4.8 Article

State-of-the-Art in Visual Attention Modeling

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2012.89

关键词

Visual attention; bottom-up attention; top-down attention; saliency; eye movements; regions of interest; gaze control; scene interpretation; visual search; gist

资金

  1. US Defense Advanced Research Projects Agency [HR0011-10-C-0034]
  2. US National Science Foundation (CRCNS) [BCS-0827764]
  3. General Motors Corporation
  4. US Army Research Office [W911NF-08-1-0360]

向作者/读者索取更多资源

Modeling visual attention-particularly stimulus-driven, saliency-based attention-has been a very active research area over the past 25 years. Many different models of attention are now available which, aside from lending theoretical contributions to other fields, have demonstrated successful applications in computer vision, mobile robotics, and cognitive systems. Here we review, from a computational perspective, the basic concepts of attention implemented in these models. We present a taxonomy of nearly 65 models, which provides a critical comparison of approaches, their capabilities, and shortcomings. In particular, 13 criteria derived from behavioral and computational studies are formulated for qualitative comparison of attention models. Furthermore, we address several challenging issues with models, including biological plausibility of the computations, correlation with eye movement datasets, bottom-up and top-down dissociation, and constructing meaningful performance measures. Finally, we highlight current research trends in attention modeling and provide insights for future.

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