This invention relates to the domain of digital telecommunications and more particularly decoding of an information source of which the symbols do not follow a uniform distribution. It is particularly applicable to decoding in networks using a physical layer network coding technique.
Digital communications are usually based on a discrete channel model between a transmitter capable of transmitting messages composed of symbols and a receiver capable of reproducing the message from the received signal.
A discrete channel can be considered as being a stochastic system accepting symbols xi belonging to an alphabet AX as input, and providing symbols yi belonging to an alphabet AY as output, the channel inputs and outputs being related by a probabilistic model defined by probabilities:
P(Y1=y1, . . . ,Ym=ym|X1=x1, . . . ,Xn=xn) (1)
In practice the channel is noisy, in other words symbols at the output from the channel are affected by noise that is usually assumed to be additive white Gaussian noise (AWGN). Ri=Yi+Zi, i=1, . . . , m denote the samples of the received signal samples in which z, are noise samples.
The receiver searches for the most probable sequence of symbols x1, . . . , xn given the received signal, in other words it searches for the sequence of input symbols that maximises the conditional probability:
P(X1=x1, . . . ,Xn=xn|R1=r1, . . . ,Rm=rm) (2)
that we will denote more simply as P(X|R) where X is the vector of input symbols that is to be estimated and R the vector of the received signal samples.
In other words, we search for the vector {circumflex over (X)} that maximises the probability:
P(X|R)=P(R|X)P(X)/P(R) (3)
Since the term P(R) is independent of X, all that is necessary is to search for the vector {circumflex over (X)} maximising the probability:
P(R|X)P(X) (4)
At this stage, a distinction is made between two types of decoding methods. The first decoding type uses a criterion called the Maximum Likelihood (ML) criterion, based on the assumption that the symbols in the alphabet AX are equally probable. All that is then necessary is to maximise P(R|X), in other words when the channel has no memory:
This decoding method is optimal when the input symbols are effectively equally probable, in other words when the alphabet AX has a uniform probability distribution.
A second type of decoding, called Maximum A Posteriori (MAP) decoding, does not make this simplifying assumption. Consequently, conditional probabilities have to be weighted by the probabilities of input symbols according to expression (5). When the channel has no memory, this expression becomes:
Although a large number of information sources have a non-uniform probability distribution of the symbols of their alphabet (hereinafter denoted non-uniform information sources), ML decoding is usually preferred due to its greater simplicity, despite its sub-optimal nature.
Non-uniform information sources include most multimedia information sources (text, speech, audio, video) due to the strong correlation between successive symbols (bits) contained in them. Although information compression can strongly reduce this redundancy, it does not eliminate it completely.
Non-uniformity of the probability distribution of the symbols to be decoded is not necessarily the result of the information source but it may be due to the communication strategy used. Thus, relay terminals in cooperative networks using a physical layer network coding technique, receive combinations of signals originating from different source terminals. An introduction to physical layer network coding is given in the article by S. Zhang et al. entitled «Physical Layer Network Coding», published in Proc. Of ACM Mobicom, 2006, pp. 358-365. Although the probability distribution of symbols transmitted by the source terminals is uniform, the combination of these symbols at the relay terminal is not. Thus, in the simple example shown in
In the two cases mentioned above, original non-uniformity of the information source, non-uniformity induced by the network, the receiver needs to decode information symbols belonging to an alphabet with a non-uniform probability distribution.
As mentioned above, the optimal decoding method is MAP decoding but it is difficult to achieve in practice due to its high complexity. In particular, in the context of network coding, an exhaustive search has to be made on all possible combinations of symbols from the different source terminals. Furthermore, ML decoding is sub-optimal in terms of the error rate. Furthermore, existing ML decoding methods in a telecommunication system using network coding are also very complex.
The article by Nevat et al. entitled «Detection of Gaussian constellations in MIMO systems under imperfect CSI» published in IEEE Trans. on Com., vol. 58, No. 4, April 2010, pp. 1151-1160 discloses a MAP detector in a MIMO system, the received symbols having a quasi-Gaussian amplitude distribution following formatting in transmission.
Consequently, the purpose of this invention is to disclose a method of decoding information symbols belonging to an alphabet with a non-uniform probability distribution, that is significantly simpler than MAP decoding by an exhaustive search and that has a lower error rate than that obtained by conventional decoding by maximum likelihood (ML).
