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Tracking articulated human movements witha component based approach to boosted multiple instance learning

机译:使用基于组件的方法跟踪关节运动,以促进多实例学习

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Our work is about a new class of object trackers that are based on a boosted Multiple Instance Learning (MIL) algorithm to track an object in a video sequence. We show how the scope of such trackers can be expanded to the tracking of articulated movements by humans that frequently result in large frame-to-frame variations in the appearance of what needs to be tracked. To deal with the problems caused by such variations, our paper presents a component based version of the boosted MIL algorithm. Components are the output of an image segmentation algorithm applied to the pixels in the bounding box encapsulating the object to be tracked. The components give the boosted MIL the additional degrees of freedom that it needs in order to deal with the large frame-to-frame variations associated with articulated movements.
机译:我们的工作是关于一类新的对象跟踪器,该对象跟踪器基于增强的多实例学习(MIL)算法来跟踪视频序列中的对象。我们演示了如何将此类跟踪器的范围扩展到人类对关节运动的跟踪,这些运动经常导致需要跟踪的内容在帧与帧之间出现较大的变化。为了解决由这种变化引起的问题,我们的论文提出了增强型MIL算法的基于组件的版本。分量是应用于分割框的像素的图像分割算法的输出,该像素封装了要跟踪的对象。这些组件为增强型MIL提供了额外的自由度,以应对与关节运动相关的较大的帧到帧变化。

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