返回抑制
感知
计算模型
软件部署
视觉搜索
注意力控制
计算机科学
刺激(心理学)
眼球运动
背景(考古学)
视觉感受
心理学
认知心理学
视觉注意
人工智能
计算机视觉
认知
神经科学
生物
古生物学
操作系统
作者
Laurent Itti,Christof Koch
摘要
Five important trends have emerged from recent work on computational models of focal visual attention that emphasize the bottom-up, image-based control of attentional deployment. First, the perceptual saliency of stimuli critically depends on the surrounding context. Second, a unique 'saliency map' that topographically encodes for stimulus conspicuity over the visual scene has proved to be an efficient and plausible bottom-up control strategy. Third, inhibition of return, the process by which the currently attended location is prevented from being attended again, is a crucial element of attentional deployment. Fourth, attention and eye movements tightly interplay, posing computational challenges with respect to the coordinate system used to control attention. And last, scene understanding and object recognition strongly constrain the selection of attended locations. Insights from these five key areas provide a framework for a computational and neurobiological understanding of visual attention.
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