寻找形状轮廓的显著点进行目标识别

Yiren Shen, Jianyu Yang, Youfu Li
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引用次数: 1

摘要

基于形状匹配的物体识别一直是机器人视觉研究的一个基本课题。可以直观地看出,在剔除冗余点的同时,找出形状的显著特征点可以提高识别性能。本文提出了一种自适应轮廓进化(ACE)算法来捕获形状轮廓的显著特征点。从原始形状中去除冗余的轮廓点,使形状轮廓紧凑且具有代表性。该方法的进化程度可以根据不同的应用进行自适应控制。在这项工作中,采用形状上下文(SC)描述符来表示形状。该方法可用于处理任何现有形状描述符的形状轮廓。提出了一种基于ACE和SC的形状识别框架,采用动态规划(DP)算法进行形状匹配。利用进化的形状轮廓不仅降低了形状匹配的计算成本,而且提高了对局部噪声的鲁棒性。实验结果验证了该方法的有效性。在基准数据集上的对比结果表明,该方法在很大程度上提高了形状识别的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding salient points of shape contour for object recognition
Object recognition via shape matching has been a fundamental topic in robot vision. It is intuitive that the performance of recognition will be improved if the salient feature points of shapes are found while the redundant points are filtered out. In this paper, we propose an adaptive contour evolution (ACE) algorithm to capture the salient feature points of shape contour. The redundant contour points are removed from the original shape, which makes the shape contour compact and representative. The degree of evolution in our method can be controlled adaptively for various applications. In this work, the shape context (SC) descriptor is adopted to represent shapes. The proposed method can be used to process shape contours for any existing shape descriptors. A framework of shape recognition based on ACE and SC is proposed, where the dynamic programming (DP) algorithm is employed for shape matching. The using of the evolved shape contour not only reduce the computing cost of shape matching, but also increase the robustness to local noise. The conducted experiments validate the capability of the proposed method. The comparable results on benchmark datasets indicate that the shape recognition accuracy is essentially improved.
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