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CoMaL Tracking: Tracking Points at the Object Boundaries

机译:COMAL跟踪:对象边界的跟踪点

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Traditional point tracking algorithms such as the KLT use local 2D information aggregation for feature detection and tracking, due to which their performance degrades at the object boundaries that separate multiple objects. Recently, CoMaL Features have been proposed that handle such a case. However, they proposed a simple tracking framework where the points are re-detected in each frame and matched. This is inefficient and may also lose many points that are not re-detected in the next frame. We propose a novel tracking algorithm to accurately and efficiently track CoMaL points. For this, the level line segment associated with the CoMaL points is matched to MSER segments in the next frame using shape-based matching and the matches are further filtered using texture-based matching. Experiments show improvements over a simple re-detect-and-match framework as well as KLT in terms of speed/accuracy on different real-world applications, especially at the object boundaries.
机译:传统的点跟踪算法,例如KLT使用本地2D信息聚合进行特征检测和跟踪,因为它们在分离多个对象的对象边界处的性能下降。最近,已经提出了处理这种情况的彗形特征。然而,它们提出了一种简单的跟踪框架,其中在每个帧中重新检测到点并匹配。这是效率低下,也可能失去在下一帧中未检测到的许多点。我们提出了一种新颖的跟踪算法,以准确且有效地跟踪彗态点。为此,与COMAL点相关联的级别线段与使用基于形状的匹配的下一帧中的MSER段匹配,并且使用基于纹理的匹配来进一步过滤匹配。实验表明,在不同现实应用的速度/准确性方面,在简单的重新检测和匹配框架以及KLT上的改进,尤其是在对象边界。

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