Ruchika, 2019 - Google Patents

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

Ruchika, 2019

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Document ID
18312157433899043719
Author
Ruchika P
Publication year
Publication venue
Int J Innovative Technol Exploring Eng

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Snippet

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 …
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