Discrete Universal Denoiser

In information theory and signal processing, the Discrete Universal Denoiser (DUDE) is a denoising scheme for recovering sequences over a finite alphabet, which have been corrupted by a discrete memoryless channel. The DUDE was proposed in 2005 by Tsachy Weissman, Erik Ordentlich, Gadiel Seroussi, Sergio Verdú and Marcelo J. Weinberger.[1]

Overview edit

The Discrete Universal Denoiser[1] (DUDE) is a denoising scheme that estimates an unknown signal   over a finite alphabet from a noisy version  . While most denoising schemes in the signal processing and statistics literature deal with signals over an infinite alphabet (notably, real-valued signals), the DUDE addresses the finite alphabet case. The noisy version   is assumed to be generated by transmitting   through a known discrete memoryless channel.

For a fixed context length parameter  , the DUDE counts of the occurrences of all the strings of length   appearing in  . The estimated value   is determined based the two-sided length-  context   of  , taking into account all the other tokens in   with the same context, as well as the known channel matrix and the loss function being used.

The idea underlying the DUDE is best illustrated when   is a realization of a random vector  . If the conditional distribution  , namely the distribution of the noiseless symbol   conditional on its noisy context   was available, the optimal estimator   would be the Bayes Response to  . Fortunately, when the channel matrix is known and non-degenerate, this conditional distribution can be expressed in terms of the conditional distribution  , namely the distribution of the noisy symbol   conditional on its noisy context. This conditional distribution, in turn, can be estimated from an individual observed noisy signal   by virtue of the Law of Large Numbers, provided   is “large enough”.

Applying the DUDE scheme with a context length   to a sequence of length   over a finite alphabet   requires   operations and space  .

Under certain assumptions, the DUDE is a universal scheme in the sense of asymptotically performing as well as an optimal denoiser, which has oracle access to the unknown sequence. More specifically, assume that the denoising performance is measured using a given single-character fidelity criterion, and consider the regime where the sequence length   tends to infinity and the context length   tends to infinity “not too fast”. In the stochastic setting, where a doubly infinite sequence noiseless sequence   is a realization of a stationary process  , the DUDE asymptotically performs, in expectation, as well as the best denoiser, which has oracle access to the source distribution  . In the single-sequence, or “semi-stochastic” setting with a fixed doubly infinite sequence  , the DUDE asymptotically performs as well as the best “sliding window” denoiser, namely any denoiser that determines   from the window  , which has oracle access to  .

The discrete denoising problem edit

 
Block diagram description of the discrete denoising problem

Let   be the finite alphabet of a fixed but unknown original “noiseless” sequence  . The sequence is fed into a discrete memoryless channel (DMC). The DMC operates on each symbol   independently, producing a corresponding random symbol   in a finite alphabet  . The DMC is known and given as a  -by-  Markov matrix  , whose entries are  . It is convenient to write   for the  -column of  . The DMC produces a random noisy sequence  . A specific realization of this random vector will be denoted by  . A denoiser is a function   that attempts to recover the noiseless sequence   from a distorted version  . A specific denoised sequence is denoted by  . The problem of choosing the denoiser   is known as signal estimation, filtering or smoothing. To compare candidate denoisers, we choose a single-symbol fidelity criterion   (for example, the Hamming loss) and define the per-symbol loss of the denoiser   at   by

 

Ordering the elements of the alphabet   by  , the fidelity criterion can be given by a  -by-  matrix, with columns of the form

 

The DUDE scheme edit

Step 1: Calculating the empirical distribution in each context edit

The DUDE corrects symbols according to their context. The context length   used is a tuning parameter of the scheme. For  , define the left context of the  -th symbol in   by   and the corresponding right context as  . A two-sided context is a combination   of a left and a right context.

The first step of the DUDE scheme is to calculate the empirical distribution of symbols in each possible two-sided context along the noisy sequence  . Formally, a given two-sided context   that appears once or more along   determines an empirical probability distribution over  , whose value at the symbol   is

 

Thus, the first step of the DUDE scheme with context length   is to scan the input noisy sequence   once, and store the length-  empirical distribution vector   (or its non-normalized version, the count vector) for each two-sided context found along  . Since there are at most   possible two-sided contexts along  , this step requires   operations and storage  .

Step 2: Calculating the Bayes response to each context edit

Denote the column of single-symbol fidelity criterion  , corresponding to the symbol  , by  . We define the Bayes Response to any vector   of length   with non-negative entries as

 

This definition is motivated in the background below.

