Research Article

Edge Detection-Based Feature Extraction for the Systems of Activity Recognition

Table 5

Accuracy of classification for the proposed activity recognition system with ellipse features (without employing the proposed methodology) against depth dataset.

ActivitiesBNJCPLJRNNSIMSKPWLKOW1OW2JPCLPBXGSUD

BN90021021010102
JC09110021022010
PLJ20881200120121
RNN02286011201302
SIM21128021122123
SKP12102831410221
WLK01020291011200
OW120211218422012
OW212121102860211
JP21102011089120
CLP10102101019201
BXG12110210201890
SUD01021020110290

Average87.6%

BN for bending, JC for jacking, PLJ for place jumping, RNN for running, SIM for side movement, SKP for skipping, WLK for walking, OW1 for one-hand waving, OW2 for two-hand waving, JP for jumping, CLP for clapping, BXG for boxing, and SUD for sitting up and down.