M.Tech / M.E / PhD Thesis | Computer Science and Engineering | India | Volume 9 Issue 5, May 2020
Abnormality Detection on Video Surveillance
: Sparse coding based abnormality recognition has demonstrated promising execution, of which the keys are highlight learning, inadequate portrayal, and word reference learning. In this work, we propose another neural system for inconsistency location by profoundly accomplishing highlight learning, inadequate portrayal and word reference learning in three joint neural preparing squares. In particular, to learn better highlights, we structure a movement combination square joined by a component move square to appreciate the benefits of taking out boisterous foundation, catching movement and reducing information insufficiency. Besides, to address a few detriments (e.g., nonadaptive refreshing) of existing meagre coding analyzers and grasp the benefits of neural system (e.g., equal processing), we structure a novel intermittent neural system to learn meagre portrayal and word reference by proposing a versatile iterative hard-thresholding calculation (versatile ISTA) and reformulating the versatile ISTA as another long transient memory (LSTM). As far as we could possibly know, this could be one of first attempts to connect the '1-solver and LSTM and may give novel knowledge in comprehension LSTM and model-based improvement (or named differentiable programming), just as inadequate coding based inconsistency identification. Broad analyses appear the best in class execution of our strategy in the anomalous occasion’s discovery task.
Keywords: Video Surveillance, Anomaly detection, Recurrent neural network based sparsity learning
Edition: Volume 9 Issue 5, May 2020
Pages: 4 - 5
How to Cite this Article?
Unais K, "Abnormality Detection on Video Surveillance", International Journal of Science and Research (IJSR), https://www.ijsr.net/search_index_results_paperid.php?id=SR20426102517, Volume 9 Issue 5, May 2020, 4 - 5
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