The second step of the DUDE scheme is to calculate, for each two-sided context   observed in the previous step along  , and for each symbol   observed in each context (namely, any   such that   is a substring of  ) the Bayes response to the vector  , namely

 

Note that the sequence   and the context length   are implicit. Here,   is the  -column of   and for vectors   and  ,   denotes their Schur (entrywise) product, defined by  . Matrix multiplication is evaluated before the Schur product, so that   stands for  .

This formula assumed that the channel matrix   is square ( ) and invertible. When   and   is not invertible, under the reasonable assumption that it has full row rank, we replace   above with its Moore-Penrose pseudo-inverse   and calculate instead

 

By caching the inverse or pseudo-inverse  , and the values   for the relevant pairs  , this step requires   operations and   storage.

Step 3: Estimating each symbol by the Bayes response to its context edit

The third and final step of the DUDE scheme is to scan   again and compute the actual denoised sequence  . The denoised symbol chosen to replace   is the Bayes response to the two-sided context of the symbol, namely

 

This step requires   operations and used the data structure constructed in the previous step.

In summary, the entire DUDE requires   operations and   storage.

Asymptotic optimality properties edit

The DUDE is designed to be universally optimal, namely optimal (is some sense, under some assumptions) regardless of the original sequence  .

Let   denote a sequence of DUDE schemes, as described above, where   uses a context length   that is implicit in the notation. We only require that   and that  .

For a stationary source edit

Denote by   the set of all  -block denoisers, namely all maps  .

Let   be an unknown stationary source and   be the distribution of the corresponding noisy sequence. Then

 

and both limits exist. If, in addition the source   is ergodic, then

 

For an individual sequence edit

Denote by   the set of all  -block  -th order sliding window denoisers, namely all maps   of the form   with   arbitrary.

Let   be an unknown noiseless sequence stationary source and   be the distribution of the corresponding noisy sequence. Then

 

Non-asymptotic performance edit

Let   denote the DUDE on with context length   defined on  -blocks. Then there exist explicit constants   and   that depend on   alone, such that for any   and any   we have

 

where   is the noisy sequence corresponding to   (whose randomness is due to the channel alone) [2] .

In fact holds with the same constants   as above for any  -block denoiser  .[1] The lower bound proof requires that the channel matrix   be square and the pair   satisfies a certain technical condition.

Background edit

To motivate the particular definition of the DUDE using the Bayes response to a particular vector, we now find the optimal denoiser in the non-universal case, where the unknown sequence   is a realization of a random vector  , whose distribution is known.

Consider first the case  . Since the joint distribution of   is known, given the observed noisy symbol  , the unknown symbol   is distributed according to the known distribution  . By ordering the elements of  , we can describe this conditional distribution on   using a probability vector  , indexed by  , whose  -entry is  . Clearly the expected loss for the choice of estimated symbol   is  .

Define the Bayes Envelope of a probability vector  , describing a probability distribution on  , as the minimal expected loss  , and the Bayes Response to   as the prediction that achieves this minimum,  . Observe that the Bayes response is scale invariant in the sense that   for  .

For the case  , then, the optimal denoiser is  . This optimal denoiser can be expressed using the marginal distribution of   alone, as follows. When the channel matrix   is invertible, we have   where   is the  -th column of  . This implies that the optimal denoiser is given equivalently by  . When   and   is not invertible, under the reasonable assumption that it has full row rank, we can replace   with its Moore-Penrose pseudo-inverse and obtain

 

Turning now to arbitrary  , the optimal denoiser   (with minimal expected loss) is therefore given by the Bayes response to  

 

where   is a vector indexed by  , whose  -entry is  . The conditional probability vector   is hard to compute. A derivation analogous to the case   above shows that the optimal denoiser admits an alternative representation, namely  , where   is a given vector and   is the probability vector indexed by   whose  -entry is   Again,   is replaced by a pseudo-inverse if   is not square or not invertible.

When the distribution of   (and therefore, of  ) is not available, the DUDE replaces the unknown vector   with an empirical estimate obtained along the noisy sequence   itself, namely with  . This leads to the above definition of the DUDE.

While the convergence arguments behind the optimality properties above are more subtle, we note that the above, combined with the Birkhoff Ergodic Theorem, is enough to prove that for a stationary ergodic source, the DUDE with context-length   is asymptotically optimal all  -th order sliding window denoisers.

