Human Joint Angle Estimation And Gesture Recognition For Assistive Robotic Vision

COMPUTER VISION - ECCV 2016 WORKSHOPS, PT II(2016)

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摘要
We explore new directions for automatic human gesture recognition and human joint angle estimation as applied for human-robot interaction in the context of an actual challenging task of assistive living for real-life elderly subjects. Our contributions include state-of-the-art approaches for both low-and mid-level vision, as well as for higher level action and gesture recognition. The first direction investigates a deep learning based framework for the challenging task of human joint angle estimation on noisy real world RGB-D images. The second direction includes the employment of dense trajectory features for online processing of videos for automatic gesture recognition with real-time performance. Our approaches are evaluated both qualitative and quantitatively on a newly acquired dataset that is constructed on a challenging real-life scenario on assistive living for elderly subjects.
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关键词
Root Mean Square Error,Joint Angle,Gesture Recognition,Assistive Living,Kinect Sensor
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