A maximum-likelihood approach to segmenting range data

R. Rimey, F. Cohen
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引用次数: 41

Abstract

The problem of segmenting a range image into homogeneous regions in each of which the range data correspond to a different surface is considered. The segmentation sought is a maximum-likelihood (ML) segmentation. Only planes, cylinders, and spheres are considered as presented in the image. The basic approach to segmentation is to divide the range image into windows, classify each window as a particular surface primitive, and group like windows into surface regions. Mixed windows are detected by testing the hypothesis that a window is homogeneous. Homogeneous windows are classified according to a generalized likelihood ratio test which is computationally simple and incorporates information from adjacent windows. Grouping windows of the same surface types is cast as a weighted ML clustering problem. Finally, mixed windows are segmented using an ML hierarchical segmentation algorithm. A similar approach is taken for segmenting visible-light images of Lambertian objects illuminated by a point source at infinity. >
距离数据分割的最大似然方法
考虑了将距离图像分割为均匀区域的问题,每个均匀区域中的距离数据对应于不同的表面。所寻求的分割是最大似然(ML)分割。图像中只考虑平面、圆柱体和球体。分割的基本方法是将距离图像划分为窗口,将每个窗口分类为特定的表面基元,并将类似窗口分组为表面区域。混合窗口是通过测试窗口是均匀的假设来检测的。同质窗是根据广义似然比检验进行分类的,该方法计算简单,并结合了相邻窗口的信息。将相同表面类型的分组窗口作为加权ML聚类问题。最后,采用ML分层分割算法对混合窗口进行分割。一个类似的方法被用于分割在无限远处被点源照射的朗伯物体的可见光图像。>
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