Abnormality detection using LBP features and K-means labelling based feed-forward neural network in video sequence

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Abstract

Video surveillance is widely used in various domains like military, commercial and consumer areas. One of the objectives in video surveillance is the detection of normal and abnormal behavior.It has always been a challenge to accurately identify such events in any real time video sequence. In this paper, abnormality detection method using Local Binary Pattern and k-means labeling basedfeed-forward neural network has been proposed. The performance of the proposed method has also been compared with four other techniques in literature to show its worthiness. It can be seen in the experimental results that an accuracy of up to 98% has been achieved for the proposed technique.

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Ruchika, & Purwar, R. K. (2019). Abnormality detection using LBP features and K-means labelling based feed-forward neural network in video sequence. International Journal of Innovative Technology and Exploring Engineering, 8(9 Special Issue), 629–633. https://doi.org/10.35940/ijitee.I1100.0789S19

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