Saliency Sequential Surface Organization for Free-Form Object Recognition

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We introduce an efficient, robust means of obtaining reliable surface descriptions, suitable for object recognition, at multiple scales from range data. Mean and Gaussian curvatures are used to segment the surface into regions of four saliency classes, each based on curvature consistency. We evaluate curvature consistency in a robust multivoting scheme. Contiguous regions consistent in both mean and Gaussian curvature are identified as the most homogeneous, and therefore (probably) the most salient, followed by those consistent in mean curvature only, 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. To demonstrate an application of the work, we present an effective recognition system for free form objects based on attributed graphs constructed from the surface segmentation.

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论文评审过程:Received 14 September 2001, Accepted 30 July 2002, Available online 16 December 2002.

论文官网地址:https://doi.org/10.1006/cviu.2002.0973