some cases, the lifting is not applied to a part or all of the sequence corresponding to the parity bit, such that the fixed value can be used without changing the sequence.
The embodiment of the exponent matrix or the LDPC sequence corresponding to the parity-check matrix of the LDPC code designed for the block size groups described in the embodiments based on the above Equations 29 to 31 is illustrated sequentially in
For reference,
Another feature of the exponent matrix shown in
Each of the exponent matrices shown in
In addition, the exponent matrix illustrated in
Similarly, the exponent matrices illustrated in
Generally, the LDPC code can adjust the code rate by applying parity puncturing according to the code rate. When the LDPC code based on the exponent matrix illustrated in
For example, if the information bits corresponding to the first two columns among the exponent matrices corresponding to
As the detailed example, when LDPC encoding and decoding are applied based on the exponent matrices corresponding to the
Pattern 1:
Pattern 2:
Pattern 3:
Pattern 4:
The patterns 1 to 4 mean the transmission in order of codeword bits corresponding to columns corresponding to the pattern order. In other words, the puncturing is applied to codeword bits in reverse order of the pattern.
Describing the case of pattern 5 by way of example, when the puncturing is applied to a codeword for the rate matching, first of all, a puncture is applied by predetermined length in order, starting from a codeword bit having a Z size corresponding to the first column. (In the patterns 1 to 4, the order of 0 and 1 can be changed).
Such a rate matching method may be applied using the above pattern, or the sequential puncturing may be applied after performing an appropriate interleaving method.
In addition, the pattern or interleaving scheme may be applied differently according to the modulation order to improve the performance. That is, in the case of the higher order modulation scheme, performance may be improved by applying a pattern or interleaving scheme different from that of the QPSK scheme.
In addition, the pattern or interleaving scheme may be applied differently according to the modulation order to improve the performance. That is, in the case of the higher order modulation scheme, performance may be improved by applying a pattern or interleaving scheme different from that of the QPSK scheme.
In addition, the pattern or interleaving scheme may be applied differently according to the code rate (or actual transmission code rate) to improve the performance. That is, when the code rate is lower than a specific code rate R_th, a rate matching method corresponding to the pattern 1 to the pattern 4 is applied, and when the code rate is larger than R_th, a pattern different from the above patterns can be used (if the code rate is equal to R_th, the pattern can be selected according to the predefined method). For example, when the code rate is more than a certain degree and thus a large amount of parity is required, the pattern matching method can be changed by using the following pattern 5 or 6. (Any sequence may be applied after 23 of pattern 5 and after 26 of pattern 6.
Pattern 5:
Pattern 6:
For reference, the transmission in units of Z codeword bits corresponding to one column block means that while the codeword bits for one column block are sequentially transmitted, the codeword bits corresponding to the other column blocks are not transmitted.
Such a rate matching method may be applied using the above pattern, or a method for performing puncturing from the predetermined location in the system may also be applied after performing an appropriate interleaving method. For example, a redundancy version (RV) scheme may be used in the LTE system. An example of the RV technique will be briefly described as follows.
First, the patterns 5 and 6 are each changed to the following patterns 7 and 8.
Pattern 7:
Pattern 8:
Next, if the value of RV-0 indicating the transmission start position for the next codeword is set to be 2, it can be set to perform the puncturing from the codeword bits for 0th and 1st column blocks according to the code rate. Here, it can be applied to application technologies of the LDPC encoding and decoding such as HARQ by not only determining various initial transmission sequences according to the RV-0 values but also appropriately setting well RV-i values. For example, when additional parity bits are transmitted after all the codeword bits for the second to 67th column blocks are transmitted, it is also possible to repeatedly transmit additional codeword bits, starting from the 0th and the 1st, and to transmit additional codeword bits by various methods depending on the RV-i values.
In addition, the pattern or interleaving scheme may be applied differently according to the modulation order to improve the performance. That is, in the case of the higher order modulation scheme, performance may be improved by applying a pattern or interleaving scheme different from that of the QPSK scheme.
