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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Explaining away results in accurate and tolerant template matching
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Explaining away results in accurate and tolerant template matching

机译:解释远离准确和宽容模板匹配的结果

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摘要

Recognising and locating image patches or sets of image features is an important task underlying much work in computer vision. Traditionally this has been accomplished using template matching. However, template matching is notoriously brittle in the face of changes in appearance caused by, for example, variations in viewpoint, partial occlusion, and non-rigid deformations. This article tests a method of template matching that is more tolerant to such changes in appearance and that can, therefore, more accurately identify image patches. In traditional template matching the comparison between a template and the image is independent of the other templates. In contrast, the method advocated here takes into account the evidence provided by the image for the template at each location and the full range of alternative explanations represented by the same template at other locations and by other templates. Specifically, the proposed method of template matching is performed using a form of probabilistic inference known as "explaining away". The algorithm used to implement explaining away has previously been used to simulate several neurobiological mechanisms, and been applied to image contour detection and pattern recognition tasks. Here it is applied for the first time to image patch matching, and is shown to produce superior results in comparison to the current state-of-the-art methods. (C) 2020 Elsevier Ltd. All rights reserved.
机译:识别和定位图像修补或图像特征集是计算机愿景中有很多工作的重要任务。传统上,这已经使用模板匹配完成。然而,模板匹配在面对由例如观点术中的变化,部分闭塞和非刚性变形引起的外观变化面上是臭名的。本文测试了模板匹配的方法,这些方法更容易容忍外观的这种变化,因此可以更准确地识别图像补丁。在传统模板中匹配模板和图像之间的比较与其他模板无关。相反,这里主张的方法考虑了在每个位置处的模板提供的图像提供的证据,以及由其他地点的相同模板和其他模板表示的相同模板所示的全部替代说明。具体地,使用称为“解释”的概率推断形式来执行所提出的模板匹配方法。用于实施解释解释的算法先前已被用于模拟几种神经生物学机制,并应用于图像轮廓检测和模式识别任务。在这里,它是第一次应用于图像补丁匹配,并显示与当前最先进的方法相比产生卓越的结果。 (c)2020 elestvier有限公司保留所有权利。

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