A saliency model based on wavelet transform and visual attention

Science China Information Sciences(2010)

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摘要
This paper presents a novel wavelet transform saliency model to detect salient objects. In this model, a saliency map is generated by combining orientation feature maps obtained from wavelet transform of different scale images derived from the same image. Then, the order map of a saliency map is obtained by using Fourier descriptor, which could be used as a guidance to process the most important objects. Experiments indicate that this saliency model is robust to noise and superior to other saliency models in the literature.
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关键词
bottom-up attentional mechanism,center-surround inhibition phenomenon,Fourier descriptor,top-down attentional mechanism,visual attention,wavelet transform
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