This invention is defined by a MAP decoding method of a signal received through a noisy channel, said signal being composed of symbols belonging to a predetermined alphabet, affected by additive white Gaussian noise, the probability distribution of the symbols within this alphabet being non-uniform, the symbols being represented by points in a lattice Λ={x|x=Ma, a∈ZN} generated by a matrix M with dimension N×N, in which:
is created in which 0N is a null vector with dimension N;
is formed in which
is the ratio between variance of the noise and variance of a Gaussian probability distribution modelling the non-uniform probability distribution of the symbols in the alphabet;
Advantageously, the search for the closest neighbour is limited to a finite sub-set Ωa of the lattice representing a constraint on the signal energy.
According to a first embodiment of the invention, the noisy channel is a channel composed of a plurality K of elementary channels between the source terminals and a relay terminal of a network and each of the symbols is composed of a combination of elementary symbols transmitted by the corresponding source terminals to said relay terminal, each said elementary symbol belonging to an elementary alphabet of a source terminal.
In one exemplary application, the elementary alphabets of the source terminals are identical and the variance σV2 of the Gaussian probability distribution modelling the non-uniform distribution of symbols in the alphabet is obtained by σV2=KσX2, where σX2 is the variance of the probability distribution of elementary symbols within an elementary alphabet.
In this case, the variance σX2 is obtained by σX2=NPmax where Pmax is the maximum transmission power of a source terminal.
Advantageously, the search for the nearest neighbour is made using a sphere decoder and sphere decoding uses an enumeration of points according to Pohst's algorithm.
Alternately, the search for the closest neighbour could be made by decoding using a stack decoder with a spherical bound.
Other characteristics and advantages of the invention will become clear after reading preferred embodiments of the invention, with reference to the appended figures among which:
In the following, we will consider an alphabet of information symbols with a non-uniform probability distribution. In other words, the symbols in this alphabet are not equally probable.
This alphabet may for example be the alphabet used by a non-uniform information source or it may be the result of a combination at a relay in a cooperative network making use of physical layer network coding.
For illustration purposes and without reducing generalisation, we will disclose the decoding method according to the invention as part of a cooperative network. To achieve this, we will assume that K source terminals S1, . . . , SK transmit K symbols x1, . . . , xK respectively, and that a relay terminal receives a signal corresponding to a combination of these symbols, namely:
where gk, k=1, . . . , K are the gains of each of the channels between the source terminals and the relay terminal. Without reducing generality, we will assume that these gains are equal to 1.
Symbols xk are elements of a finite alphabet AX=Λ∩Ω, called the elementary alphabet, in which Λ is a lattice of dimension N, and Ω is a convex of N, containing the origin and defining the transmission power constraint of a source terminal (assumed to be identical for all terminals).
For example, if the symbols xk are elements in a QAM alphabet, the lattice dimension will be 2. Remember that a lattice with dimension N is generally defined by a matrix M with dimension N×N, in which the column vectors of the matrix are called the lattice generator vectors, a point x in the lattice being defined in a vector form by x=Ma where aϵZN is a vector with dimension N in which the elements are integers. However, it is understood that the origin of the lattice is not considered for a QAM alphabet (a≠0N). Nevertheless it will be understood that we can always consider gains gk equal to 1, provided that the matrix M can be modified.
The convex Ω is typically a sphere of N centred at the origin, the radius of the sphere being given by the maximum transmission power of the source terminal. Thus, if Pmax is the maximum transmission power of a source terminal, the convex Ω can be defined by points x, such that:
where E{.} is the mean value.
The vector z in the expression (7) is a noise vector with dimension N the components of which are random Gaussian variables with zero mean and variance σ2.
The relay terminal is provided with a decoder to decode the sum
After decoding if applicable, the relay terminal transmits it to the destination terminal.
The sum symbol
belongs to an alphabet AV resulting from superposition of elementary alphabets AX. Given that the lattice Λ is stable by addition (Λ with the addition has a group structure), the sum symbol v still belongs to the lattice Λ. The result is that the lattice ΛV defining the alphabet AV is a sub-set of Λ(ΛV⊂Λ). The alphabet AV of sum symbols is such that AV=ΛV∩ΩV where ΩV is a convex of N: reflecting the transmission power constraint of K source terminals.
