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Bimonthly Since 1986 |
ISSN 1004-9037
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Publication Details |
Edited by: Editorial Board of Journal of Data Acquisition and Processing
P.O. Box 2704, Beijing 100190, P.R. China
Sponsored by: Institute of Computing Technology, CAS & China Computer Federation
Undertaken by: Institute of Computing Technology, CAS
Published by: SCIENCE PRESS, BEIJING, CHINA
Distributed by:
China: All Local Post Offices
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Abstract
Sensors or electronic devices are used for remote monitoring. Real-time traffic, forest, military, commerce, and medical remote monitoring detects abnormalities. The computational complexity of computer vision-based video processing systems is substantial. This research develops a Slow-Fast Convolution Neural Network (SF-CNN) to detect and classify anomalous behaviour in surveillance videos. The suggested CNN architecture automatically learns video frames and selects the best object behavior attributes from a wide sample of films. SF-CNN learns slowly or quickly. When the frame rate is low, slow learning is enabled, and when high, rapid learning is enabled. The input video teaches both both spatial and temporal information. Actions identify humans, vehicles, and animals. All movies contain normal and aberrant activities in different circumstances. The SF-CNN architecture solves numerous limitations anomalous motions end-to-end. SF-CNN performance is tested on many benchmark datasets. The proposed method had 99.6% accuracy, higher than prior methods.
Keyword
Deep Learning, Neural Network, Video Processing, Internet of Thing
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