In addition, the pattern or interleaving scheme may be applied differently according to the code rate (or initial transmission code rate) to improve the performance. That is, when the code rate is lower than a specific code rate R_th, a rate matching method corresponding to the pattern 1 is applied, and when the code rate is larger than R_th, the pattern 2 different from the pattern 1 can be used (if the code rate is equal to R_th, the pattern can be selected according to the predefined method).
The exponent matrices shown in
The above Equation 29 represents a plurality of block size groups having different granularity. The above Equation 29 is only an example, and all the block size Z values included in the block size group of the above Equation 29 may be used, the block size value included in an appropriate subset as shown in the following Equation 32 may be used, and a block size group (set) of the above Equation 29 or 32 to/from which appropriate values are added or excluded may be used.
Z1′={8,16,32,64,128,256}
Z2′={12,24,48,96,192,384}
Z3′={10,20,40,80,160,320}
Z4′={14,28,56,112,224}
Z5′={9,18,36,72,144,288}
Z6′={11,22,44,88,176,352}
Z7′={13,26,52,104,208}
Z8′={15,30,60,120,240} Equation 32
The base matrix and the exponent matrix shown in
Another feature of the base matrix and the exponent matrix shown in
The parts B, C and D of
The base matrix and exponent matrix shown in
The base matrix and the exponent matrix shown in
The following Equation 33 represents a location of element 1 in each row in the base matrix of
0 1 2 3 5 6 9 10 11 12 13 15 16 18 19 20 21 22 23
0 2 3 4 5 7 8 9 11 12 14 15 16 17 19 21 22 23 24
0 1 2 4 5 6 7 8 9 10 13 14 15 17 18 19 20 24 25
0 1 3 4 6 7 8 10 11 12 13 14 16 17 18 20 21 22 25
0 1 26
0 1 3 12 16 21 22 27
0 6 10 11 13 17 18 20 28
0 1 4 7 8 14 29
0 1 3 12 16 19 21 22 24 30
0 1 10 11 13 17 18 20 31
1 2 4 7 8 14 32
0 1 12 16 21 22 23 33
0 1 10 11 13 18 34
0 3 7 20 23 35
0 12 15 16 17 21 36
0 1 10 13 18 25 37
1 3 11 20 22 38
0 14 16 17 21 39
1 12 13 18 19 40
0 1 7 8 10 41
0 3 9 11 22 42
1 5 16 20 21 43
0 12 13 17 44
1 2 10 18 45
0 3 4 11 22 46
1 6 7 14 47
0 2 4 15 48
1 6 8 49
0 4 19 21 50
1 14 18 25 51
0 10 13 24 52
1 7 22 25 53
0 12 14 24 54
1 2 11 21 55
0 7 15 17 56
1 6 12 22 57
0 14 15 18 58
1 13 23 59
0 9 10 12 60
1 3 7 19 61
0 8 17 62
1 3 9 18 63
0 4 24 64
1 16 18 25 65
0 7 9 22 66
1 6 10 67 Equation 33
The following Equation 34 represents each element value in each row in the base matrix of
250 69 226 159 100 10 59 229 110 1919 195 23 190 35 239 31 1 0
2 239 117 124 71 222 104 173 220 102 109 132 142 155 255 28 0 0 0
106 111 185 63 117 93 229 177 95 39 142 225 225 245 205 251 117 0 0
121 89 84 20 150 131 243 136 86 246 219 211 240 76 244 144 12 1 0
157 102 0
205 236 194 231 28 123 115 0
183 22 286 7 244 11 157 211 0
220 44 159 31 167 104 0
112 4 7 211 102 164 109 241 90 0
103 182 109 21 142 14 61 216 0
98 149 167 160 49 58 0