MAP decoding at the relay would result in a search for the sum vector {circumflex over (v)}MAP such that:
also such that:
taking account of the fact that
The basic idea of the invention is to model the sum symbol v using a random Gaussian variable with zero mean and variance σV2=KσX2=KNPmax. This approximation is justified by application of the central limit theorem to the random variables xk.
Based on this approximation, the probability distribution law of the sum symbol is given as follows:
In substituting this estimation of P(v) in the expression (10), we obtain a new decoding criterion:
Considering that the first term does not depend on v, decoding consists of determining:
A vector, yexp called an augmented vector, with dimension 2N, resulting from the vertical concatenation of vector y and a null vector with dimension N, is added, namely
and a full rank matrix
where IN is the unit matrix with dimension N×N and β is a coefficient reflecting the ratio between the noise variance and the variance of the sum symbol to be decoded, namely
The decoding criterion (13) can then be expressed as follows:
in which the condition on the transmission power limit is shown by constraining the vector a to belong to a subset of ZN such that the transmission power constraint is satisfied, in other words
If we define the augmented matrix Mexp with dimension 2N×N by
the decoding criterion is finally expressed in the following form:
in other words, this is equivalent to searching for the point in an augmented lattice Λexp, generated by the matrix Mexp, that is closest to the point yexp, representing the received signal. Consequently, it will be understood that it is equivalent to a conventional ML decoding in an augmented space, with dimension 2N, the lattice Λexp and the point representative of the received signal yexp both being dimension 2N.
The search for the closest neighbour of yexp in the augmented lattice Λexp may be made classically using sphere decoding. It should be remembered that sphere decoding can limit the search for the closest neighbour to lattices belonging to a noise ball centred at the point representing the received signal. A description of sphere decoding is given in the article by E. Viterbo et al. entitled «A universal lattice code decoder for fading channels» published in IEEE Transactions on Information Theory, vol. 45, pages 1639-1642, July 1999. A spherical bound stack decoder (SB) can also be used as described in article by G. Rekaya Ben-Othman entitled «The spherical bound stack decoder» published in Proc. of IEEE International Conference on Wireless & Mobile Computing, Networking & Communication, pp. 322-327.
The search for the closest neighbour using the sphere decoder could in particular use a Pohst enumeration, known in itself.
The sphere decoder starts from a noise sphere with radius C centred at the point yexp representative of the received signal. Points a in the lattice Λexp belonging to this sphere satisfy the following relation:
∥yexp−Mexpa∥2≤C2 (16)
The search for the closest neighbour must also take account of the fact that the point a must satisfy the power constraint, in other words aϵΩa.
In a preliminary step, the augmented matrix Mexp is subject to a QR decomposition, in other words Mexp=QR where Q is a matrix with dimension 2N×N in which the column vectors are orthogonal and R is an upper triangular matrix with dimension N×N. If we denote ρ=Mexp−1yexp (Zero Forcing solution) and ξ=ρ−a, relation (16) can be written again as follows:
where pii=rii2, i=1, . . . , N and
j=i+1, . . . , N.
The search begins with the Nth component of a:
namely, considering the fact that anϵZ:
Similarly, the search for other components is limited to intervals:
where
and Ti=Ti-1−pii(Sii−ai) in which TN=C2. The search is made from the last component to the first, the choice of a component with a given index of a reducing the search interval for the component with a lower index.
Search intervals (20) and (21) can be expressed using the simplified relation:
Search intervals also have to be restricted to take account of the maximum transmission power constraint, aϵΩa. This constraint imposes that each component ai in a should remain between two bounds:
ωi−≤ai≤ωi+, i=1, . . . ,N (23)
Therefore, finally, the search interval Ii for each component ai is reduced to:
sup(ωi−,bi−)≤ai≤inf(ωi+,bi+) (24)
Decoding then continues as follows; the first step is to choose a component aN within the interval IN=[sup(ωN−,bN−),inf (ωN+,bN+)], and the next step is to search for a candidate for component aN-1 within the interval IN-1=[sup(ωN-1−,bN-1−),inf(ωN-1+,bN-1+)] for which the bounds were calculated from aN. If there is no value aN-1 within this interval, then we return to level N to select another candidate for component aN. The process continues from step to step until level 1 is reached. Once a vector â has been found for which the components satisfy all conditions (24), the radius of the sphere is updated and the search process is iterated by scanning all intervals Ii, until the vector â closest to yexp is found. The symbol {circumflex over (v)}MAP* is given by {circumflex over (v)}MAP*=Mâ.
