Despite the large amount of research currently directed toward programming robots by demonstration, a significant problem with this method of human-to-robot skill transfer has not yet been addressed: developing representations of human performances which isolate the intrinsic dimensions of the performances (and thus the skills which guide them) within high-dimensional, raw human performance data. In this paper we propose the use of three methods for representing high-dimensional human performance data within lower-dimensional spaces: principal component analysis (PCA), nonlinear principal component analysis (NLPCA), and sequential nonlinear principal component analysis (SNLPCA). We compare the appropriateness of these methods for modeling a simple human grasping operation
Published in:
Intelligent Robots and Systems, 1998. Proceedings., 1998 IEEE/RSJ International Conference on
(Volume:3
)
Date of Conference: 13-17 Oct 1998