77 41 83 182 78 252 22 0
160 42 21 32 234 7 0
177 248 151 185 62 0
206 55 206 127 16 229 0
40 96 65 63 75 179 0
64 49 49 51 154 0
7 164 59 1 144 0
42 233 8 155 147 0
60 73 72 127 224 0
151 186 217 47 160 0
249 121 109 131 171 0
64 142 188 158 0
156 147 170 152 0
112 86 236 116 222 0
23 136 116 182 0
195 243 215 61 0
25 104 194 0
128 165 181 63 0
86 236 84 6 0
216 73 120 9 0
95 177 172 61 0
221 112 199 121 0
2 187 41 211 0
127 167 164 159 0
161 197 207 103 0
37 105 51 120 0
198 220 122 0
169 204 221 239 0
136 251 79 138 0
189 61 190
81 185 28 97 0
124 42 247 0
70 134 160 31 0
192 27 199 207 0
156 50 226 0 Equation 34
The following Equation 35 represents each element value in each row in the base matrix of
205 72 103 204 141 157 170 26 166 48 181 10 166 64 177 205 36 1 0
94 40 217 158 41 139 87 119 60 50 172 170 173 160 89 222 0 0 0
182 114 77 181 46 204 180 109 73 158 208 1 110 59 185 157 13 0 0
47 219 199 148 66 212 183 1 59 110 199 142 20 184 83 147 23 1 0
16 206 0
43 183 50 84 113 152 184 0
39 210 214 197 185 183 192 26 0
8 3 80 215 111 146 0
153 172 222 92 46 96 36 25 152 0
204 153 143 30 119 205 24 105 0
39 147 44 145 71 29 0
40 133 40 200 0 63 81 0
131 29 57 44 162 181 0
133 7 101 184 121 0
155 40 193 63 640
10 103 163 105 186 53 0
35 146 191 171 212 0
185 86 208 126 215 0
104 201 41 124 178 0
206 41 156 97 82 0
151 64 61 158 164 0
223 198 42 182 16 0
119 97 193 42 0
209 24 70 67 0
176 29 169 112 142 0
45 185 84 3 0
52 160 170 133 0
194 33 118 0
142 13 64 143 0
122 147 164 66 0
60 133 55 89 0
122 131 174 167 0
22 129 183 78 0
188 206 206 54 0
129 188 184 46 0
111 150 20 24 0
181 179 27 128 0
57 130 218 0
80 12 104 96 0
185 159 206 93 0
205 118 200 0
27 193 119 150 0
96 192 65 0
138 1 108 58 0
184 119 213 21 0
187 37 94 0 Equation 35
The following Equation 36 represents each element value in each row in the base matrix of
134 50 169 114 189 0 196 45 79 101 109 101 163 54 166 132 173 1 0
27 190 60 33 155 40 25 100 60 50 100 141 114 199 27 37 0 0 0
128 131 174 149 127 99 153 45 185 153 85 93 144 155 24 179 86 0 0
202 48 97 115 176 63 151 107 146 38 34 53 9 19 66 61 96 1 0
160 17 0
205 123 71 565 155 106 0
194 7 128 202 14 59 205 162 0
170 207 123 67 166 168 0
200 25 165 188 24 77 99 28 32 0
174 145 76 61 145 29 165 43 0
92 199 150 151 163 93 0
95 112 132 138 152 200 72 0
71 75 107 10227 78 0
188 100 155 131 198 0
15 100 198 18 109 119 0
7 1 109 184 58 193 0
137 128 30 121 39 0
103 138 40 165 16 0
57 63 17 58 184 0
98 24 79 62 205 0
125 111 118 445 6 0
126 141 96 34 9 0
103 52 170 47 0
49 114 46 126 0
84 110 158 86 87 0
41 50 87 115 0
190 99 157 6 0
129 128 144 0
148 189 34 172 0
70 203 25 16 0
188 7 104 37 0
179 192 136 17 0
99 1 66 8 0
179 57 64 105 0
124 112 80 71 0
33 167 109 160 0
98 31 48 56 0
33 206 120 0
84 125 61 81 0
204 145 83 46 0
77 35 198 0
136 128 71 41 0
97 89 118 0
113 92 200 93 0
31 92 190 23 0
113 38 111 0 Equation 36
