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Action recognition for human robot interaction in industrial applications

机译:用于工业应用中人机交互的动作识别

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Human action recognition plays a vital role in the field of human-robot interaction and is widely researched for its potential applications. In this paper we propose a human action recognition framework for human robot interaction in industrial applications. First, a set of key descriptors are learned from a collection of weak spatio-temporal skeletal joint descriptors using random forests, which reduces the dimensionality and computational effort. We show that our approach reduces the descriptor dimensionality by 61 percent. The key descriptors are used with a multi-label one-versus-all binary random forest classifier for action classification. We propose an extension to the framework that allows recognizing multiple actions for a given time instant. This results in a low latency, flexible and re-configurable method that performs on par with other sophisticated approaches on challenging benchmarks like the MSR Action 3D dataset.
机译:人体动作识别在人机交互领域中起着至关重要的作用,并对其潜在应用进行了广泛的研究。在本文中,我们为工业应用中的人类机器人交互提出了一种人类动作识别框架。首先,使用随机森林从一组弱时空骨骼关节描述符中学习一组关键描述符,从而减少了维数和计算量。我们证明了我们的方法将描述符维数降低了61%。关键描述符与多标签“一对所有”二进制随机森林分类器一起使用以进行动作分类。我们建议对框架进行扩展,以允许在给定的瞬间识别多个动作。这导致了低延迟,灵活且可重新配置的方法,该方法在挑战性基准测试(例如MSR Action 3D数据集)上可与其他复杂方法媲美。

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