Shape Matching and Recognition using Hybrid Features from Skeleton and Boundary

Rama Mohan Babu Gatram, B. Babu, A. Srikrishna, N. V. Rao
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Abstract

This paper presents a novel approach for effective matching of similar shapes from skeleton and boundary features. The features identified from the shape are the junction points, end points, and maximum length from single pixel pruned skeleton of the shape. Another two features identified from the boundary are junctions and boundary length of the shape. These five features are then used for shape matching. We tested these features on Kimia shapes dataset and tools dataset. The matching process from these features has produced good results, showing the probable of the developed method in a variety of computer vision and pattern recognition domains. The results demonstrate these features are rotational and transform invariant.
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基于骨架和边界混合特征的形状匹配与识别
本文提出了一种从骨架和边界特征中有效匹配相似形状的新方法。从形状中识别的特征是形状的连接点、端点和单像素修剪骨架的最大长度。从边界确定的另外两个特征是形状的连接处和边界长度。然后将这五个特征用于形状匹配。我们在Kimia形状数据集和工具数据集上测试了这些功能。这些特征的匹配过程产生了良好的效果,显示了所开发的方法在各种计算机视觉和模式识别领域的可能性。结果表明,这些特征是旋转不变性和变换不变性的。
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