Extensions edit

The basic DUDE as described here assumes a signal with a one-dimensional index set over a finite alphabet, a known memoryless channel and a context length that is fixed in advance. Relaxations of each of these assumptions have been considered in turn.[3] Specifically:

Applications edit

Application to image denoising edit

A DUDE-based framework for grayscale image denoising[6] achieves state-of-the-art denoising for impulse-type noise channels (e.g., "salt and pepper" or "M-ary symmetric" noise), and good performance on the Gaussian channel (comparable to the Non-local means image denoising scheme on this channel). A different DUDE variant applicable to grayscale images is presented in.[7]

Application to channel decoding of uncompressed sources edit

The DUDE has led to universal algorithms for channel decoding of uncompressed sources.[17]

References edit

  1. ^ a b c T. Weissman, E. Ordentlich, G. Seroussi, S. Verdu ́, and M.J. Weinberger. Universal discrete denoising: Known channel. IEEE Transactions on Information Theory,, 51(1):5–28, 2005.
  2. ^ K. Viswanathan and E. Ordentlich. Lower limits of discrete universal denoising. IEEE Transactions on Information Theory, 55(3):1374–1386, 2009.
  3. ^ Ordentlich, E.; Seroussi, G.; Verd´u; Weinberger, M. J.; Weissman, T. "Reflections on the DUDE" (PDF). {{cite journal}}: Cite journal requires |journal= (help)
  4. ^ A. Dembo and T. Weissman. Universal denoising for the finite-input-general-output channel. IEEE Trans. Inf. Theory, 51(4):1507–1517, April 2005.
  5. ^ K. Sivaramakrishnan and T. Weissman. Universal denoising of discrete-time continuous amplitude signals. In Proc. of the 2006 IEEE Intl. Symp. on Inform. Theory, (ISIT’06), Seattle, WA, USA, July 2006.
  6. ^ a b G. Motta, E. Ordentlich, I. Ramírez, G. Seroussi, and M. Weinberger, “The DUDE framework for continuous tone image denoising,” IEEE Transactions on Image Processing, 20, No. 1, January 2011.
  7. ^ a b K. Sivaramakrishnan and T. Weissman. Universal denoising of continuous amplitude signals with applications to images. In Proc. of IEEE International Conference on Image Processing, Atlanta, GA, USA, October 2006, pp. 2609–2612
  8. ^ C. D. Giurcaneanu and B. Yu. Efficient algorithms for discrete universal denoising for channels with memory. In Proc. of the 2005 IEEE Intl. Symp. on Inform. Theory, (ISIT’05), Adelaide, Australia, Sept. 2005.
  9. ^ R. Zhang and T. Weissman. Discrete denoising for channels with memory. Communications in Information and Systems (CIS), 5(2):257–288, 2005.
  10. ^ G. M. Gemelos, S. Sigurjonsson, T. Weissman. Universal minimax discrete denoising under channel uncertainty. IEEE Trans. Inf. Theory, 52:3476–3497, 2006.
  11. ^ G. M. Gemelos, S. Sigurjonsson and T. Weissman. Algorithms for discrete denoising under channel uncertainty. IEEE Trans. Signal Process., 54(6):2263–2276, June 2006.
  12. ^ E. Ordentlich, M.J. Weinberger, and T. Weissman. Multi-directional context sets with applications to universal denoising and compression. In Proc. of the 2005 IEEE Intl. Symp. on Inform. Theory, (ISIT’05), Adelaide, Australia, Sept. 2005.
  13. ^ J. Yu and S. Verd´u. Schemes for bidirectional modeling of discrete stationary sources. IEEE Trans. Inform. Theory, 52(11):4789–4807, 2006.
  14. ^ S. Chen, S. N. Diggavi, S. Dusad and S. Muthukrishnan. Efficient string matching algorithms for combinatorial universal denoising. In Proc. of IEEE Data Compression Conference (DCC), Snowbird, Utah, March 2005.
  15. ^ G. Gimel’farb. Adaptive context for a discrete universal denoiser. In Proc. Structural, Syntactic, and Statistical Pattern Recognition, Joint IAPR International Workshops, SSPR 2004 and SPR 2004, Lisbon, Portugal, August 18–20, pp. 477–485
  16. ^ E. Ordentlich, G. Seroussi, S. Verd´u, M.J. Weinberger, and T. Weissman. A universal discrete image denoiser and its application to binary images. In Proc. IEEE International Conference on Image Processing, Barcelona, Catalonia, Spain, September 2003.
  17. ^ E. Ordentlich, G. Seroussi, S. Verdú, and K. Viswanathan, "Universal Algorithms for Channel Decoding of Uncompressed Sources," IEEE Trans. Information Theory, vol. 54, no. 5, pp. 2243–2262, May 2008