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Title Robust Real-Time Violence Detection In Video Using Cnn And Lstm
ID_Doc 46921
Authors Abdali A.-M.R.; Al-Tuma R.F.
Year 2019
Published SCCS 2019 - 2019 2nd Scientific Conference of Computer Sciences
DOI http://dx.doi.org/10.1109/SCCS.2019.8852616
Abstract Detection of a violence event in surveillance systems is playing a significant role in law enforcement and city safety. The effectiveness of violence event detectors measures by the speed of response and the accuracy and the generality over different kind of video sources with a different format. Several studies worked on the violence detection with focus either on speed or accuracy or both but not taking into account the generality over different kind of video sources. In this paper, we proposed a real-time violence detector based on deep-learning methods. The proposed model consists of CNN as a spatial feature extractor and LSTM as temporal relation learning method with a focus on the three-factor (overall generality - accuracy - fast response time). The suggested model achieved 98% accuracy with speed of 131 frames/sec. Comparison of the accuracy and the speed of the proposed model with previous works illustrated that the proposed model provides the highest accuracy and the fastest speed among all the previous works in the field of violence detection. © 2019 IEEE.
Author Keywords CNN; Deep Learning; LSTM; Smart Cities; Violence Detection


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