DocumentCode
3739701
Title
Sequential Multilinear Subspace Based Event Detection in Large Video Data Sequences
Author
Bharat Venkitesh;Pavan Kumar Reddy K;M Girish Chandra
Author_Institution
TCS Innovation Labs., Bangalore, India
fYear
2015
Firstpage
48
Lastpage
51
Abstract
A major portion of the big data that is produced comprises of videos coming from surveillance cameras deployed to view streets, buildings, offices etc. The surveillance videos are mainly used for monitoring day to day activities. The video sequences are long and the events of interest occur only over a short duration. Hence, there is a pressing need to analyze and detect events to avoid continuous manual monitoring of entire video sequence. The first step towards that is to extract the foreground information. In this paper we present an effective online multilinear subspace learning algorithm which incrementally learns and models the background as a low-rank tensor. This background modeling combined with appropriate post processing steps is useful to detect anomalous events, thus in turn the foreground, in the video. The efficacy of the proposed method is also brought out in the simulation results provided.
Keywords
"Tensile stress","Computational modeling","Streaming media","Matrix decomposition","Surveillance","Cameras","Video sequences"
Publisher
ieee
Conference_Titel
High Performance Computing Workshops (HiPCW), 2015 IEEE 22nd International Conference on
Type
conf
DOI
10.1109/HiPCW.2015.13
Filename
7396367
Link To Document