Fusion of visual attention cues by machine learning

ICIP(2011)

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摘要
A new computational scheme for visual attention modeling is proposed. It adopts both low-level and high-level features to predict visual attention from a video signal and fuses the features by using machine learning. We show that such a scheme is more robust than those using purely single level features. Unlike conventional techniques, our scheme is able to avoid perceptual mismatch between the estimated saliency and the actual human fixation. We show that selecting the representative training samples according to the fixation distribution improves the efficacy of regressive training. Experimental results are shown to demonstrate the advantages of the proposed scheme.
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关键词
video signal processing,image fusion,human visual system,high-level features,learning (artificial intelligence),regression analysis,saliency map,visual attention modeling,visual attention,eye tracker,iris recognition,feature extraction,actual human fixation,saliency estimation,regression,visual attention cue fusion,low-level features,machine learning,regressive training,fixation distribution,face,visualization,estimation,testing,learning artificial intelligence
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