Multiscale Surface Organization and Description for Free Form bject Recognition

K. Boyer, Ravi Srikantiah, P. Flynn
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引用次数: 1

Abstract

We introduce an efficient, robust means to obtain reliable surface descriptions, suitable for free form object recognition, at multiple scales from range data. Mean and Gaussian curvatures are used to segment the surface into four saliency classes based on curvature consistency as evaluated in a robust multivoting scheme. Contiguous regions consistent in both mean and Gaussian curvature are identified as the most homogeneous segments, followed by those consistent in mean curvature but not Gaussian curvature, followed by those consistent in Gaussian curvature only. Segments at each level of the hierarchy are extracted in the order of size, large to small, such that the most salient features of the surface are recovered first. This has potential for efficient object recognition by stopping once a just sufficient description is extracted.
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自由形状物体识别的多尺度表面组织与描述
我们引入了一种高效、鲁棒的方法,从距离数据中获得可靠的表面描述,适用于多尺度的自由形式物体识别。根据鲁棒多投票方案评估的曲率一致性,使用平均曲率和高斯曲率将表面划分为四个显著性类。连续的平均曲率和高斯曲率一致的区域被认为是最均匀的区段,其次是平均曲率一致但不一致的区段,最后是仅高斯曲率一致的区段。每个层次上的片段按照大小从大到小的顺序提取,以便首先恢复表面最显著的特征。这有可能通过在提取到足够的描述后停止进行有效的对象识别。
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3.70
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