Research on the acquisition of human behavior data based on Kinect

In the field of computer vision, identifying interesting objects from complex environments by depth data becomes a hot topic in the field of computer vision. In the research of human behavior recognition, it is an important branch in the field of action recognition to obtain the data of human behavior through depth data, and then to do the corresponding detection and recognition. This paper studies the acquisition technology of human behavior data based on Kinect, analyzes the technical parameters and measurement principle of the new generation of Kinect v2(Kinect for Windows v2 sensor), and designs a human behavior data acquisition system based on Kinect v2. Through experiments, it is proved that the method presented in this paper for the acquisition of human body behavior data is practical and feasible.

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