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作为贝叶斯推理的物体感知

Object perception as Bayesian inference.

作者信息

Kersten Daniel, Mamassian Pascal, Yuille Alan

机构信息

Department of Psychology, University of Minnesota, Minneapolis, Minnesota 55455, USA.

出版信息

Annu Rev Psychol. 2004;55:271-304. doi: 10.1146/annurev.psych.55.090902.142005.

Abstract

We perceive the shapes and material properties of objects quickly and reliably despite the complexity and objective ambiguities of natural images. Typical images are highly complex because they consist of many objects embedded in background clutter. Moreover, the image features of an object are extremely variable and ambiguous owing to the effects of projection, occlusion, background clutter, and illumination. The very success of everyday vision implies neural mechanisms, yet to be understood, that discount irrelevant information and organize ambiguous or noisy local image features into objects and surfaces. Recent work in Bayesian theories of visual perception has shown how complexity may be managed and ambiguity resolved through the task-dependent, probabilistic integration of prior object knowledge with image features.

摘要

尽管自然图像具有复杂性和客观模糊性,但我们仍能快速且可靠地感知物体的形状和材质属性。典型图像高度复杂,因为它们由嵌入背景杂波中的许多物体组成。此外,由于投影、遮挡、背景杂波和光照的影响,物体的图像特征极具变化性且模糊不清。日常视觉的成功意味着存在尚未被理解的神经机制,这些机制能够忽略无关信息,并将模糊或有噪声的局部图像特征组织成物体和表面。视觉感知的贝叶斯理论的最新研究表明,如何通过将先前物体知识与图像特征进行任务相关的概率整合来管理复杂性并解决模糊性。

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