The present invention relates to the field of information coding/decoding, and more particularly to a system and method for designing Slepian-Wolf codes for distributed source encoding/decoding.
Issues related to distributed lossless compression of correlated sources are relevant for a wide variety of applications, such as distributed sensor networks and multi-source video distribution, both wired and wireless, coding for relay channels, and digital communications, among others. Distributed source coding (DSC), whose theoretical foundation was laid by Slepian and Wolf as early as 1973 (see D. Slepian and J. K. Wolf, “Noiseless coding of correlated information sources,” IEEE Trans. On Information Theory, vol. IT-19, pp. 471-480, July 1973, incorporated by reference herein.), refers to the compression of the outputs of two or more physically separated sources that do not communicate with each other (hence distributed coding). These sources send their compressed outputs to a central point (e.g., the base station) for joint decoding. DSC is related to the well-known “CEO problem” (in which a source is observed by several agents, who send independent messages to another agent (the chief executive officer (CEO)), who attempts to recover the source to meet a fidelity constraint, where it is usually assumed that the agents observe noisy versions of the source, with the observation noise being independent from agent to agent), and is part of network information theory.
Compressing two distinct signals by exploiting their correlation can certainly provide a benefit in total rate cost. Moreover, Slepian and Wolf showed that lossless compression of two separate sources can be as efficient as if they are compressed together as long as joint decoding is done at the receiver. Several successful attempts of constructing practical coding schemes that exploit the potential of the Slepian-Wolf (SW) theorem have been developed. See, e.g., S. S. Pradhan and K. Ramchandran, “Distributed source coding using syndromes (DISCUS): design and construction,” Proc. DCC-1999, Data Compression Conference, pp. 158-167, Snowbird, Utah, March 1999; A. Liveris, Z. Xiong, and C. Georghiades, “Compression of binary sources with side information at the decoder using LDPC codes,” IEEE Communications Letters, vol. 6, pp. 440-442, October 2002; A. Liveris, Z. Xiong, and C. Georghiades, “Distributed compression of binary sources using convolutional parallel and serial concatenated convolutional codes,” Proc. DCC-2003, Data Compression Conference, pp. 193-202, Snowbird, Utah, March 2003; A. Aaron and B. Girod, “Compression of side information using turbo codes,” Proc. DCC-2002, Data Compression Conference, pp. 252-261, Snowbird, Utah, April 2002; J. Garcia-Frias and Y. Zhao, “Compression of correlated binary sources using turbo codes,” IEEE Communications Letters, vol. 5, pp. 417-419, October 2001; and J. Bajcy and P. Mitran, “Coding for the Slepian-Wolf problem with turbo codes,” Proc. IEEE Globecom-2001, vol. 2 pp. 1400-1404, San Antonio, Tex., November 2001, all of which are incorporated by reference herein. All these schemes, with the exception of that of Garcia-Frias and Zhao, are based on asymmetric codes (see, e.g., S. S. Pradhan and K. Ramchandran, “Generalized coset codes for symmetric distributed source coding,” included herewith as Appendix G); that is, they losslessly compress one source, while the other source is assumed to be perfectly known at the decoder side and is used as side information.
Thus, for two discrete, memoryless, identically distributed sources X and Y encoded separately at rates R1 and R2, respectively, these codes attempt to reach the two corner points on the Slepian-Wolf (SW) bound: (R1,R2)=(H(X),H(Y|X)) and (R1,R2)=(H(Y),H(X|Y)). However, often it is desirable to vary the rates of individual encoders while keeping the total sum-rate constant. One technique for achieving this is time sharing. However, time sharing might not be practical because it requires exact synchronization among encoders.
A second technique is the source-splitting approach of Rimoldi and Urbanke (see B. Rimoldi and R. Urbanke, “Asynchronous Slepian-Wolf coding via source-splitting”, Proc. ISIT-1997 IEEE Int. Symp. Information Theory, pp. 271, Ulm, Germany, June, 1997, incorporated by reference herein), which potentially reaches all points on the SW bound by splitting two sources into three subsources of lower entropy. Garcia-Frias and Zhao, in the reference cited above, proposed a system consisting of two different turbo codes which form a large turbo code with four component codes. In the symmetric scenario suggested (where the rates of both encoders are the same), half of the systematic bits from one encoder and half from the other are sent. Further, instead of syndrome bits, parity bits are sent.
