Title
Learning Deep Representations of Appearance and Motion for Anomalous Event Detection
Abstract
We present a novel unsupervised deep learning framework for anomalous event detection in complex video scenes. While most existing works merely use hand-crafted appearance and motion features, we propose Appearance and Motion DeepNet (AMDN) which utilizes deep neural networks to automatically learn feature representations. To exploit the complementary information of both appearance and motion patterns, we introduce a novel double fusion framework, combining both the benefits of traditional early fusion and late fusion strategies. Specifically, stacked denoising autoencoders are proposed to separately learn both appearance and motion features as well as a joint representation (early fusion). Based on the learned representations, multiple one-class SVM models are used to predict the anomaly scores of each input, which are then integrated with a late fusion strategy for final anomaly detection. We evaluate the proposed method on two publicly available video surveillance datasets, showing competitive performance with respect to state of the art approaches.
Year
DOI
Venue
2015
10.5244/C.29.8
BMVC
Field
DocType
Volume
Noise reduction,Anomaly detection,Pattern recognition,Computer science,Support vector machine,Exploit,Artificial intelligence,Deep learning,Machine learning,Deep neural networks
Journal
abs/1510.01553
Citations 
PageRank 
References 
82
1.78
27
Authors
5
Name
Order
Citations
PageRank
Dan Xu134216.39
Elisa Ricci 00022139373.75
Yan Yan378438.14
Jingkuan Song4197077.76
Nicu Sebe57013403.03