Title :
Lossless Reduced Cutset Coding of Markov Random Fields
Author :
Reyes, Matthew G. ; Neuhoff, David L.
Author_Institution :
EECS Dept., Univ. of Michigan, Ann Arbor, MI, USA
Abstract :
This paper presents Reduced Cutset Coding, a new Arithmetic Coding (AC) based approach to lossless compression of Markov random fields. In recent work, the authors presented an efficient AC based approach to encoding acyclic MRFs and described a Local Conditioning (LC) based approach to encoding cyclic MRFs. In the present work, we introduce an algorithm for AC encoding of a cyclic MRF for which the complexity of the LC method of, or the acyclic MRF algorithm of combined with the Junction Tree (JT) algorithm, is too large. For encoding an MRF based on a cyclic graph G = (V,E), a cutset U ¿ V is selected such that the subgraph GU induced by U, and each of the components of GU, are tractable to either LC or JT. Then, the cutset variables XU are AC encoded with coding distributions based on a reduced MRF defined on GU, and the remaining components XVU of XV are optimally AC encoded conditioned on XU . The increase in rate over optimal encoding of XV is the normalized divergence between the marginal distribution of XU and the reduced MRF on GU used for the AC encoding. We show this follows a Pythagorean decomposition and, additionally, that the optimal exponential parameter for the reduced MRF on GU is the one that preserves the moments from the marginal distribution. We also show that the rate of encoding XU with this moment-matching exponential parameter is equal to the entropy of the reduced MRF with this moment-matching parameter. We illustrate the concepts of our approach by encoding a typical image from an Ising model with a cutset consisting of evenly spaced rows. The performance on this image is similar to that of JBIG.
Keywords :
Markov processes; arithmetic codes; data compression; graph theory; image coding; statistical distributions; Markov random fields; Pythagorean decomposition; acyclic MRF encoding algorithm; arithmetic coding based approach; cyclic graph; entropy; image encoding; junction tree algorithm; local conditioning based approach; lossless compression; lossless reduced cutset coding; marginal distribution; moment-matching exponential parameter; probability distributions; Arithmetic; Data compression; Distributed computing; Encoding; Entropy; Image coding; Markov random fields; Probability distribution; Random variables; Tree graphs; Markov random fields; cutsets; information geometry; source coding;
Conference_Titel :
Data Compression Conference (DCC), 2010
Conference_Location :
Snowbird, UT
Print_ISBN :
978-1-4244-6425-8
Electronic_ISBN :
1068-0314
DOI :
10.1109/DCC.2010.41