Pradhan and Ramchandran have outlined a method for constructing a single code based on the syndrome technique, which achieves arbitrary rate allocation among the two encoders (see S. S. Pradhan and K. Ramchandran, “Generalized coset codes for symmetric distributed source coding,” included herewith as Appendix G; S. S. Pradhan and K. Ramchandran, “Distributed source coding: symmetric rates and applications to sensor networks,” Proc. DCC-2000, Data Compression Conference, pp. 363-372, Snowbird, Utah, March 2000; and S. S. Pradhan and K. Ramchandran, “Distributed source coding using syndromes (DISCUS): design and construction,” Proc. DCC-1999, Data Compression Conference, pp. 158-167, Snowbird, Utah, March 1999, incorporated by reference herein.). The method constructs independent subcodes of the main code and assigns them to different encoders. Each encoder sends only partial information about the source; by combining two received bitstreams, a joint decoder should perfectly reconstruct the sources. Since joint decoding is performed only on a single code, if this code approaches the capacity of a channel that models the correlation among the sources, the system will approach the SW limit. Thus, an advantage of this approach is the need of only one good channel code. Pradhan and Ramchandran also showed that this code does not suffer from any performance loss compared to the corresponding asymmetric code. Moreover, any point on the SW bound can be potentially reached without increasing the encoding/decoding complexity. Further, Pradhan and Ramchandran applied the method to coding of two noisy observations of a source with scalar quantizer and trellis codes.
While the theoretical limits and bounds of SW coding are well understood, practical implementations and their actual performance and limits of have not heretofore been determined.
One embodiment of the present invention comprises a system and method for implementing Slepian-Wolf codes by channel code partitioning.
In one embodiment, a generator matrix is partitioned to generate a plurality of sub-matrices corresponding respectively to a plurality of correlated data sources. The partitioning may be performed in accordance with a rate allocation among the plurality of correlated data sources. A corresponding plurality of parity matrices may then be generated based respectively on the sub-matrices, where each parity matrix is useable to encode correlated data for a respective correlated data source.
A better understanding of the present invention can be obtained when the following detailed description of the preferred embodiment is considered in conjunction with the following drawings, in which:
While the invention is susceptible to various modifications and alternative forms, specific embodiments thereof are shown by way of example in the drawings and are herein described in detail. It should be understood, however, that the drawings and detailed description thereto are not intended to limit the invention to the particular form disclosed, but on the contrary, the intention is to cover all modifications, equivalents and alternatives falling within the spirit and scope of the present invention as defined by the appended claims.
The following references are hereby incorporated by reference in their entirety as though fully and completely set forth herein:
This application includes eight appendices labeled A-H.
The following is a glossary of terms used in the present application:
Memory Medium—Any of various types of memory devices or storage devices. The term “memory medium” is intended to include an installation medium, e.g., a CD-ROM, floppy disks 104, or tape device; a computer system memory or random access memory such as DRAM, DDR RAM, SRAM, EDO RAM, Rambus RAM, etc.; or a non-volatile memory such as a magnetic media, e.g., a hard drive, or optical storage. The memory medium may comprise other types of memory as well, or combinations thereof. In addition, the memory medium may be located in a first computer in which the programs are executed, or may be located in a second different computer which connects to the first computer over a network, such as the Internet. In the latter instance, the second computer may provide program instructions to the first computer for execution. The term “memory medium” may include two or more memory mediums which may reside in different locations, e.g., in different computers that are connected over a network.
Carrier Medium—a memory medium as described above, as well as signals such as electrical, electromagnetic, or digital signals, conveyed via a communication medium such as a bus, network and/or a wireless link.
Programmable Hardware Element—includes various types of programmable hardware, reconfigurable hardware, programmable logic, or field-programmable devices (FPDs), such as one or more FPGAs (Field Programmable Gate Arrays), or one or more PLDs (Programmable Logic Devices), such as one or more Simple PLDs (SPLDs) or one or more Complex PLDs (CPLDs), or other types of programmable hardware. A programmable hardware element may also be referred to as “reconfigurable logic”.
Medium—includes one or more of a memory medium, carrier medium, and/or programmable hardware element; encompasses various types of mediums that can either store program instructions/data structures or can be configured with a hardware configuration program. For example, a medium that is “configured to perform a function or implement a software object” may be 1) a memory medium or carrier medium that stores program instructions, such that the program instructions are executable by a processor to perform the function or implement the software object; 2) a medium carrying signals that are involved with performing the function or implementing the software object; and/or 3) a programmable hardware element configured with a hardware configuration program to perform the function or implement the software object.
Program—the term “program” is intended to have the full breadth of its ordinary meaning. The term “program” includes 1) a software program which may be stored in a memory and is executable by a processor or 2) a hardware configuration program useable for configuring a programmable hardware element.
Software Program—the term “software program” is intended to have the full breadth of its ordinary meaning, and includes any type of program instructions, code, script and/or data, or combinations thereof, that may be stored in a memory medium and executed by a processor. Exemplary software programs include programs written in text-based programming languages, such as C, C++, Pascal, Fortran, Cobol, Java, assembly language, etc.; graphical programs (programs written in graphical programming languages); assembly language programs; programs that have been compiled to machine language; scripts; and other types of executable software. A software program may comprise two or more software programs that interoperate in some manner.
