Contour Matching Based on Local Curvature Scale

Zhao Yan, Xu Gui-li, Tian Yu-peng, Gu Rui-peng, Wang Biao, Li Kai-yu
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Abstract

Image matching based on contour is an important issue in computer vision, navigation and pattern recognition. The image matching methods like curvature-based methods and corner-based methods have poor robustness to the contour's noise and distortion, and some matching methods are applied only to closed contours. A novel contour representation and matching algorithm, based on local curvature scale, is proposed in this paper. First, build each point's c-scale segment and calculate the curvature of contour points. Then, the invariant characteristic curve is established based on curvature integral, which is invariant to RST (rotation, scale and translation). Finally, the matching points of contours are captured by measuring the similarity of invariant characteristic curves. Experimental results show that this method can achieve better performance than previous methods. Also it fits for the matching between two closed contours, two open curves and the matching between an open contour and a part of closed contour. The proposed method reduces the impact of noise and scale variation effectively, and it has better robustness to rotation, scale and translation of contour.
基于局部曲率尺度的轮廓匹配
基于轮廓的图像匹配是计算机视觉、导航和模式识别中的一个重要问题。基于曲率的图像匹配方法和基于角点的图像匹配方法对轮廓噪声和畸变的鲁棒性较差,有些匹配方法仅适用于封闭轮廓。提出了一种基于局部曲率尺度的轮廓表示与匹配算法。首先,建立每个点的c尺度线段,计算轮廓点的曲率。然后,基于曲率积分建立不变特征曲线,该特征曲线对RST(旋转、缩放、平移)不变;最后,通过测量不变特征曲线的相似度来获取轮廓的匹配点。实验结果表明,该方法比以往的方法具有更好的性能。适用于两条闭合轮廓之间的匹配、两条开放曲线之间的匹配以及开放轮廓与部分闭合轮廓之间的匹配。该方法有效地降低了噪声和尺度变化的影响,对轮廓的旋转、尺度和平移具有较好的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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