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MOVING-CAMERA VIDEO SURVEILLANCE IN CLUTTERED ENVIRONMENTS USING DEEP FEATURES

Citation Author(s):
Bruno M. Afonso, Lucas P. Cinelli, Lucas A. Thomaz, Allan F. da Silva, Eduardo A. B. da Silva, Sergio L. Netto
Submitted by:
Lucas Thomaz
Last updated:
4 October 2018 - 12:21pm
Document Type:
Poster
Document Year:
2018
Event:
Presenters:
Lucas Thomaz
Paper Code:
2622
 

This paper deals with the challenging problem of visual anomaly detection in a cluttered environment using videos acquired with a moving camera. The anomalies considered are abandoned objects.
A new method is proposed for comparing two videos (an anomalyfree reference video and a target one possibly with anomalies) by
using convolutional neural networks as feature extractors for a subsequent anomaly-detection stage using a classifier. Two classifier strategies are considered, namely a fully-connected neural network and a random forest algorithm. Results for a comprehensive abandoned object database acquired with a moving camera in a cluttered environment indicate that the proposed architecture can match even the state-of-the-art algorithms in terms of object-detection performance, with a reduction in processing time of 80%.

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