The following Equation 37 represents each element value in each row in the base matrix of
106 43 185 109 230 209 30 185 143 130 154 241 80 121 246 235 124 1 0
77 142 7 1 153 163 44 212 170 141 183 170 86 227 68 56 0 0 0
208 95 240 174 15 142 7 179 217 161 36 241 227 53 72 130 140 0 0
79 244 90 171 244 209 183 221 86 252 34 108 206 250 106 131 87 1 0
66 118 0
163 14 10 130 239 118 152 0
179 150 50 5 158 196 83 234 0
119 240 81 197 105 108 0
19 29 139 51 114 219 226 181 216 0
163 34 157 162 90 211 197 141 0
70 173 129 113 100 65 0
233 159 232 59 165 192 138 0
39 72 237 113 104 210 0
170 161 233 64 119 0
142 28 167 5 234 33 0
64 181 61 195 123 117 0
28 85 102 202 71 0
242 91 28 248 87 0
73 123 237 193 149 0
18 137 185 166 95 0
140 36 236 17 43 0
15 69 136 161 88 0
63 196 78 216 0
69 34 142 133 0
129 53 133 170 50 0
71 139 73 188 0
203 77 189 209 0
127 138 42 0
220 130 11 229 0
63 134 114 84 0
233 148 6 253 0
137 50 37 119 0
230 111 109 72 0
118 2 226 184 0
156 15 81 249 0
43 125 184 70 0
19 129 181 140 0
196 247 240 0
103 196 195 74 0
72 237 116 224 0
107 72 85 0
196 168 189 214 0
121 106 247 0
227 32 8 235 0
212 208 118 143 0
49 105 169 0 Equation 37
The following Equation 38 represents each element value in each row in the base matrix of
259 123 181 230 315 199 361 364 329 321 26 265 185 290 271 43 1 0
124 162 190 360 274 357 89 158 375 258 320 351 330 53 48 261 0 0 0
323 360 179 259 6 63 308 4 181 280 252 2 253 163 314 243 110 0 0
170 13 11 364 209 319 274 36 168 33 342 352 212 136 96 150 286 1 0
2 106 0
255 142 130 43 95 255 207 0
227 301 365 145 209 238 156 289 0
216 312 16226 305 185 0
304 314 325 373 371 147 77 156 246 0
165 382 201 148 4 274 248 18 0
105 351 65 25 151 105 0
333 375 289 347 116 142 172 0
76 122 307 211 52 273 0
245 169 325 314 242 0
183 59 354 255 37 87 0
188 157 27 289 340 70 0
79 314 5 184 279 0
74 104 169 226 20 0
133 197 99 367 309 0
307 241 135 49 67 0
352 46 143 267 247 0
238 322 63 187 46 0
222 1 196 42 0
5 18 77 190 0
266 305 373 99 44 0
226 95 201 122 0
275 151 308 264 0
41 160 343 0
182 110 341 9 0
132 207 305 312 0
301 183 12 292 0
177 329 378 316 0
29 379 223 230 0
376 45 71 151 0
14 119 236 24 0
82 195 24 300 0
124 329 145 54 0
109 366 151 0
63 144 110 342 0
52 182 198 344 0
76 338 298 0
325 334 57 47 0
77 339 225 0
90 8 203 274 0
38 365 302 369 0
88 30 161 0 Equation 38
The following Equation 39 represents each element value in each row in the base matrix of
90 222 46 240 158 264 202 13 295 20 164 158 12 95 73 292 176 1 0
298 164 289 305 150 189 211 266 6 313 236 99 234 189 298 239 0 0 0
145 200 253 238 242 195 148 19 221 143 33 181 280 43 198 181 242 0 0
301 84 31 131 187 133 226 314 264 30 239 158 304 102 134 305 233 1 0
257 27 0
12 316 151 3 5 88 5 0
181 105 28 235 216 97 50 171 0
143 189 203 303 247 301 0
233 302 15 129 70 231 268 62 7 0
51 202 315 144 276 111 152 287 0
286 96 236 264 39 275 0
259 70 103 203 49 31 124 0
21 58 62 262 1 223 0
154 222 133 46 151 0