Hardware Configuration Program—a program, e.g., a netlist or bit file, that can be used to program or configure a programmable hardware element.
Graphical User Interface—this term is intended to have the full breadth of its ordinary meaning. The term “Graphical User Interface” is often abbreviated to “GUI”. A GUI may comprise only one or more input GUI elements, only one or more output GUI elements, or both input and output GUI elements.
The following provides examples of various aspects of GUIs. The following examples and discussion are not intended to limit the ordinary meaning of GUI, but rather provide examples of what the term “graphical user interface” encompasses:
A GUI may comprise a single window having one or more GUI Elements, or may comprise a plurality of individual GUI Elements (or individual windows each having one or more GUI Elements), wherein the individual GUI Elements or windows may optionally be tiled together.
A GUI may be associated with a graphical program. In this instance, various mechanisms may be used to connect GUI Elements in the GUI with nodes in the graphical program. For example, when Input Controls and Output Indicators are created in the GUI, corresponding nodes (e.g., terminals) may be automatically created in the graphical program or block diagram. Alternatively, the user can place terminal nodes in the block diagram which may cause the display of corresponding GUI Elements front panel objects in the GUI, either at edit time or later at run time. As another example, the GUI may comprise GUI Elements embedded in the block diagram portion of the graphical program.
Computer System—any of various types of computing or processing systems, including a personal computer system (PC), mainframe computer system, workstation, network appliance, Internet appliance, personal digital assistant (PDA), television system, grid computing system, or other device or combinations of devices. In general, the term “computer system” can be broadly defined to encompass any device (or combination of devices) having at least one processor that executes instructions from a memory medium.
FIG. 1A—Computer System
The computer system 82 may include a memory medium(s) on which one or more computer programs or software components according to any of various embodiments of the present invention may be stored. For example, the memory medium may store one or more programs which are executable to perform any or all of the methods described herein. The memory medium may also store operating system software, as well as other software for operation of the computer system. Various embodiments further include receiving or storing instructions and/or data implemented in accordance with the foregoing description upon a carrier medium.
FIG. 1B—Computer Network
As another example, computer 82 may display the graphical user interface of a program and computer system 90 may execute a portion of the program implementing the main functionality (i.e., the non-user interface portion) of the program.
In one embodiment, the graphical user interface of the program may be displayed on a display device of the computer system 82, and the remaining portion of the program may execute on a device 190 connected to the computer system 82. The device 190 may include a programmable hardware element and/or may include a processor and memory medium which may execute a real time operating system. In one embodiment, the program may be downloaded and executed on the device 190. For example, an application development environment with which the program is associated may provide support for downloading a program for execution on the device in a real time system.
FIG. 2—Computer System Block Diagram
The computer may include at least one central processing unit or CPU (processor) 160 which is coupled to a processor or host bus 162. The CPU 160 may be any of various types, including an x86 processor, e.g., a Pentium class, a PowerPC processor, a CPU from the SPARC family of RISC processors, as well as others. A memory medium, typically comprising RAM and referred to as main memory, 166 is coupled to the host bus 162 by means of memory controller 164. The main memory 166 may store programs operable to implement Slepian-Wolf coding according to various embodiments of the present invention. The main memory may also store operating system software, as well as other software for operation of the computer system.
The host bus 162 may be coupled to an expansion or input/output bus 170 by means of a bus controller 168 or bus bridge logic. The expansion bus 170 may be the PCI (Peripheral Component Interconnect) expansion bus, although other bus types can be used. The expansion bus 170 includes slots for various devices such as described above. As shown, the computer comprises a network card 122 for communication with other devices, e.g., distributed sensor or video distribution systems, other computer systems, etc. The computer 82 further comprises a video display subsystem 180 and hard drive 182 coupled to the expansion bus 170.
As shown, a device 190 may also be connected to the computer. The device 190 may include a processor and memory which may execute a real time operating system. The device 190 may also or instead comprise a programmable hardware element. The computer system may be operable to deploy programs according to various embodiments of the present invention to the device 190 for execution of the program on the device 190.
FIGS. 3A and 3B—Exemplary Systems
Various embodiments of the present invention may be directed to distributed sensor systems, wireless or wired distributed video systems, or any other type of information processing or distribution systems utilizing information coding, e.g., Slepian-Wolf coding.
For example,
However, it is noted that the present invention can be used for a plethora of applications and is not limited to the above applications. In other words, applications discussed in the present description are exemplary only, and the present invention may be used in any of various types of systems. Thus, the system and method of the present invention is operable to be used in any of various types of applications, including the control of other types of devices such as multimedia devices, video devices, audio devices, telephony devices, Internet devices, etc., as well as network control, network monitoring, financial applications, entertainment, games, etc.
FIG. 4—Method for Slepian-Wolf Coding for Multiple Data Sources
In 420, L codes (including L encoders and L corresponding decoders) are specified given a generator matrix G. Embodiments of a method for specifying the L codes, given the generator matrix G, are described more fully below.
