A computational visual saliency model based on statistics and machine learning
Author(s) -
Run Lin,
WeiZhi Lin
Publication year - 2014
Publication title -
journal of vision
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.126
H-Index - 113
ISSN - 1534-7362
DOI - 10.1167/14.9.1
Subject(s) - salient , computer science , artificial intelligence , feature (linguistics) , similarity (geometry) , intersection (aeronautics) , machine learning , pattern recognition (psychology) , support vector machine , computation , image (mathematics) , algorithm , linguistics , engineering , aerospace engineering , philosophy
Identifying the type of stimuli that attracts human visual attention has been an appealing topic for scientists for many years. In particular, marking the salient regions in images is useful for both psychologists and many computer vision applications. In this paper, we propose a computational approach for producing saliency maps using statistics and machine learning methods. Based on four assumptions, three properties (Feature-Prior, Position-Prior, and Feature-Distribution) can be derived and combined by a simple intersection operation to obtain a saliency map. These properties are implemented by a similarity computation, support vector regression (SVR) technique, statistical analysis of training samples, and information theory using low-level features. This technique is able to learn the preferences of human visual behavior while simultaneously considering feature uniqueness. Experimental results show that our approach performs better in predicting human visual attention regions than 12 other models in two test databases.
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