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This article is cited in 4 scientific papers (total in 4 papers)
IMAGE PROCESSING, PATTERN RECOGNITION
Abnormal behavior detection based on dense trajectories
R. A. Shatalin, V. R. Fidelman, P. E. Ovchinnikov Lobachevski State University of Nizhni Novgorod, Nizhny Novgorod, Russia
Abstract:
In this paper, we propose abnormal behavior detection algorithms based on dense trajectories and principal components for video surveillance applications. The result shows that the proposed algorithms are faster than an algorithm based on lengths of displacement vectors but the accuracy is only retained if the bag-of-features model is trained on a balanced sample of behavior features.
Keywords:
video surveillance, abnormal behaviour detection, principal component analysis, dense trajectories.
Received: 20.02.2018 Accepted: 03.04.2018
Citation:
R. A. Shatalin, V. R. Fidelman, P. E. Ovchinnikov, “Abnormal behavior detection based on dense trajectories”, Computer Optics, 42:3 (2018), 476–482
Linking options:
https://www.mathnet.ru/eng/co529 https://www.mathnet.ru/eng/co/v42/i3/p476
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Abstract page: | 147 | Full-text PDF : | 44 | References: | 16 |
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