基于改进Hausdorff距离的多模态图像相似度度量

Yong Li, R. Stevenson
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引用次数: 1

摘要

本文提出了一种利用曲线作为比较基元的多模态图像相似性度量方法。首先从图像中检测曲线,然后沿曲线检测连接点,并利用连接点将曲线划分为子曲线。修正的Hausdorff距离用于确定测试子曲线是否与参考曲线匹配。相似度度量定义为匹配曲线的数量。在匹配曲线的基础上定义两幅图像之间重叠边缘像素的数量,不需要精确定位边缘像素。划分方案避免了处理曲线的部分匹配,并允许测试子曲线与参考曲线匹配,如果它们彼此对应的话。实验结果表明,所提出的相似度度量方法具有较强的鲁棒性和可靠性,特别是在噪声条件下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Similarity Metric for Multimodal Images Based on Modified Hausdorff Distance
This paper presents a similarity metric on multimodal images utilizing curves as comparing primitives. Curves are detected from images, and then junctions are detected along curves and used to partition curves into subcurves. A modified Hausdorff distance is applied to determine whether a test subcurve is matched to a reference curve. The similarity metric is defined to be the number of matched curves. The number of overlapped edge pixels between two images is also defined on the basis of matched curves, which does not require accurately localizing edge pixels. The partitioning scheme avoids addresing curve partial matching and allows for test subcurves being matched to a reference curve if they correspond to each other. Experimental results show that the presented similarity metric gives more robust and reliable results, especially under noise.
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