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Interest Points via Maximal Self-Dissimilarities

机译:通过最大自相差得出的兴趣点

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We propose a novel interest point detector stemming from the intuition that image patches which are highly dissimilar over a relatively large extent of their surroundings hold the property of being repeatable and distinctive. This concept of contextual self-dissimilarity reverses the key paradigm of recent successful techniques such as the Local Self-Similarity descriptor and the Non-Local Means filter, which build upon the presence of similar - rather than dissimilar - patches. Moreover, our approach extends to contextual information the local self-dissimilarity notion embedded in established detectors of corner-like interest points, thereby achieving enhanced repeatability, distinctiveness and localization accuracy.
机译:基于直觉,我们提出了一种新颖的兴趣点检测器,即在相对较大的周围环境中高度不相似的图像块具有可重复和独特的性质。上下文自相异的概念逆转了最近成功的技术的关键范例,例如本地自相似性描述符和非本地均值过滤器,它们建立在相似(而不是相异)补丁的基础上。此外,我们的方法将嵌入在已建立的角点状兴趣点检测器中的局部自相似性概念扩展到上下文信息,从而实现增强的可重复性,独特性和定位精度。

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