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Saliency, attention and visual search: An information theoretic approach.

机译:显着性,注意力和视觉搜索:一种信息理论方法。

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This dissertation explores the concept of visual saliency as it pertains to attentional selection, visual search, and machine vision. A novel framework for visual saliency is put forth derived from consideration of the problem in the context of information theory. The proposed definition is distinguished from previous efforts on this front and is demonstrated to be a natural principled definition for salient visual content. Specifically, the proposal deemed Attention by Information Maximization (AIM) seeks to select visual content that is most informative in a formal sense in the context of a specific scene, and is put forth in a form that is amenable to considering more general definitions of context. Efficacy in predicting human gaze patterns is demonstrated and the proposal is revealed to outperform existing models in the prediction of fixation points. With regard to biological plausibility, an important consideration is the extent to which the model behavior agrees with the psychophysics and neurophysiology literature. To this end it is revealed that AIM is able to account for an unprecedented range of classic psychophysics results including some subtle and counterintuitive results and may be achieved via a neural implementation that is consistent with observations concerning surround modulation in the cortex. More general modeling considerations are also addressed including compatibility with descriptions of how attention as a whole is achieved and constraints on possible architectures for achieving attentional selection in light of recent psychophysics and neural imaging results. The applicability of this definition within a machine vision context is also discussed revealing some interesting properties as emergent from the basic framework.
机译:本文探讨了视觉显着性的概念,它与注意力选择,视觉搜索和机器视觉有关。提出了一种新颖的视觉显着性框架,该框架是在信息论的背景下从对问题的考虑中得出的。所提出的定义不同于先前在这方面的努力,并被证明是针对显着视觉内容的自然原则定义。具体而言,被认为是“信息最大化注意”(AIM)的提案旨在选择在特定场景的上下文中形式上最有意义的视觉内容,并以适合考虑上下文的​​更一般定义的形式提出。证明了在预测人的注视模式方面的功效,并揭示了该建议在注视点的预测方面优于现有模型。关于生物学上的合理性,一个重要的考虑因素是模型行为在多大程度上与心理物理学和神经生理学文献相符。为此,揭示了AIM能够解释前所未有的经典心理物理学结果范围,包括一些微妙的和违反直觉的结果,并且可以通过与与皮质周围环绕调制有关的观察相一致的神经实现来实现。还讨论了更一般的建模注意事项,包括与如何实现整体注意力的描述的兼容性以及根据最近的心理物理学和神经成像结果对用于实现注意力选择的可能体系结构的限制。还讨论了该定义在机器视觉上下文中的适用性,揭示了一些有趣的属性(从基本框架中出现)。

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