Image Parsing: Unifying Segmentation, Detection, and Recognition (2005)
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BibTeX
@MISC{Tu05imageparsing:,
author = {Zhuowen Tu and Xiangrong Chen and Alan L. Yuille and Song-Chun Zhu},
title = {Image Parsing: Unifying Segmentation, Detection, and Recognition},
year = {2005}
}
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Abstract
In this paper we present a Bayesian framework for parsing images into their constituent visual patterns. The parsing algorithm optimizes the posterior probability and outputs a scene representation in a "parsing graph", in a spirit similar to parsing sentences in speech and natural language. The algorithm constructs the parsing graph and re-configures it dynamically using a set of reversible Markov chain jumps. This computational framework integrates two popular inference approaches -- generative (top-down) methods and discriminative (bottom-up) methods. The former formulates the posterior probability in terms of generative models for images defined by likelihood functions and priors. The latter computes discriminative probabilities based on a sequence (cascade) of bottom-up tests/filters.







