Similarity-invariant signatures for partially occluded planar shapes

作者:Alfred M. Bruckstein, Nir Katzir, Michael Lindenbaum, Moshe Porat

摘要

A methodology is described for associating local invariant signature functions to smooth planar curves in order to enable their translation, rotation, and scale-invariant recognition from arbitrarily clipped portions. The suggested framework incorporates previous approaches, based on locating inflections, curvature extrema, breakpoints, and other singular points on planar object boundaries, and provides a systematic way of deriving novel invariant signature functions based on curvature or cumulative turn angle of curves. These new signatures allow the specification of arbitrarily dense feature points on smooth curves, whose locations are invariant under similarity transformations. The results are useful for detecting and recognizing partially occluded planar objects, a key task in low-level robot vision.

论文关键词:Image Processing, Artificial Intelligence, Computer Vision, Singular Point, Computer Image

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论文官网地址:https://doi.org/10.1007/BF00126396