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On-line simultaneous learning and recognition of everyday activities from virtual reality performances

机译:在线同步学习和从虚拟现实表演中识别日常活动

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Capturing realistic human behaviors is essential to learn human models that can later be transferred to robots. Recent improvements in virtual reality (VR) head-mounted displays provide a viable way to collect natural examples of human behavior without the difficulties often associated with capturing performances in a physical environment. We present a realistic, cluttered, VR environment for experimentation with household tasks paired with a semantic extraction and reasoning system able to utilize data collected in real-time and apply ontology-based reasoning to learn and classify activities performed in VR. The system performs continuous segmentation of the motions of users' hands and simultaneously classifies known actions while learning new ones on demand. The system then constructs a graph of all related activities in the environment through its observations, extracting the task space utilized by observed users during their performance. The action recognition and learning system was able to maintain a high degree of accuracy of around 92% while dealing with a more complex and realistic environment compared to earlier work in both physical and virtual spaces.
机译:捕捉现实的人类行为对于学习以后可以转移到机器人的人体模型至关重要。虚拟现实(VR)头戴式显示器的最新改进提供了一种可行的方式来收集人类行为的自然实例,而不会遇到通常与捕获物理环境中的性能相关的困难。我们提供了一个现实,混乱的VR环境,用于实验家庭任务,并与语义提取和推理系统配合使用,该系统能够利用实时收集的数据并应用基于本体的推理来学习和分类在VR中执行的活动。该系统对用户的手部动作进行连续的分割,并同时对已知动作进行分类,同时根据需要学习新动作。然后,系统通过观察来构建环境中所有相关活动的图形,提取观察到的用户在执行过程中所利用的任务空间。与早期在物理和虚拟空间中的工作相比,该动作识别和学习系统能够保持92%左右的高度准确性,同时能够处理更复杂和现实的环境。

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