MULTISCALE REPRESENTATIONS OF MARKOV RANDOM-FIELDS

被引:108
作者
LUETTGEN, MR
KARL, WC
WILLSKY, AS
TENNEY, RR
机构
[1] MIT,INFORMAT & DECIS SYST LAB,CAMBRIDGE,MA 02139
[2] MIT,DEPT ELECT ENGN & COMP SCI,CAMBRIDGE,MA 02139
关键词
D O I
10.1109/78.258081
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Recently, a framework for multiscale stochastic modeling was introduced based on coarse-to-fine scale-recursive dynamics defined on trees. This model class has some attractive characteristics which lead to extremely efficient, statistically optimal signal and image processing algorithms. In this paper, we show that this model class is also quite rich. In particular, we describe how 1-D Markov processes and 2-D Markov random fields (MRF's) can be represented within this framework. The recursive structure of 1-D Markov processes makes them simple to analyze, and generally leads to computationally efficient algorithms for statistical inference. On the other hand, 2-D MRF's are well known to be very difficult to analyze due to their noncausal structure, and thus their use typically leads to computationally intensive algorithms for smoothing and parameter identification. In contrast, our multiscale representations are based on scale-recursive models and thus lead naturally to scale-recursive algorithms, which can be substantially more efficient computationally than those associated with MRF models. In 1-D, the multiscale representation is a generalization of the midpoint deflection construction of Brownian motion. The representation of 2-D MRF's is based on a further generalization to a ''midline'' deflection construction. The exact representations of 2-D MRF's are used to motivate a class of multiscale approximate MRF models based on one-dimensional wavelet transforms. We demonstrate the use of these latter models in the context of texture representation and, in particular, we show how they can be used as approximations for or alternatives to well-known MRF texture models.
引用
收藏
页码:3377 / 3396
页数:20
相关论文
共 46 条
  • [1] Abend K., Harley T., Kanal L., Classification of binary random patterns, IEEE Trans. Informat. Theory, IT-11, pp. 538-544, (1965)
  • [2] Basseville M., Benveniste A., Chou K., Golden S., Nikoukhah R., Et al., Modeling and estimation of multiresolution stochastic processes, IEEE Trans. Informat. Theory, 38, pp. 766-784, (1992)
  • [3] Baxter R., Exactly Solved Models in Statistical Mechanics, (1982)
  • [4] Besag J., Spatial interaction and the statistical analysis of lattice systems, J. Royal Statistical Society B, 36, pp. 192-225, (1974)
  • [5] Besag J., On the statistical analysis of dirty pictures, J. Royal Statistical Society B, 48, pp. 259-302, (1986)
  • [6] Beylkin G., Coifman R., Rokhlin V., Fast wavelet transforms and numerical algorithms I, Comm. Pure Appl. Math., 44, pp. 141-183, (1991)
  • [7] Bharucha-Reid A.T., Elements of the Theory of Markov Processes and Their Applications, (1960)
  • [8] Bouman C., Shapiro M., Multispectral image segmentation using a multiscale model, Proc. IEEE Int. Conf. Acoust., Speech, Signal Processing, pp. 565-568, (1992)
  • [9] Bouman C., Shapiro M., A multiscale random field model for Bayesian image segmentation, IEEE Trans. Image Processing, (1993)
  • [10] Chellappa R., Chatterjee S., Classification of textures using Gaussian Markov random fields, IEEE Trans. Acoust., Speech, Signal Processing, ASSP-33, pp. 959-963, (1985)