Title :
Human activity detection using sparse representation
Author :
Killedar, Dipti ; Sasi, Sreela
Author_Institution :
Dept. of Comput. & Inf., Gannon Univ., Erie, PA, USA
Abstract :
Human activity detection from videos is very challenging, and has got numerous applications in sports evalution, video surveillance, elder/child care, etc. In this research, a model using sparse representation is presented for the human activity detection from the video data. This is done using a linear combination of atoms from a dictionary and a sparse coefficient matrix. The dictionary is created using a Spatio Temporal Interest Points (STIP) algorithm. The Spatio temporal features are extracted for the training video data as well as the testing video data. The K-Singular Value Decomposition (KSVD) algorithm is used for learning dictionaries for the training video dataset. Finally, human action is classified using a minimum threshold residual value of the corresponding action class in the testing video dataset. Experiments are conducted on the KTH dataset which contains a number of actions. The current approach performed well in classifying activities with a success rate of 90%.
Keywords :
feature extraction; gesture recognition; image classification; singular value decomposition; video signal processing; K-singular value decomposition algorithm; KSVD algorithm; KTH dataset; STIP algorithm; atom linear combination; elder-child care; human action classification; human activity detection; learning dictionaries; minimum threshold residual value; sparse coefficient matrix; sparse representation; spatiotemporal feature extraction; spatiotemporal interest point algorithm; sports evaluation; testing video data; training video data; video surveillance; Classification algorithms; Dictionaries; Equations; Feature extraction; Matching pursuit algorithms; Training; Videos; KSVD; STIP; dictionary learning; human activity detection; sparse representation;
Conference_Titel :
Applied Imagery Pattern Recognition Workshop (AIPR), 2014 IEEE
Conference_Location :
Washington, DC
DOI :
10.1109/AIPR.2014.7041933