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Emergence of Visual Saliency from Natural Scenes via Context-Mediated Probability Distributions Coding

机译:通过上下文中介的概率分布编码从自然场景中显现视觉显着性

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摘要

Visual saliency is the perceptual quality that makes some items in visual scenes stand out from their immediate contexts. Visual saliency plays important roles in natural vision in that saliency can direct eye movements, deploy attention, and facilitate tasks like object detection and scene understanding. A central unsolved issue is: What features should be encoded in the early visual cortex for detecting salient features in natural scenes? To explore this important issue, we propose a hypothesis that visual saliency is based on efficient encoding of the probability distributions (PDs) of visual variables in specific contexts in natural scenes, referred to as context-mediated PDs in natural scenes. In this concept, computational units in the model of the early visual system do not act as feature detectors but rather as estimators of the context-mediated PDs of a full range of visual variables in natural scenes, which directly give rise to a measure of visual saliency of any input stimulus. To test this hypothesis, we developed a model of the context-mediated PDs in natural scenes using a modified algorithm for independent component analysis (ICA) and derived a measure of visual saliency based on these PDs estimated from a set of natural scenes. We demonstrated that visual saliency based on the context-mediated PDs in natural scenes effectively predicts human gaze in free-viewing of both static and dynamic natural scenes. This study suggests that the computation based on the context-mediated PDs of visual variables in natural scenes may underlie the neural mechanism in the early visual cortex for detecting salient features in natural scenes.
机译:视觉显着性是使视觉场景中的某些项目从其直接上下文中脱颖而出的感知质量。视觉显着性在自然视觉中起着重要作用,因为显着性可以指导眼睛运动,部署注意力并促进诸如物体检测和场景理解之类的任务。一个未解决的中心问题是:在早期视觉皮层中应编码哪些特征以检测自然场景中的显着特征?为了探讨这一重要问题,我们提出了一个假设,即视觉显着性是基于自然场景中特定上下文中视觉变量的概率分布(PD)的有效编码,在自然场景中称为上下文介导的PD。在这个概念中,早期视觉系统模型中的计算单元不充当特征检测器,而是充当自然场景中所有视觉变量的上下文介导PD的估计器,这直接引起了视觉的测量任何输入刺激的显着性。为了检验此假设,我们使用改进的独立分量分析(ICA)算法开发了自然场景中由环境介导的PD的模型,并根据从一组自然场景中估计的这些PD得出了视觉显着性的度量。我们证明了在自然场景中基于上下文介导的PD的视觉显着性可以有效地预测人的凝视,从而可以自由观看静态和动态自然场景。这项研究表明,基于自然场景中视觉变量的上下文介导PD的计算可能是早期视觉皮层中用于检测自然场景中显着特征的神经机制的基础。

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