Title :
Distribution Matching with the Bhattacharyya Similarity: A Bound Optimization Framework
Author :
Ben Ayed, Ismail ; Punithakumar, Kumaradevan ; Shuo Li
Author_Institution :
GE Healthcare, London, ON, Canada
Abstract :
We present efficient graph cut algorithms for three problems: (1) finding a region in an image, so that the histogram (or distribution) of an image feature within the region most closely matches a given model; (2) co-segmentation of image pairs and (3) interactive image segmentation with a user-provided bounding box. Each algorithm seeks the optimum of a global cost function based on the Bhattacharyya measure, a convenient alternative to other matching measures such as the Kullback-Leibler divergence. Our functionals are not directly amenable to graph cut optimization as they contain non-linear functions of fractional terms, which make the ensuing optimization problems challenging. We first derive a family of parametric bounds of the Bhattacharyya measure by introducing an auxiliary labeling. Then, we show that these bounds are auxiliary functions of the Bhattacharyya measure, a result which allows us to solve each problem efficiently via graph cuts. We show that the proposed optimization procedures converge within very few graph cut iterations. Comprehensive and various experiments, including quantitative and comparative evaluations over two databases, demonstrate the advantages of the proposed algorithms over related works in regard to optimality, computational load, accuracy and flexibility.
Keywords :
graph theory; image matching; image segmentation; interactive systems; optimisation; Bhattacharyya similarity; auxiliary labeling; bound optimization framework; distribution matching; graph cut algorithms; histogram; image cosegmentation; image feature; image pairs; image region; interactive image segmentation; user-provided bounding box; Active contours; Context; Histograms; Image color analysis; Image segmentation; Motion segmentation; Optimization; Bhattacharyya measure; Graph cuts; auxiliary functions; bound optimization;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2014.2382104