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2-D object recognition using invariant contour descriptor and projective refinement

机译:使用不变轮廓描述符和投影细化进行二维物体识别

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摘要

This paper presents an efficient model-based recognition method to recognize 2-D objects and to obtain correspondences between models and scene boundaries with a subpixel positioning error. As a shape signature for a contour, we propose a descriptor consisting of five-point invariants, which are used to index a hash table. Also, we propose a projective requirement as a verification method to compute exact correspondences between models and scene contour points. This method repeatedly computes projective transformation using a weighted pseudo inverse. We present an error model for five-point invariants, which are used to define a similarity between two descriptors, to determine a searching bound in indexing, and to obtain the weights in the projective refinement. In experiments using seriously distorted images of forty models, this method led to the recognition of planar curved objects. A transformation using the correspondence between the model and scene points on contours was also obtained. (C) 1998 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 17]
机译:本文提出了一种有效的基于模型的识别方法,该方法可以识别二维物体,并获得模型和场景边界之间的对应关系,并具有亚像素定位误差。作为轮廓的形状签名,我们提出了一个由五点不变式组成的描述符,用于对哈希表建立索引。另外,我们提出了一个投影要求作为一种验证方法,以计算模型与场景轮廓点之间的精确对应关系。该方法使用加权伪逆反复计算投影变换。我们为五点不变式提供了一个误差模型,该模型用于定义两个描述符之间的相似性,确定索引中的搜索范围,并在投影细化中获得权重。在使用四十个模型的严重失真图像的实验中,此方法导致了平面弯曲物体的识别。还获得了使用模型和轮廓上的场景点之间的对应关系的变换。 (C)1998模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:17]

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