In 430, data from the L correlated sources are encoded using the L encoders, respectively. Embodiments of a method for performing the encoding are described more fully below.
In 440, the L encoded streams are decoded to recover information generated by the L sources. Embodiments of a method for performing the decoding are described more fully below.
FIG. 5A—Method for Specifying Slepian-Wolf Codes for Multiple Data Sources
In 506, L submatrices of a given generator matrix G may be identified. The L submatrices may be disjoint submatrices each having the same number of columns as the matrix G. The numbers of rows in the L submatrices of the generator matrix G are determined by the selected point in the SW admissible rate region. This process of identifying L submatrices of the generator matrix G is also referred to as partitioning the generator matrix G. See below for further description of how these submatrices are identified.
In 508, L parity matrices H1, H2, . . . , HL may be computed from the generator matrix G. Each parity matrix Hi is computed from a corresponding submatrix of the generator matrix G. The parity matrix Hi, i=1, 2, . . . , L, defines a corresponding encoder Ci according to the relation: (si)T=Hi (xi)T, wherein xi represents a block of samples from the corresponding source stream, wherein si represents a result of the encoder Ci.
FIG. 5B—Method for Slepian-Wolf Encoding of Multiple Data Sources
In 510, each of the transmitters TXi, i=1, 2, . . . , L, receives a corresponding parity matrix Hi (computed as described above). See description below for more definition of the parity matrices.
In 512, each transmitter of the L transmitters encodes data from a corresponding one of the source streams using the corresponding parity matrix Hi. For example, each transmitter may encode data of a corresponding source stream according to the relation: (si)T=Hi (xi)T, wherein xi represents a block of samples from the corresponding source stream, wherein si represents a result of the encoding.
FIG. 5C—Method for Decoding Slepian-Wolf Encoded Data from Multiple Data Sources
In 514, a receiver may receive L codewords s1, s2, . . . , sL (e.g., from L respective transmitters). The L codewords represent data from L information sources respectively.
In 516, the receiver generates L expanded syndromes (also referred to herein as t1, t2, . . . , tL) from the codewords s1, s2, . . . , sL by inserting zero or more zero values at appropriate locations (see discussion below) into each codeword, so that each of the expanded syndromes have the same length.
In 518, the receiver computes a vector sum of the expanded syndromes.
In 520, the receiver determines a composite codeword c closest to the vector sum (e.g., in the sense of Hamming distance).
In 522, the receiver multiplies each of L portions of a systematic part of the composite codeword c by a corresponding submatrix of a generator matrix G to obtain a corresponding intermediate vector; thus, L intermediate vectors are obtained altogether.
In 524, the receiver adds each of the L intermediate vectors to a corresponding one of the expanded syndromes to obtain a corresponding output representing an estimate of the corresponding source data.
Slepian-Wolf Coding
Various embodiments of the present invention provide a clear and detailed solution to the problem of practical implementation of Slepian-Wolf codes. More specifically, the approach is based on systematic codes so that advanced channel codes can be employed to yield Slepian-Wolf (SW) codes that can approach any point on the theoretical bound. Additionally, practical low-complexity code designs based on powerful systematic channel codes are described. In A. Liveris, Z. Xiong, and C. Georghiades, “Compression of binary sources with side information at the decoder using LDPC codes,” IEEE Communications Letters, vol. 6, pp. 440-442, October 2002, it was shown that with low-density parity-check (LDPC) codes it is possible to approach the theoretical limits in the SW asymmetric scenario. Irregular repeat-accumulate (IRA) codes (see H. Jin, A. Khandekar, and R McEliece, “Irregular repeat-accumulate codes,” Proc. of 2nd International Symposium on Turbo codes and related topics, pp. 1-8, September 2000, incorporated by reference above.) are a special form of LDPC codes which suffer very small performance loss, but can easily be coded in systematic form and have low encoding complexity which make them suitable for multiterminal coding (see T. Berger, “Multiterminal source coding”, The Information Theory Approach to Communications, G. Longo, Ed., New York: Springer-Verlag, 1977, incorporated by reference above.). Accordingly, IRA codes have been used in experiments described herein.
