Research Article

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

Table 11

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

ActivitiesBNJCPLJRNNSIMSKPWLKOW1OW2JPCLPBXGSUD

BN79214221212211
JC18112122121222
PLJ02840212112212
RNN22176611321122
SIM10229010012010
SKP22142742322141
WLK24212573231212
OW111221247814121
OW212112112851210
JP21221201282122
CLP21222111228022
BXG12412212124771
SUD26121124212472

Average79.3%

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.