188 65 298 285 294 94 0
6 121 211 96 123 222 0
168 173 105 30 318 0
108 192 176 15 136 0
65 135 20 314 219 0
117 289 215 114 15 0
64 7 171 258 269 0
208 156 236 89 282 0
175 160 246 88 0
229 195 243 247 0
86 220 78 96 256 0
131 211 270 270 0
248 239 206 255 0
126 185 23 0
120 154 221 225 0
177 162 185 52 0
258 167 91 11 0
25 109 106 52 0
10 135 245 298 0
31 139 29 256 0
289 74 142 24 0
296 274 92 249 0
305 166 301 7 0
137 37 240 0
248 182 80 122 0
42 135 124 22 0
261 180 13 0
155 36 232 194 0
126 317 195 0
313 278 85 205 0
93 2 216 232 0
247 124 68 0 Equation 39
The following Equation 40 represents each element value in each row in the base matrix of
196 155 155 13 98 150 217 28 119 197 178 168 205 120 151 199 205 1 0
150 21 184 153 171 126 184 190 87 65 114 16 139 157 87 14 0 0 0
146 131 122 75 63 50 136 29 20 54 104 39 131 81 150 70 140 0 0
17 87 120 15 135 97 90 136 78 62 56 164 48 29 63 205 101 1 0
14 149 0
110 164 131 176 61 118 191 0
119 201 88 97 109 99 198 52 0
204 47 142 174 60 48 0
216 26 47 102 212 93 194 190 32 0
161 98 200 26 195 162 22 102 0
179 215 121 88 64 77 0
204 97 56 28 37 181 88 0
66 113 89 50 199 127 0
72 215 135 26 126 0
165 74 141 160 50 100 0
186 120 70 87 17 153 0
62 137 90 111 194 0
30 61 35 141 63 0
166 113 65 211 222 0
223 209 54 90 86 0
87 15 109 84 197 0
31 116 3 65 192 0
28 210 24 150 0
176 101 160 180 0
23 219 210 43 120 0
9 131 89 89 0
212 36 170 95 0
163 184 85 0
159 49 0 158 0
155 9 3 92 0
55 72 60 36 0
213 7 8 170 0
198 45 73 187 0
64 140 119 75 0
91 58 122 0 0
44 147 72 79 0
182 104 162 197 0
24 122 150 0
75 32 84 163 0
102 150 147 163 0
43 174 206 0
39 18 39 206 0
117 90 39 0
194 140 46 206 0
72 68 96 197 0
118 157 73 0 Equation 40
The following Equation 41 represents each element value in each row in the base matrix of
107 112 215 11 73 73 193 124 183 161 123 283 200 179 83 286 39 1 0
4 237 176 270 9 162 102 153 231 174 281 110 265 213 233 286 0 0 0
39 193 269 203 287 256 70 87 240 191 202 31 153 66 24 221 14 0 0
53 70 40 138 14 21 264 143 242 3 179 236 113 64 205 224 110 1 0
97 58 0
204 155 103 104 276 271 141 0
245 14 151 140 36 215 17 210 0
168 51 156 266 88 183 0
215 119 59 87 285 113 247 219 188 0
155 150 186 36 164 177 182 148 0
56 145 20275 171 196 0
94 255 95 190 150 260 153 0
147 1 55 135 136 202 0
146 202 143 185 54 0
34 287 89 264 244 181 0
63 242 31 229 190 115 0
188 49 100 277 272 0
185 165 16 96 150 0
166 49 159 65 35 0
15 112 161 228 214 0
9 82 276 263 236 0
43 140 185 108 260 0
70 282 54 178 0
254 187 193 276 0
36 206 208 188 169 0
254 273 21 195 0
278 149 161 236 0
69 262 127 0
31 74 138 159 0
26 62 167 284 0
247 210 2 254 0
55 122 119 85 0
144 97 119 164 0
218 2112 192 0
207 135 286 249 0
32 49 165 233 0
40 124 73 83 0
154 260 9 0
185 255 31 247 0
77 285 181 199 0
240 247 99 0
221 163 220 190 0
210 186 20 0
64 212 246 190 0
111 245 283 250 0
197 100 14 0 Equation 41
The following Equation 42 represents each element value in each row in the base matrix of
