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Published 2009 | Published
Book Section - Chapter Open

Dynamic visual attention: searching for coding length increments

Abstract

A visual attention system should respond placidly when common stimuli are presented, while at the same time keep alert to anomalous visual inputs. In this paper, a dynamic visual attention model based on the rarity of features is proposed. We introduce the Incremental Coding Length (ICL) to measure the perspective entropy gain of each feature. The objective of our model is to maximize the entropy of the sampled visual features. In order to optimize energy consumption, the limit amount of energy of the system is re-distributed amongst features according to their Incremental Coding Length. By selecting features with large coding length increments, the computational system can achieve attention selectivity in both static and dynamic scenes. We demonstrate that the proposed model achieves superior accuracy in comparison to mainstream approaches in static saliency map generation. Moreover, we also show that our model captures several less-reported dynamic visual search behaviors, such as attentional swing and inhibition of return.

Additional Information

© 2009 Neural Information Processing Systems Foundation. We thank Neil Bruce, John Tsotsos, and Laurent Itti for sharing their experimental data. The first author would like to thank Charles Frogner, Yang Cao, Shengping Zhang and Libo Ma for their insightful discussions on the paper. The reviewers' pertinent comments and suggestions also helped to improve the quality of the paper. The work was supported by the National High-Tech Research Program of China (Grant No. 2006AA01Z125) and the National Basic Research Program of China (Grant No. 2005CB724301)

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Created:
August 20, 2023
Modified:
October 18, 2023