Efficient object recognition method based on hierarchical representation

Chao Gu, Weiguo Huang, J. Tao, L. Shang, Zhongkui Zhu
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引用次数: 1

Abstract

It is a very challenging problem to make robot vision autonomously identify and recognize objects in the real world, and the recent research in this field has been moving forward mostly through designing smart shape descriptors for providing better similarity measure. In this paper, we propose a novel shape descriptor called hierarchical representation to describe the object shape efficiently and perfectly. Firstly, the contour can be divided into several segments according to corners and the distribution of local curvature. Secondly, we evaluate the importance of each contour segment by hierarchical description, and then the multi-level contour segment set combined algorithm is carried out to combine the useless and redundant contour segments. Finally, a set of contour feature segments, completely representing local features of objects, are obtained. The experimental results of MPEG-7 database indicate that this algorithm has great advantage over recently published algorithms, especially for the objects with partial occlusion.
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基于层次表示的高效目标识别方法
如何使机器人视觉对现实世界中的物体进行自主识别是一个非常具有挑战性的问题,目前该领域的研究主要是通过设计智能形状描述符来提供更好的相似度量。为了高效、完美地描述物体形状,提出了一种新的形状描述符——层次表示。首先,根据边角和局部曲率的分布将轮廓分割成若干段;其次,通过分层描述对各个轮廓段的重要性进行评价,然后采用多级轮廓段集组合算法对无用和冗余的轮廓段进行组合;最后,得到一组完全代表物体局部特征的轮廓特征段。MPEG-7数据库的实验结果表明,该算法比现有算法有很大的优势,特别是对于部分遮挡的目标。
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