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Combining Multiple Similarity Metrics for Corner Matching

机译:结合多个相似度指标进行角点匹配

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摘要

Corner matching is an important operation in digital image processing and computer vision where it is used for a range of applications including stereo vision and image registration. A number of corner similarity metrics have been developed to facilitate matching, however, any individual metric has a limited effectiveness depending on the content of images to be registered and the different types of distortions that may be present. This paper explores combining corner similarity metrics to produce more effective measures for corner matching. In particular the combination of two similarity metrics is investigated using experiments on a number of images exhibiting different types of transformations and distortions. The results suggest that a linear combination of different similarity metrics may produce more accurate and robust assessments of corner similarity.
机译:角点匹配是数字图像处理和计算机视觉中的一项重要操作,可用于各种应用,包括立体视觉和图像配准。已经开发了许多拐角相似性度量来促进匹配,但是,任何单独的度量都具有有限的有效性,这取决于要配准的图像的内容和可能存在的不同类型的失真。本文探索结合角点相似性度量标准以产生更有效的角点匹配度量。尤其是,通过对显示不同类型的转换和失真的大量图像进行实验,研究了两个相似性度量的组合。结果表明,不同相似度度量的线性组合可能会产生更准确,更可靠的角相似度评估。

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