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Partial shape recognition by sub-matrix matching for partial matching guided image labeling

机译:通过子矩阵匹配进行部分形状识别,以进行部分匹配的引导图像标记

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摘要

We propose a new partial shape recognition algorithm by sub-matrix matching using a proximity-based shape representation. Given one or more example object templates and a number of candidate object regions in an image, points with local maximum curvature along contours of each are chosen as feature points to compute distance matrices for each candidate object region and example template(s). A sub-matrix matching algorithm is then proposed to determine correspondences for evaluation of partial similarity between an example template and a candidate object region. The method is translation, rotation, scale and reflection invariant. Applications of the proposed partial matching technique include recognition of partially occluded objects in images as well as significant acceleration of recognition/matching of full (non-occluded) objects for object based image labeling by learning from examples. The speed up in the latter application comes from the fact that we can now search only those combinations of regions in the neighborhood of potential partial matches as soon as they are identified, as opposed to all combinations of regions as was done in our prior work [Xu et al., Object formation and retrieval using a learning-based hierarchical content-description, Proceedings of the ICIP, Kobe, Japan 1999]. Experimental results are provided to demonstrate both applications. (c) 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:我们提出了一种新的局部形状识别算法,该算法通过使用基于邻近度的形状表示进行子矩阵匹配。给定一个或多个示例对象模板和图像中的多个候选对象区域,选择沿着每个轮廓的局部具有最大曲率的点作为特征点,以计算每个候选对象区域和示例模板的距离矩阵。然后提出一种子矩阵匹配算法,以确定用于评估示例模板和候选对象区域之间的部分相似性的对应关系。该方法是平移,旋转,缩放和反射不变的。所提出的部分匹配技术的应用包括图像中部分被遮挡物体的识别以及通过实例学习基于对象的图像标记的完全(非被遮挡)物体的识别/匹配的显着加速。后一种应用程序的加速来自于这样一个事实,即我们现在只能在识别出潜在的部分匹配区域后立即搜索那些区域组合,而不是像我们之前的工作中所做的所有区域组合[ Xu et al。,使用基于学习的分层内容描述进行对象形成和检索,ICIP会议录,日本神户,1999年]。提供实验结果来演示这两种应用。 (c)2005模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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