Title :
Extensive and efficient search of human movements with hierarchical reinforcement learning
Author :
Mukai, Tomohiko ; Kuriyama, Shigeru ; Kaneko, Toyohisa
Author_Institution :
Toyohashi Univ. of Technol., Aichi, Japan
Abstract :
This paper proposes a method for creating human movements by imposing positional constraints of end-effectors at multiple key-frames. We introduce hierarchical reinforcement learning for efficiently searching postures at each key-frame among the huge number of possible candidates. The mechanical structures of virtual characters are also hierarchically decomposed so as to suit the learning mechanism, and each hierarchy prepares templates of discretely sampled postures for narrowing down the searching space. Our method automatically generates complex movements so that the resulting motions are globally optimized for a whole sequence
Keywords :
learning (artificial intelligence); virtual reality; endeffectors; hierarchical reinforcement learning; human movements; mechanical structures; multiple key-frames; positional constraints; postures; searching space; virtual characters; Animation; Computational efficiency; Humans; Joints; Kinetic theory; Learning systems; Leg; Optimization methods; Path planning; Skeleton;
Conference_Titel :
Computer Animation, 2002. Proceedings of
Conference_Location :
Geneva
Print_ISBN :
0-7695-1594-0
DOI :
10.1109/CA.2002.1017515