Biologically motivated trainable selective attention model using adaptive resonance theory network

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In this paper, we propose a trainable selective attention model that can inhibit an unwanted salient area and only focus on an interesting area in a static natural scene. The proposed model was implemented by the bottom-up saliency map model in conjunction with the adaptive resonance theory (ART) network. The bottom-up saliency map model generates a salient area based on intensity, edge, color and symmetry feature maps, and human supervisor decides whether the selected salient area is important. If the selected area is not interesting, the ART network trains and memorizes that area, and also generates an inhibit signal so that the bottom-up saliency map model does not have attention to an area with similar characteristic in subsequent visual search process. Computer simulation results show that the proposed model successfully generates the plausible sequence of salient region that does not give an attention to an unwanted area.
Publisher
SPRINGER-VERLAG BERLIN
Issue Date
2004
Language
English
Article Type
Article; Proceedings Paper
Keywords

VISUAL-ATTENTION

Citation

BIOLOGICALLY INSPIRED APPROACHES TO ADVANCED INFORMATION TECHNOLOGY BOOK SERIES: LECTURE NOTES IN COMPUTER SCIENCE, v.3141, pp.456 - 471

ISSN
0302-9743
URI
http://hdl.handle.net/10203/83168
Appears in Collection
CS-Journal Papers(저널논문)
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