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Published June 2013 | public
Journal Article

Learning saliency-based visual attention: A review

Abstract

Humans and other primates shift their gaze to allocate processing resources to a subset of the visual input. Understanding and emulating the way that human observers free-view a natural scene has both scientific and economic impact. It has therefore attracted the attention from researchers in a wide range of science and engineering disciplines. With the ever increasing computational power, machine learning has become a popular tool to mine human data in the exploration of how people direct their gaze when inspecting a visual scene. This paper reviews recent advances in learning saliency-based visual attention and discusses several key issues in this topic.

Additional Information

© 2012 Elsevier B.V. Received 28 January 2012; Received in revised form; 5 June 2012; Accepted 9 June 2012; Available online 27 June 2012.

Additional details

Created:
September 14, 2023
Modified:
October 23, 2023