167 346 148 5 300 188 81 243 53 11 94 309 92 16 31 237 67 10
131 138 89 270 320 39 273 109 234 116 259 27 313 92 18 224 0 0 0
289 53 150 161 336 250 97 258 328 241 133 115 300 32 114 130 328 0 0
197 201 202 237 1 221 237 19 26 106 10 277 340 149 329 305 174 1 0
212 2 0
74 288 332 216 128 290 165 0
93 87 326 300 236 328 35 329 0
184 61 248 157 101 140 0
169 341 65 296 140 339 164 124 59 0
247 233 212 319 138 231 177 335 0
170 194 233 316 246 107 0
220 79 276 325 264 298 212 0
89 328 37 114 295 348 0
18 268 110 178 94 0
309 133 203 77 14 204 0
133 125 99 334 314 26 0
119 266 267 152 115 0
80 282 157 197 249 0
81 351 91 98 342 0
267 323 333 317 142 0
54 75 42 342 324 0
244 160 258 216 206 0
100 163 185 345 0
203 163 293 253 0
220 348 159 334 161 0
132 169 99 28 0
104 225 30 241 0
162 291 232 0
261 206 264 310 0
48 20 187 296 0
69 136 146 59 0
28 309 269 273 0
254 344 255 182 0
77 173 293 132 0
217 294 246 107 0
77 148 238 311 0
132 305 206 60 0
245 351 313 0
188 221 212 235 0
235 100 334 256 0
250 33 97 0
221 32 128 320 0
174 140 346 0
237 318 148 109 0
334 14 313 20 0
315 230 319 0 Equation 42
The following Equation 43 represents each element value in each row in the base matrix of
135 227 126 134 84 83 53 225 205 128 75 135 217 220 90 105 137 1 0
96 236 136 221 128 92 172 56 11 189 95 85 153 87 163 216 0 0 0
189 4 225 151 236 117 179 92 24 68 6 101 33 96 125 67 230 0 0
128 23 162 220 43 186 96 1 216 22 24 167 200 32 235 172 219 1 0
64 211 0
2 171 47 143 210 180 180 0
199 22 23 100 92 207 52 13 0
77 146 209 32 166 18 0
181 105 141 223 177 145 199 153 38 0
169 12 206 221 17 212 92 205 0
116 151 70 230 115 84 0
45 115 134 1 152 165 107 0
186 215 124 180 98 80 0
220 185 154 178 150 0
124 144 182 95 72 76 0
39 138 220 173 142 49 0
78 152 84 5 205 0
183 112 106 219 129 0
183 215 180 143 14 0
179 108 159 138 196 0
77 187 203 167 130 0
197 122 215 65 216 0
25 47 126 178 0
185 127 117 199 0
32 178 2 156 58 0
27 141 11 181 0
163 131 169 98 0
165 232 9 0
32 43 200 205 0
232 32 118 103 0
170 199 26 105 0
73 149 175 108 0
103 110 151 211 0
199 132 172 65 0
161 237 142 180 0
231 174 145 100 0
11 207 42 100 0
59 204 161 0
121 90 26 140 0
115 188 168 52 0
4 103 30 0
53 189 215 24 0
222 170 71 0
22 127 49 125 0
191 211 187 148 0
177 114 93 0 Equation 43
The exponent matrices illustrated in
In addition, it is obvious that all the exponent matrices of
If a certain rule can be found for the base matrix or a part of the exponent matrices, the base matrix may be represented more simply. For example, if it is assumed that the transceiver knows rules for a partial matrix having a diagonal structure in the base matrix and the exponent matrix of
In addition, in the method of representing the base matrix or the exponent matrix, when the locations and values of the elements are shown, they may be represented in each row, but may be represented in each column order.
