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Filters: Author is Jyotsna, C.  [Clear All Filters]
2021-01-11
Amrutha, C. V., Jyotsna, C., Amudha, J..  2020.  Deep Learning Approach for Suspicious Activity Detection from Surveillance Video. 2020 2nd International Conference on Innovative Mechanisms for Industry Applications (ICIMIA). :335—339.

Video Surveillance plays a pivotal role in today's world. The technologies have been advanced too much when artificial intelligence, machine learning and deep learning pitched into the system. Using above combinations, different systems are in place which helps to differentiate various suspicious behaviors from the live tracking of footages. The most unpredictable one is human behaviour and it is very difficult to find whether it is suspicious or normal. Deep learning approach is used to detect suspicious or normal activity in an academic environment, and which sends an alert message to the corresponding authority, in case of predicting a suspicious activity. Monitoring is often performed through consecutive frames which are extracted from the video. The entire framework is divided into two parts. In the first part, the features are computed from video frames and in second part, based on the obtained features classifier predict the class as suspicious or normal.