基于感知特征划分与分组的运动流分析

Q. Gao, Y. Zhang, A. Parslow
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引用次数: 2

摘要

提出了一种基于运动流分析方法的感知组织。基于视觉特征划分和分组的感知原理建立了计算模型。在该方法中,使用边缘跟踪和动态划分,提取感知边缘特征并将其分类为通用边缘令牌(get)。get是直线和曲线段在感知上的显著特征。get的各种结构和模式可以根据感知组织规律进行分组。get是描述性的,因此可以进行定性操作。对于每个连续的图像对,运动GET (MGETs)是通过直接从第二幅图像的相同位置减去第一幅图像中提取的GET来分割的,不需要显式的GET对匹配。然后根据所选规则和对象的领域知识将mget分组到集群中。使用运动持久性(超过多帧)的测量来评估运动簇,以消除不稳定的数据,即噪声。两个结果演示包括道路标志跟踪和车辆跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Motion stream analysis based on perceptual feature partitioning and grouping
We present a perceptual organization based on method for motion stream analysis. The computation model was developed based upon a perception principle: visual feature partitioning and grouping. In the method, perceptual edge features are extracted and classified into generic edge tokens (GETs) using edge tracking and partitioning on the fly. GETs are perceptually distinctive features of lines and curve segments. Various structures and patterns of GETs can be grouped in terms of the rules of perceptual organization laws. GETs are descriptive and therefore can be manipulated qualitatively. For each consecutive image pair, motion GETs (MGETs) are segmented by directly subtracting the GETs extracted in the first image from the same locations in the second image, in that no explicit GET pair matching is needed. The MGETs are then grouped into clusters based on selected rules and domain knowledge of the objects. The motion clusters are evaluated using the measure of motion persistence (over multi-frames) for eliminating unstable data, i.e. noises. Two result demonstrations include road mark following and vehicle tracking.
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