According to the system, the base matrix and the exponent matrix illustrated in
While the present disclosure has been shown and described with reference to various embodiments thereof, it will be understood by those skilled in the art that various changes in form and details may be made therein without departing from the spirit and scope of the present disclosure as defined by the appended claims and their equivalents.
Number | Date | Country | Kind |
---|---|---|---|
10-2016-0175019 | Dec 2016 | KR | national |
10-2017-0002599 | Jan 2017 | KR | national |
10-2017-0003152 | Jan 2017 | KR | national |
10-2017-0016435 | Feb 2017 | KR | national |
10-2017-0037186 | Mar 2017 | KR | national |
10-2017-0058349 | May 2017 | KR | national |
10-2017-0065647 | May 2017 | KR | national |
10-2017-0078170 | Jun 2017 | KR | national |
10-2017-0080783 | Jun 2017 | KR | national |
This application is a continuation application of prior application Ser. No. 16/685,566, filed on Nov. 15, 2019, which is a continuation application of prior application Ser. No. 15/848,970, filed on Dec. 20, 2017, which has been issued as U.S. Pat. No. 10,484,010 on Nov. 19, 2019 which claimed the benefit priority under 35 U.S.C. § 119(a) of a Korean patent application number 10-2016-0175019 filed on Dec. 20, 2016 in the Korean Intellectual Property Office, and of a Korean patent application 10-2017-0002599, filed on Jan. 6, 2017 in the Korean Intellectual Property Office, and of a Korean patent application 10-2017-0003152 filed on Jan. 9, 2017 in the Korean Intellectual Property Office, and of a Korean patent application 10-2017-0016435, filed on Feb. 6, 2017 in the Korean Intellectual Property Office, and of a Korean patent application 10-2017-0037186 filed on Mar. 23, 2017 in the Korean Intellectual Property Office, and of a Korean patent application number 10-2017-0058349 filed on May 10, 2017 in the Korean Intellectual Property Office, and of a Korean patent application number 10-2017-0065647 filed on May 26, 2017 in the Korean Intellectual Property Office, and of a Korean patent application number 10-2017-0078170 filed on Jun. 20, 2017 in the Korean Intellectual Property Office, and of a Korean patent application number 10-2017-0080783, filed on Jun. 26, 2017 in the Korean Intellectual Property Office, the disclosures of each of which are incorporated by reference herein in their entireties.
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7934147 | Lakkis | Apr 2011 | B2 |
8589754 | Yuan | Nov 2013 | B2 |
10484010 | Myung | Nov 2019 | B2 |
11133825 | Myung | Sep 2021 | B2 |
20050246617 | Kyung | Nov 2005 | A1 |
20070033483 | Jeong | Feb 2007 | A1 |
20080178065 | Khandekar | Jul 2008 | A1 |
20090106625 | Jun | Apr 2009 | A1 |
20090158112 | Oh | Jun 2009 | A1 |
20110283159 | Yuan | Nov 2011 | A1 |
20120166914 | Khandekar | Jun 2012 | A1 |
20120173949 | Liu | Jul 2012 | A1 |
20140223254 | Pisek | Aug 2014 | A1 |
20150121162 | Murakami | Apr 2015 | A1 |
20150280743 | Yang | Oct 2015 | A1 |
20170149528 | Kim | May 2017 | A1 |
20170187489 | Myung | Jun 2017 | A1 |
20180175886 | Myung | Jun 2018 | A1 |
20200244287 | Xu | Jul 2020 | A1 |
Number | Date | Country |
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1947368 | Apr 2007 | CN |
101741396 | Jun 2010 | CN |
104506200 | Apr 2015 | CN |
2 352 231 | Aug 2011 | EP |
10-1364160 | Feb 2014 | KR |
10-2017-0060574 | Jun 2017 | KR |
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Number | Date | Country | |
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20210376856 A1 | Dec 2021 | US |
Number | Date | Country | |
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Parent | 16685566 | Nov 2019 | US |
Child | 17400681 | US | |
Parent | 15848970 | Dec 2017 | US |
Child | 16685566 | US |