CoMaL: Good Features to Match on Object Boundaries

Swarna Kamlam Ravindran, Anurag Mittal
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引用次数: 7

Abstract

Traditional Feature Detectors and Trackers use information aggregation in 2D patches to detect and match discriminative patches. However, this information does not remain the same at object boundaries when there is object motion against a significantly varying background. In this paper, we propose a new approach for feature detection, tracking and re-detection that gives significantly improved results at the object boundaries. We utilize level lines or iso-intensity curves that often remain stable and can be reliably detected even at the object boundaries, which they often trace. Stable portions of long level lines are detected and points of high curvature are detected on such curves for corner detection. Further, this level line is used to separate the portions belonging to the two objects, which is then used for robust matching of such points. While such CoMaL (Corners on Maximally-stable Level Line Segments) points were found to be much more reliable at the object boundary regions, they perform comparably at the interior regions as well. This is illustrated in exhaustive experiments on realworld datasets.
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CoMaL:在对象边界上匹配的良好特征
传统的特征检测器和跟踪器利用二维补丁中的信息聚合来检测和匹配有区别的补丁。然而,当物体在明显变化的背景下运动时,这些信息在物体边界处并不保持不变。在本文中,我们提出了一种新的特征检测、跟踪和重新检测方法,该方法在目标边界处得到了显着改善的结果。我们利用水平线或等强度曲线,它们通常保持稳定,甚至可以在物体边界可靠地检测到,它们经常跟踪。检测长水平线的稳定部分,并在此曲线上检测高曲率点进行拐角检测。此外,这条水平线用于分离属于两个对象的部分,然后用于这些点的鲁棒匹配。虽然发现这样的CoMaL(最稳定水平线段上的角)点在物体边界区域更可靠,但它们在内部区域的表现也相当。这在真实世界数据集的详尽实验中得到了说明。
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