Title :
Automatic Human Mocap Data Classification
Author :
Kadu, Harshad ; Kuo, C.-C Jay
Author_Institution :
Ming Hsieh Dept. of Electr. Eng., Univ. of Southern California, Los Angeles, CA, USA
Abstract :
Automatic classification of human motion capture (mocap) data has many commercial, biomechanical, and medical applications and is the principal focus of this paper. First, we propose a multi-resolution string representation scheme based on the tree-structured vector quantization (TSVQ) to transform the time-series of human poses into codeword sequences. Then, we take the temporal variations of human poses into account via codeword sequence matching. Furthermore, we develop a family of pose-histogram-based classifiers to examine the spatial distribution of human poses. We analyze the performance of the temporal and spatial classifiers separately. To achieve a higher classification rate, we merge their decisions and soft scores using novel fusion methods. The proposed fusion solutions are tested on a wide variety of sequences from the CMU mocap database using five-fold cross validation, and a correct classification rate of 99.6% is achieved.
Keywords :
image classification; image fusion; image matching; image motion analysis; image representation; image resolution; pose estimation; time series; CMU mocap database; TSVQ; automatic human mocap data classilication; biomechanical applications; codeword sequence matching; codeword sequences; commercial applications; five-fold cross validation; fusion methods; human motion capture; human pose time-series; medical applications; multiresolution string representation scheme; pose-histogram-based classifiers; temporal variations; tree-structured vector quantization; Arrays; Indexes; Joints; Three-dimensional displays; Training; Vectors; Database management; SVM; human motion analysis; machine learning; mocap data; motion recognition; n-fold cross validation; suffix array; vector quantization;
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2014.2360793