Kuo, Wei YuanWei YuanKuoKuo, Chien HaoChien HaoKuoSun, Shih WeiShih WeiSunChang, Pao ChiPao ChiChangChen, Ying TingYing TingChenWEN-HUANG CHENG2023-03-082023-03-082016-09-229781509015528https://scholars.lib.ntu.edu.tw/handle/123456789/628996In this paper, a real-time behavior recognition demo system is proposed. By utilizing the captured skeletons and depth information from multiple Kinect cameras mounted at different locations with different view points, the occluded parts of a player and the ball information in the depth channels can be compensated by another Kinect camera without occlusion situations. Besides, a machine learning process trained from the the skeletons and depth channel information from two Kinect cameras makes the the behavior recognition rate to be more than 80% in real-time usage from three of the trained behaviors, i.e. right-hand dribble, left-hand dribble, and shooting behaviors.Behavior recognition | Depth | Machine learning | Multiple Kinects | SkeletonMachine learning-based behavior recognition system for a basketball player using multiple Kinect camerasconference paper10.1109/ICMEW.2016.75746612-s2.0-84992160248https://api.elsevier.com/content/abstract/scopus_id/84992160248