Title :
Probabilistic spatial context models for scene content understanding
Author :
Singhal, Amit ; Jiebo Luo ; Zhu, Weiyu
Author_Institution :
Electron. Imaging Products, R&D, Eastman Kodak Co., Rochester, NY, USA
Abstract :
Scene content understanding facilitates a large number of applications, ranging from content-based image retrieval to other multimedia applications. Material detection refers to the problem of identifying key semantic material types (such as sky, grass, foliage, water, and snow in images). In this paper, we present a holistic approach to determining scene content, based on a set of individual material detection algorithms, as well as probabilistic spatial context models. A major limitation of individual material detectors is the significant number of misclassifications that occur because of the similarities in color and texture characteristics of various material types. We have developed a spatial context-aware material detection system that reduces misclassification by constraining the beliefs to conform to the probabilistic spatial context models. Experimental results show that the accuracy of materials detection is improved by 13% using the spatial context models over the individual material detectors themselves.
Keywords :
Bayes methods; image classification; object detection; belief constraint; content-based image retrieval; foliage; grass; individual material detection algorithm; key semantic material type identification; material color; material texture; misclassification reduction; multimedia; probabilistic spatial context modeling; scene content determination; scene content understanding; sky; snow; spatial context-aware material detection system; water; Content based retrieval; Context modeling; Detectors; Humans; Image databases; Image recognition; Image retrieval; Layout; Object detection; Snow;
Conference_Titel :
Computer Vision and Pattern Recognition, 2003. Proceedings. 2003 IEEE Computer Society Conference on
Print_ISBN :
0-7695-1900-8
DOI :
10.1109/CVPR.2003.1211359