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Fast Online Segmentation of Activities from Partial Trajectories

机译:从部分轨迹快速在线分割活动

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Augmenting a robot with the capacity to understand the activities of the people it collaborates with in order to then label and segment those activities allows the robot to generate an efficient and safe plan for performing its own actions. In this work, we introduce an online activity segmentation algorithm that can detect activity segments by processing a partial trajectory. We model the transitions through activities as a hidden Markov model, which runs online by implementing an efficient particle-filtering approach to infer the maximum a posteriori estimate of the activity sequence. This process is complemented by an online search process to refine activity segments using task model information about the partial order of activities. We evaluated our algorithm by comparing its performance to two state-of-the-art activity segmentation algorithms on three human activity datasets. The proposed algorithm improved activity segmentation accuracy across all three datasets compared with the other two approaches, with a range from 11.3% to 65.5%, and could accurately recognize an activity through observation alone for 31.6% of the initial trajectory of that activity, on average. We also implemented the algorithm onto an industrial mobile robot during an automotive assembly task in which the robot tracked a human worker's progress and provided the worker with the correct materials at the appropriate time.
机译:增强机器人的能力以了解与其合作的人员的活动,以便对这些活动进行标记和细分,从而使机器人能够生成有效且安全的计划以执行自己的动作。在这项工作中,我们介绍了一种在线活动细分算法,该算法可以通过处理部分轨迹来检测活动细分。我们通过活动将过渡过程建模为隐藏的马尔可夫模型,该模型通过实施有效的粒子过滤方法在线推断活动序列的最大后验估计,从而在线运行。此过程得到在线搜索过程的补充,以使用有关活动部分顺序的任务模型信息来细化活动细分。我们通过将其性能与三个人类活动数据集上的两种最先进的活动分割算法进行比较来评估我们的算法。与其他两种方法相比,提出的算法提高了所有三个数据集的活动分割精度,范围从11.3%到65.5%,并且仅通过观察平均活动初始轨迹的31.6%就可以准确识别该活动。 。在汽车装配任务中,我们还将算法应用于工业移动机器人上,该机器人可跟踪人类工人的进度并在适当的时间为工人提供正确的材料。

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