视觉感知群提取的标记点过程模型

A. Mbarki, M. Naouai
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引用次数: 0

摘要

感知组织是将场景的每个部分分配给指定的特征关联以成为同一组织的一部分的过程。在20世纪,格式塔心理学家通过给出一套组织原则,正式确定了图像特征是如何被归类的。在本文中,我们提出了一种检测图像中感知群的方法。我们主要对按格式塔接近定律分组的特征感兴趣。我们设想一个基于对象的模型在一个随机框架内使用标记点过程(MPP)。我们使用贝叶斯学习方法来提取场景中的感知组。该模型在合成图像上进行了测试,证明了在噪声图像中感知群的有效检测。
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A Marked Point Process Model For Visual Perceptual Groups Extraction
Perceptual organization is the process of assigning each part of a scene to a specified association of features to be a part of the same organization. In the twenty century, Gestalt psychologists formalized how image features tend to be grouped by giving a set of organizing principles. In this paper, we propose an approach for the detection of perceptual groups in an image. We are mainly interested in features grouped by the proximity law of Gestalt. We conceive an object-based model within a stochastic framework using a marked point process (MPP). We use a Bayesian learning method to extract perceptual groups in a scene. The proposed model tested on synthetic images proves the efficient detection of perceptual groups in noisy images.
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