Literature DB >> 27275381

Saliency computation via whitened frequency band selection.

Qi Lv1, Bin Wang1, Liming Zhang1.   

Abstract

Many saliency computational models have been proposed to simulate bottom-up visual attention mechanism of human visual system. However, most of them only deal with certain kinds of images or aim at specific applications. In fact, human beings have the ability to correctly select attentive focuses of objects with arbitrary sizes within any scenes. This paper proposes a new bottom-up computational model from the perspective of frequency domain based on the biological discovery of non-Classical Receptive Field (nCRF) in the retina. A saliency map can be obtained according to the idea of Extended Classical Receptive Field. The model is composed of three major steps: firstly decompose the input image into several feature maps representing different frequency bands that cover the whole frequency domain by utilizing Gabor wavelet. Secondly, whiten the feature maps to highlight the embedded saliency information. Thirdly, select some optimal maps, simulating the response of receptive field especially nCRF, to generate the saliency map. Experimental results show that the proposed algorithm is able to work with stable effect and outstanding performance in a variety of situations as human beings do and is adaptive to both psychological patterns and natural images. Beyond that, biological plausibility of nCRF and Gabor wavelet transform make this approach reliable.

Entities:  

Keywords:  2D entropy; Extended Classical Receptive Field (ECRF); Gabor wavelet; Non-Classical Receptive Field (nCRF); Visual attention; Whitening

Year:  2016        PMID: 27275381      PMCID: PMC4870405          DOI: 10.1007/s11571-015-9372-y

Source DB:  PubMed          Journal:  Cogn Neurodyn        ISSN: 1871-4080            Impact factor:   5.082


  15 in total

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9.  SUN: A Bayesian framework for saliency using natural statistics.

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10.  A neural network model of attention-modulated neurodynamics.

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