Additionally, to illustrate an exemplary implementation of the present scheme with convolutional codes, powerful turbo codes (see C. Berrou, A. Glavieux, and P. Thitimajshima, “Near Shannon limit error-correcting coding and decoding: Turbo codes,” Proc. ICC '93, IEEE Int. Conf. on Comm., pp. 1064-1070, Geneva, 1993, incorporated by reference above.) are also treated. Turbo codes have already been successfully applied to asymmetric SW and Wyner-Ziv (see A. D. Wyner and J. Ziv, “The rate-distortion function for source coding with side information at the decoder”, IEEE Trans. on Information Theory, vol. IT-22, pp. 1-10, January 1976, incorporated by reference above.) coding of two sources. Good results are obtained with both conventional (see, e.g., A. Liveris, Z. Xiong, and C. Georghiades, “Distributed compression of binary sources using convolutional parallel and serial concatenated convolutional codes,” Proc. DCC-2003, Data Compression Conference, pp. 193-202, Snowbird, Utah, March 2003; and J. Chou, S. S. Pradhan and K. Ramchandran, “Turbo and trellis-based constructions for source coding with side information,” Proc. DCC-2003, Data Compression Conference, pp. 33-42, Snowbird, Utah, March 2003, both of which were incorporated by reference above.) and nonconventional turbo schemes (see, e.g., A. Aaron and B. Girod, “Compression of side information using turbo codes,” Proc. DCC-2002, Data Compression Conference, pp. 252-261, Snowbird, Utah, April 2002; J. Garcia-Frias and Y. Zhao, “Compression of correlated binary sources using turbo codes,” IEEE Communications Letters, vol. 5, pp. 417-419, October 2001; and J. Bajcy and P. Mitran, “Coding for the Slepian-Wolf problem with turbo codes,” Proc. IEEE Globecom-2001, vol. 2 pp. 1400-1404, San Antonio, Tex. November 2001, each of which were incorporated by reference above.). Various embodiments of the present invention implement symmetric SW coding using conventional punctured turbo codes.
Also presented herein is an extension of the method (see S. S. Pradhan and K. Ramchandran, “Generalized coset codes for symmetric distributed source coding,” included herewith as Appendix G; and B. Rimoldi and R. Urbanke, “Asynchronous Slepian-Wolf coding via source-splitting”, Proc. ISIT-1997 IEEE Int. Symp. Information Theory, pp. 271, Ulm, Germany, June, 1997, incorporated by reference above.) to SW coding of multiple sources (see, e.g., T. Cover, “A proof of the data compression theorem of Slepian and Wolf for ergodic sources”, IEEE Trans. on Information Theory, vol. IT-21, pp. 226-228, March 1975, incorporated by reference above.), which is of special importance in sensor networks (and wireless video distribution, among other application domains). For example, after quantization of an observed corrupted version of the source, each distinct sensor may encode its observation by exploiting the correlation between the observations and the source (see Y. Oohama, “The Rate-Distortion Function for the Quadratic Gaussian CEO Problem,” IEEE Trans. on Information Theory, vol. 44, pp. 1057-1070, May 1998, incorporated by reference above.).
Thus, to reach the theoretical limits (see, Y. Oohama, cited above), a code for lossless compression capable of trading-off transmission rates among sensors is needed. It is shown herein that as long as the correlation among the sources is such that their sum is a Bernoulli-p process, a single channel code can be used to approach the joint entropy limit. In addition, the complexity of encoding/decoding does not exceed that of the asymmetric codes. Furthermore, in contrast to the asymmetric codes, the obtained code has additional error detection capability.
Below, a method for designing a single code for SW coding of multiple sources is first described, then how this theoretical approach can be applied to practical code constructions using systematic IRA and turbo codes. Finally, experimental results for two sources and conclusions are provided.
Multiple Source Slepian-Wolf Coding
Consider an SW coding system which consists of L encoders and a joint decoder. Let X1, . . . XL be discrete, memoryless, uniformly distributed correlated random sources and let xi, . . . , xL denote their realizations. The i-th encoder compresses Xi at rate Ri independently from the information available at other encoders. The decoder receives the bitstreams from all the encoders and jointly decodes them. It should reconstruct all received source messages with arbitrarily small probability of error. The achievable rate region is then (see T. Cover, “A proof of the data compression theorem of Slepian and Wolf for ergodic sources”, IEEE Trans. on Information Theory, vol. IT-21, pp. 226-228, March 1975.):
Ri
where for k≦L, {i1, . . . , ik}⊂{1, . . . , L}, and {j1, . . . , jL−k}={1, . . . , L}\{i1, . . . , ik}.
A practical code may be constructed that can potentially approach the above bound for any achievable rate allocation among the encoders. The binary case is treated, where it is assumed that all Xi's are of length n bits.
Definition 1 A general SW code is a pair (C, M), where C is an (n, k) linear binary channel code given by generator matrix Gk×n, and M is an ordered set of integers {m1, . . . , mL} such that Σj=1L mj=k.
