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Figure-Aware Tracking under Occlusion from Monocular Videos

机译:来自单眼视频的遮挡下的图表感知跟踪

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In this paper, we propose a figure-aware tracking framework incorporating figure/ground repulsive forces in a simultaneous detect let classification and clustering problem in the joint space of detect lets and trajectlets for monocular videos. Without depth/disparity, fine-grained trajectlets tend to cause under-segmentation of similarly moving objects or over-segmentation of articulated objects into rigid parts. Detect lets represented by the bounding boxes only help avoiding under-segmentation of similarly moving objects under canonical pose, while do no good for improving the over-segmentation problem. Pose estimation, though not accurate, is often sufficient to segment human torso from its backgrounds and induce figure/ground repulsions, which could reduce the risk of both under-segmentation and over-segmentation. Figure-aware mediation encodes repulsive segmentation information in trajectory affinities and provides more reliable model aware information for detect let classification. Our algorithm can track objects through sparse, inaccurate detections, persistent partial occlusions, deformations and background clutter.
机译:在本文中,我们提出了一种图解/地排斥力在同时检测到检测的联合空间中的图形和聚类问题的数字感知跟踪框架,让我们和单眼视频的探测器。在没有深度/差异的情况下,细粒纹理倾向于导致与铰接物体的类似运动物体或过度分割成刚性部件的分割。检测边界框表示的设施仅帮助避免在规范姿势下的类似移动物体的下分割,同时对改善过分分割问题不利。姿势估计虽然不准确,但往往足以将人类躯干分割,并诱导数字/地面排斥,这可以降低分割欠分割和过分分割的风险。图识别的中介在轨迹关联中编码排斥分割信息,并提供更可靠的模型意识信息,用于检测让分类。我们的算法可以通过稀疏,不准确的检测,持久的部分闭塞,变形和背景混乱来跟踪对象。

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