A stochastic graph-based technique for grouping of inhomogeneous image primitives

Vittorio Murino
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引用次数: 1

Abstract

Two main motivations are at the basis of the current interest of computer vision researchers in grouping methods: psychophysical evidence about the presence of pre-attentive mechanisms in human vision and expected reduction in computational complexity of recognition tasks. In this paper, a new probabilistic approach to grouping is proposed which is based on the representation of descriptive primitives (DPs) of different kind as sets of random variables associated with nodes of a relational graph. Grouping is modelled as the operation of assigning integer values to one among the variable of a graph node, i.e. as a labeling process. The set of random variables is described as a Markov random field with a multiple neighbourhood system. Each neighbourhood system is based on a different geometrical relation between nodes. The energy function of the field can be considered as a computational expression for some Gestalt laws which have been suggested by several psychologists as basic perceptual criteria. Two different shape descriptive primitives (i.e., circular arcs and straight segments) are here used to show the feasibility of the approach for a specific application which consists in the crowding evaluation and characterization of a surveilled environment.<>
基于随机图的非均匀图像基元分组技术
计算机视觉研究人员目前对分组方法感兴趣的两个主要动机是:关于人类视觉中存在前注意机制的心理物理证据和期望降低识别任务的计算复杂性。本文提出了一种新的概率分组方法,该方法将不同类型的描述原语表示为与关系图的节点相关联的随机变量集。分组建模为在图节点的变量中为一个赋整数值的操作,即标记过程。将随机变量集描述为具有多邻域系统的马尔可夫随机场。每个邻域系统都基于节点之间不同的几何关系。场的能量函数可以被认为是一些格式塔法则的计算表达式,这些法则被一些心理学家建议作为基本的感知标准。这里使用了两种不同的形状描述基元(即圆弧和直段)来显示该方法在特定应用中的可行性,该应用包括对监视环境的拥挤评估和表征
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