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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Occlusion Pattern Discovery for Object Detection and Occlusion Reasoning
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Occlusion Pattern Discovery for Object Detection and Occlusion Reasoning

机译:对象检测和闭塞推理的遮挡模式发现

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摘要

Despite recent progress of object category detection in real scenes, detecting objects that are partially or heavily occluded remains a challenging problem due to the uncertainty and diversity of occlusion situations which could cause large intra-category appearance variance. To learn these occlusion situations, we propose a novel approach to discover occlusion patterns that cannot only boost occluded object detection but also provide occlusion reasoning. Our approach is based on a classic deformable part model (DPM) trained on fully observed object examples. Each occlusion pattern contains only a subset of visible parts, thus the total number of occlusion patterns are exponential to the number of parts, i.e., m parts will generate 2(m) occlusion patterns to compose an occlusion pattern pool. From this occlusion pattern pool, we look for a small group of occlusion patterns that are: (1) representative patterns that can well explain training examples and (2) discriminative patterns that have high detection performance individually. To select such occlusion patterns, we formulate occlusion pattern discovery as a facility location problem, which can be solved effectively by greedy search. The discovered occlusion patterns are themselves DPMs and can be used as object detectors when properly tuned. They can also be combined with the state-of-the-art detectors (e.g. Faster R-CNN) for improving detection performance and achieving part-level occlusion reasoning. The effectiveness of the proposed approach is validated on Pascal VOC2007 and VOC2010 datasets.
机译:尽管最近在真实场景中检测对象类别检测的进展,但由于遮挡情况的不确定性和多样性,检测部分或严重封闭的物体仍然是一个具有挑战性的问题,这可能导致类别的内部外观方差。为了学习这些遮挡情况,我们提出了一种新颖的方法来发现遮挡模式,这些方法不能促进遮挡物体检测,而且还提供遮挡推理。我们的方法基于在完全观察到的对象示例上培训的经典可变形部分模型(DPM)。每个遮挡模式仅包含可见部件的子集,因此遮挡模式的总数是零件的指数,即,M部分将产生2(m)闭塞模式以构成遮挡模式池。从这种遮挡模式池中,我们寻找一小组遮挡模式,即:(1)可以熟悉具有单独检测性能的训练示例的代表性模式和(2)判别模式。为了选择这种遮挡模式,我们将遮挡模式发现作为设施位置问题制定,可以通过贪婪搜索有效地解决。发现的遮挡模式本身是DPM,并且可以在适当调谐时用作对象检测器。它们还可以与最先进的探测器(例如,更快的R-CNN)结合,以改善检测性能和实现部分级闭塞推理。拟议方法的有效性在Pascal VOC2007和VOC2010数据集上验证。

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