Authors
Amin Ullah, Khan Muhammad, Javier Del Ser, Sung Wook Baik, Victor Hugo C de Albuquerque
Publication date
2018/11/22
Journal
IEEE Transactions on Industrial Electronics
Volume
66
Issue
12
Pages
9692-9702
Publisher
IEEE
Description
Nowadays digital surveillance systems are universally installed for continuously collecting enormous amounts of data, thereby requiring human monitoring for the identification of different activities and events. Smarter surveillance is the need of this era through which normal and abnormal activities can be automatically identified using artificial intelligence and computer vision technology. In this paper, we propose a framework for activity recognition in surveillance videos captured over industrial systems. The continuous surveillance video stream is first divided into important shots, where shots are selected using the proposed convolutional neural network (CNN) based human saliency features. Next, temporal features of an activity in the sequence of frames are extracted by utilizing the convolutional layers of a FlowNet2 CNN model. Finally, a multilayer long short-term memory is presented for learning long-term …
Total citations
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Scholar articles
A Ullah, K Muhammad, J Del Ser, SW Baik… - IEEE Transactions on Industrial Electronics, 2018