Authors
CK Chan, WP Loh, I Abd Rahim
Publication date
2013/10/10
Journal
Procedia-Social and Behavioral Sciences
Volume
91
Pages
140-149
Publisher
Elsevier
Description
The missing information from raw human motion data due to occlusion and hidden postures during motions has influenced the quality of input data. This study proposes a novel idea of preprocessing human motion data with data elimination cum interpolation for imputation to treat the missing information. The idea was implemented on three sets of public available motion data concerning jumping, walking and running activities obtained from YouTube (www.youtube.com). The video motions were transformed into numerical data with the aid of Photoshop tool in order to obtain the body segment markers in form of rotation angles and coordinates in the 2-dimensional format. The proposed approach was compared numerically to the conventional preprocessing approaches: data elimination, averaging, imputation to treat missing values. The efficiencies were confirmed by classification accuracies through BayesNet …
Total citations
201420152016201720182019202020212022121111
Scholar articles