For each i=1, . . . L, code Ci may be formed as a subcode of C with generator matrix Gimi×n which consists of mi rows of G starting from row m1+ . . . +mi−1+1. Without loss of generality suppose that the code C is systematic. Let mi−=m1+ . . . +mi−1 and mi+=mi+1+ . . . +mL. Ik denotes the k×k identity matrix, and Ok1×k2 is the k1×k2 all-zero matrix. Then, for G=[IkPk×(n−k)], the generator matrix of subcode Ci is
Gi=[Omi×mi−ImiOmi×mi+Pimi×(n−k)], (1)
where PT=[P1T . . . PLT]
One choice for the (n−mi)×n parity matrix Hi of Ci is
Encoding may be performed by multiplication of the incoming n-length vector xi=[ui ai vi qi] (vectors ui, ai, vi, and qi are of length mi−, mi, mi+, and n−k, respectively) with the parity matrix Hi. In this way the syndrome vector siT=HixiT of length n−mi may be formed as:
where ⊕ denotes addition in GF(2).
Let a length n row-vector ti be defined as
Then, xi⊕ti=aiGi is a valid codeword of Ci, and thus also of C. The decoder collects all syndromes s1, . . . , sL and forms the sum t1⊕ . . . ⊕tL. From linearity, it follows that x1⊕t1⊕ . . . ⊕xL⊕tL is a valid codeword of C. The task of the decoder is then to find a codeword c that is closest (in Hamming distance) to the vector t1⊕ . . . ⊕tL. Let the vector [â1 . . . âL] be the systematic part of the codeword c. The sources may be recovered as: {circumflex over (x)}i=âiGi⊕ti.
Given the length of the messages n, the number of encoders L, and the set of desirable transmission rates R1, . . . , RL (that are achievable; see T. Cover, “A proof of the data compression theorem of Slepian and Wolf for ergodic sources”, IEEE Trans. on Information Theory, vol. IT-21, pp. 226-228, March 1975.), parameters of the SW code may be selected in the following way:
For i=1, . . . , L, mi=n−Ri, k=Σj=1Lmj. If the joint distribution of random variables X1, . . . , XL is such that w(x1⊕ . . . ⊕xL)≦ti, where w(·) denotes the Hamming weight, then the code C should be an (n, k, dH) code that can correct at least t errors; thus, the Hamming distance of the code is dH≧2t+1, and from the sphere packing bound n−k≧log Σj=0t(jn) must hold.
Proposition 1 If the parameters of a general SW code (C,M) are selected as above and the correlation of the sources is such that w(x1⊕ . . . ⊕xL)≦t, then the decoding error equals zero.
Proof: The proof follows directly from S. S. Pradhan and K. Ramchandran, “Distributed source coding: symmetric rates and applications to sensor networks,” Proc. DCC-2000, Data Compression Conference, pp. 363-372, Snowbird, Utah, March 2000, incorporated by reference above, and the discussion above.
An advantage of this technique is that only one good channel code is needed. Indeed, for L=2, if the binary code C is approaching the capacity of a binary symmetric channel (BSC), then the general SW code (C,M) will approach the SW limit as long as the joint correlation between X1 and X2 can be modeled with the same BSC. However, in the case L>2, finding a channel that models the correlation among sources is more involved. As long as this correlation is such that X1⊕ . . . ⊕XL is a Bernoulli-p process, a single channel code C can be efficiently designed. This can be the case in the remote multiterminal setting (T. Berger, “Multiterminal source coding”, The Information Theory Approach to Communications, G. Longo, Ed., New York: Springer-Verlag, 1977, incorporated by reference above.) where an encoder observes only a noisy version of the source. Indeed, for the source S, an observation can be often modeled as Xi=S+Ni, (i=1, . . . , L), where Ni is an independent and identically distributed (i.i.d.) discrete random variable independent of S.
The method may also apply to the case when C is a convolutional code, as will be shown below in an example using punctured turbo codes. For clarity, an example of the code construction for the case L=2 using a systematic channel code (a similar example but with a non-systematic code is hinted in S. S. Pradhan and K. Ramchandran, “Generalized coset codes for symmetric distributed source coding,” included herewith as Appendix G; and S. S. Pradhan and K. Ramchandran, “Distributed source coding: symmetric rates and applications to sensor networks,” Proc. DCC-2000, Data Compression Conference, pp. 363-372, Snowbird, Utah, March 2000, incorporated by reference above) is presented. Let X and Y be two discrete memoryless uniformly distributed variables of length seven bits such that the Hamming distance between them is at most one. The source messages are separately encoded and sent to a joint decoder. The decoder then attempts to losslessly reconstruct both sources.
The SW bound for this case is 10 bits (see D. Slepian and J. K. Wolf, “Noiseless coding of correlated information sources,” IEEE Trans. On Information Theory, vol. IT-19, pp. 471-480, July 1973, incorporated by reference above). This bound can be achieved in the asymmetric scenario by transmitting one source, e.g., X, at rate R1=H(X)=7 bits and by coding the second source, Y, at R2=H(Y|X)=3 bits. It is shown how the same total rate can be achieved with the symmetric approach by using R1=R2=5 bits. Since n=7 bits, and a code is desired that can correct at least one bit error, for an SW code C the systematic (7,4) Hamming code is selected, defined by the generator matrix:
Its parity matrix is:
Further two subcodes of C, C1 and C2, may be constructed by splitting G into two generator matrices, G1 that contains the first m=2 rows of G, and G2 that contains the last two rows. X may be coded using C1 and Y using C2. Let PT=[P1T P2T]. Then for the (n−m)×n parity-check matrices H1 and H2 of C1 and C2, respectively, the following may be obtained from (2):
since both H1 and H2 have rank n−m and H1G1T=H2G2T=O(n−m)×m.
