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Simultaneous Tracking and Activity Recognition

机译:同时跟踪和活动识别

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摘要

Many tracking problems involve several distinct objects interacting with each other. We develop a framework that takes into account interactions between objects allowing the recognition of complex activities. In contrast to classic approaches that consider distinct phases of tracking and activity recognition, our framework performs these two tasks simultaneously. In particular, we adopt a Bayesian standpoint where the system maintains a joint distribution of the positions, the interactions and the possible activities. This turns out to be advantegeous, as information about the ongoing activities can be used to improve the prediction step of the tracking, while, at the same time, tracking information can be used for online activity recognition. Experimental results in two different settings show that our approach 1) decreases the error rate and improves the identity maintenance of the positional tracking and 2) identifies the correct activity with higher accuracy than standard approaches.
机译:许多跟踪问题都涉及几个互不相同的对象。我们开发了一个框架,该框架考虑了对象之间的交互,从而可以识别复杂的活动。与考虑跟踪和活动识别的不同阶段的经典方法相反,我们的框架同时执行这两项任务。特别是,我们采用贝叶斯(Bayesian)观点,该系统保持职位,相互作用和可能活动的联合分布。事实证明这是有利的,因为可以将有关正在进行的活动的信息用于改善跟踪的预测步骤,同时,可以将跟踪信息用于在线活动识别。在两种不同设置下的实验结果表明,我们的方法1)降低了错误率并改善了位置跟踪的身份维护,并且2)比标准方法具有更高的准确性来识别正确的活动。

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