In the case shown, it has been assumed that N=4, K=2 and a maximum transmission power Pmax=1.
210 relates to the curve corresponding to the classical maximum likelihood (ML) decoding method and 220 relates to the curve corresponding to the MAP augmented lattice decoding method according to this invention. This figure confirms that the augmented lattice decoding method enables to achieve a lower symbol error rate for a given signal to noise ratio or to achieve a better signal to noise ratio for a given target symbol error rate. It should have been noted that the gain is higher when the dimension N of the lattice is high.
Those skilled in the art will understand that other search algorithms for the closest neighbour within a lattice and particularly Schnorr-Euchner's decoding could be used instead of the sphere decoder method, without going outside the scope of this invention.
We will disclose the MAP augmented lattice decoding method below, in a general framework.
The decoding method aims at decoding a signal received through a noisy channel, said signal being composed of information symbols belonging to a predetermined alphabet. The probability distribution of information symbols within this alphabet is non-uniform, in other words some information symbols are more frequent than others. Noise affecting the channel is assumed to be white and Gaussian.
It is assumed that symbols in the alphabet can be represented by points in a lattice Λ with dimension N defined by the relation {x|x=Ma, aϵZN} in which M is a lattice generator matrix. This condition is satisfied particularly when symbols belong to a QAM type modulation constellation. The alphabet is a finite sub-part of Λ, defined as being the intersection between said lattice and a convex Ω of N. However in the case of a QAM alphabet, it should be noted that the origin of the lattice is excluded. The different points in the lattice are weighted by different probability distributions due to the non-uniformity of the probability distribution of symbols in the alphabet.
According to the invention, the probability distribution of symbols in the alphabet is modeled by a Gaussian distribution with variance σV2.
The signal to be decoded is expressed in the form y=x+z, where x is a point in Λ∩Ω and z is a noise vector with dimension N of which the components are random variables with variance σ2.
In step 310, a vector y is formed, representative of the received signal in a space with dimension N where N is the dimension of the lattice Λ. This vector may for example be obtained by demodulation of the received signal.
In step 320, the augmented vector
is constructed.
In step 330, an augmented lattice Λexp with generator matrix
is formed, in which M is the generator matrix of the lattice Λ and
is the ratio between the variance of the noise and the variance of the Gaussian probability distribution modelling the non-uniform probability distribution of symbols in the alphabet.
In step 340, a search is made for the closest neighbour to the augmented vector yexp in the augmented lattice Λexp, in other words the vector â of Ωa minimising the distance ∥yexpMexpa∥2, where Ωa is a part of ZN reflecting a maximum energy constraint of the received signal.
In step 350, the received symbol in the sense of the MAP criterion is estimated by {circumflex over (v)}MAP*=Mâ.
It will be understood that the search for the closest neighbour in the lattice can be made using a sphere decoder or a stack decoder with spherical bound, as mentioned above. The different known sphere decoding variants are applicable in this case, particularly those implementing enumeration of points making use of Pohst's algorithm.
Those skilled in the art will understand that decoding of sum symbols for a channel of a cooperative network is a special case of decoding in
Finally as mentioned above, other closest neighbour search algorithms in a lattice, and particularly Schnorr-Euchner's decoding, could be used without going outside the scope of this invention.
Number | Date | Country | Kind |
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13 59497 | Oct 2013 | FR | national |
Filing Document | Filing Date | Country | Kind |
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PCT/EP2014/070763 | 9/29/2014 | WO | 00 |
Publishing Document | Publishing Date | Country | Kind |
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WO2015/049194 | 4/9/2015 | WO | A |
Number | Name | Date | Kind |
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4959842 | Forney, Jr. | Sep 1990 | A |
6023783 | Divsalar | Feb 2000 | A |
20090238426 | Fear | Sep 2009 | A1 |
Entry |
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Number | Date | Country | |
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20160226527 A1 | Aug 2016 | US |