Let realizations of the sources be x=[0 0 1 0 1 1 0] and y=[0 1 1 0 1 1 0]. Since the Hamming distance between x and y is one, it should be possible to decode the messages correctly.
Syndromes for both x and y may be formed. To do so, x and y may be written in the form
x=[a1v1q1]=[00 10 110],
y=[u2a2q2]=[01 10 110].
The length n−m syndromes, s1 and s2, formed by the two subcodes are
The length n row-vectors t1 and t2 may then be given by
Then the row-vectors x⊕t1 and y⊕t2 are codewords of the codes C1 and C2, respectively.
Thus, by sending s1 and s2 from the two encoders to the joint decoder, the decoder may find the codeword in C that is closest to t1⊕t2=[0110111]. Since there is no error in decoding, this codeword may be x⊕t1⊕y⊕t2=[0010111] because the Hamming distance between x and y is one and the minimal Hamming distance of the code C is three. The corresponding reconstructions â1=a1 and â2=a2 may then be obtained as the systematic part of the codeword. Since a1G1=x⊕t1 and a2G2=y⊕t2, the sources may be reconstructed as {circumflex over (x)}=â1G1⊕t1=[0010110]=a1G1⊕t1, ŷ=â2G2⊕t2=[0110110]=a2G2⊕t2. It may thus be seen that x and y are indeed recovered error-free.
Practical Code Design
Practical SW codes using systematic IRA and turbo codes may be designed as described below using the notation established above.
Systematic IRA Codes
The present methods may be applied to systematic IRA codes (see H. Jin, A. Khandekar, and R McEliece, “Irregular repeat-accumulate codes,” Proc. of 2nd International Symposium on Turbo codes and related topics, pp. 1-8, September 2000, incorporated by reference above.). Systematic IRA codes are powerful channel codes that combine the advantages of LDPC codes (message passing iterative decoding, simple analysis and code design) and turbo codes (linear time encoding). Their performance is comparable to that of irregular LDPC codes of the same codeword length. For simplicity, symmetric SW coding of two binary sources X and Y are considered. Code construction for the general case is essentially the same.
FIG. 6—Encoding Multiple Data Sources
At the first encoder, the length n source output x is split into three parts in the form
x=[a1v1q1] (5)
where a1, v1 are row-vectors of length m=k/2 and q1 is a row-vector of length n−k=n−2m.
First, a1P1 may be determined by setting the values of the systematic IRA variable nodes to [a1 O1×m], that is, half of the systematic part may be set to zero.
Next, the length n−m syndrome s1 that is formed by the first encoder may be obtained by appending v1 to u1P1⊕q1. The encoding procedure is represented in
In a similar way, s2 may be formed at the second encoder from y=[u2 a2 q2]. At the joint decoder, first, vectors t1 and t2 may be formed as explained above; then, a common IRA decoding of t1⊕t2 may be performed, and â1 and â2 obtained as the systematic part of the recovered codeword; finally, {circumflex over (x)} and ŷ may be reconstructed as:
{circumflex over (x)}[â1O1×n]G⊕t1, (6)
ŷ=[O1×mâ2]G⊕t2. (7)
As a result, if the used systematic IRA code can approach the capacity of a channel, then if the same channel models the statistics of x⊕y, the resulting IRA coding scheme based on the above setup will also approach the SW limit for any rate allocation between the encoders. The procedure can be generalized to any asymmetric scenario with any number of sources. However, when more than two sources are used, modeling the exact correlation with a channel is more involved and hence more challenging.
Turbo Codes
The SW code construction with systematic turbo codes (see C. Berrou, A. Glavieux, and P. Thitimajshima, “Near Shannon limit error-correcting coding and decoding: Turbo codes,” Proc. ICC '93, IEEE Int. Conf. on Comm., pp. 1064-1070, Geneva, 1993, incorporated by reference above.) is now briefly explained. Although turbo codes consist of two convolutional coders, they can be treated as linear block codes. Thus, the technique described above may be applied without modification. Indeed, assuming again the symmetric scenario, for the source realization x given by (5), a1P1 may be determined by coding the k-length vector [a1 O1×m] with the first convolutional encoder. The vector [a1 O1×m] may also be interleaved and fed into the second encoder. The syndrome may be formed then as:
s1=[v1a1P1⊕q1]T.
To get â1 and â2 at the decoder, iterative maximum a posteriori decoding may be applied to the vector t1⊕t2 from (4). Then, {circumflex over (x)} and ŷ may be obtained from (6) and (7), respectively.
FIGS. 7 & 8—Results
A simulation of SW coding of two i.i.d. binary discrete sources X and Y whose correlation is modeled as a BSC with crossover probability p was conducted. Experimental results for IRA and turbo codes are provided below.
In these experiments, the used systematic (n, k) IRA code is with rate 0.50227 and the degree distribution polynomials are (see H. Jin, A. Khandekar, and R McEliece, “Irregular repeat-accumulate codes,” Proc. of 2nd International Symposium on Turbo codes and related topics, pp. 1-8, September 2000, incorporated by reference above.): λ(x)=0.252744x2+0.081476x11+0.327162x12+0.184589x46+0.154029x48, p(x)=x8. The number of iterations in the decoder was limited to 200.
The turbo encoder includes two identical recursive systematic convolutional encoders (from W. E. Ryan, “A Turbo Code Tutorial,” included herewith as Appendix F) with memory length 4, generators (31, 27) octal, and code rate ⅓. The parity bits of both encoders were punctured to achieve the code rate of ½. A maximum a posteriori algorithm was used for decoding, with the number of iterations limited to 20.
Obtained results are shown in
Thus, based on the above precise and detailed interpretation of Pradhan and Ramchandran's outlined method for constructing a single channel code that achieves arbitrary rate allocation among two encoders in the SW coding problem (see S. S. Pradhan and K. Ramchandran, “Generalized coset codes for symmetric distributed source coding,” included herewith as Appendix G; and S. S. Pradhan and K. Ramchandran, “Distributed source coding: symmetric rates and applications to sensor networks,” Proc. DCC-2000, Data Compression Conference, pp. 363-372, Snowbird, Utah, March 2000, incorporated by reference above.), based on the systematic setup, a low-complexity coding designs using advanced systematic IRA and turbo codes that are capable of approaching any point on the SW bound has been provided.
Additionally, these results were extended to SW coding of multiple sources (see T. Cover, “A proof of the data compression theorem of Slepian and Wolf for ergodic sources”, IEEE Trans. on Information Theory, vol. IT-21, pp. 226-228, March 1975, incorporated by reference above.). It has been shown herein that for a particular correlation model among sources, a single code can be designed, which is an important advantage of the present method, as a single code can be used to approach the joint entropy limit. Note that if the designed code approaches the capacity of the channel that models correlation, then the system will approach the theoretical limit. Thus, even when the number of sources is high, since all the sources are decoded by a single code, only one (good) code is needed. In addition, low complexity and the inherent error detection capability make the present method beneficial and desirable for both direct and remote multiterminal problems (see T. Berger, “Multiterminal source coding”, The Information Theory Approach to Communications, G. Longo, Ed., New York: Springer-Verlag, 1977, incorporated by reference above.).
It is noted that to approach the theoretical limits in multiterminal coding with a fidelity criterion, after quantization of the sources, lossless coding may be needed to further decrease the rate (see S. S. Pradhan and K. Ramchandran, “Distributed source coding using syndromes (DISCUS): design and construction,” Proc. DCC-1999, Data Compression Conference, pp. 158-167, Snowbird, Utah, March 1999; J. Chou, S. S. Pradhan and K. Ramchandran, “Turbo and trellis-based constructions for source coding with side information,” Proc. DCC-2003, Data Compression Conference, pp. 33-42, Snowbird, Utah, March 2003; and Y. Yang, S. Chen, Z. Xiong, and W. Zhao, “Wyner-Ziv coding based on TCQ and LDPC codes,” Proc. of 37th Asilomar Conference on Signals, Systems, and Computers, Pacific Grove, Calif., November 2003, all of which were incorporated by reference above). Hence, in some embodiments, the method proposed herein may be applied in this second compression step. Therefore, the design of a single practical code for an entire multi-source system, e.g., a whole sensor network, that can approach or even reach the theoretical limits is feasible.
Although the embodiments above have been described in considerable detail, numerous variations and modifications will become apparent to those skilled in the art once the above disclosure is fully appreciated. It is intended that the following claims be interpreted to embrace all such variations and modifications.
This application is a divisional of U.S. patent application Ser. No. 11/069,935, filed Mar. 1, 2005, now U.S. Pat. No. 7,779,326, entitled “MULTI-SOURCE DATA ENCODING, TRANSMISSION AND DECODING USING SLEPIAN-WOLF CODES BASED ON CHANNEL CODE PARTITIONING” which is incorporated by reference herein in its entirety.
U.S. Government has a paid-up license in this invention and the right in limited circumstances to require the patent owner to license others on reasonable terms as provided for by the terms of grant number CCR-01-04834 awarded by the National Science Foundation (NSF).
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