MULTI-INSTANCE DICTIONARY LEARNING FOR DETECTING ABNORMAL EVENTS IN SURVEILLANCE VIDEOS

Author:

HUO JING1,GAO YANG1,YANG WANQI1,YIN HUJUN2

Affiliation:

1. State Key Laboratory for Novel Software Technology, Nanjing University, P. R. China

2. School of Electrical and Electronic Engineering, The University of Manchester, UK

Abstract

In this paper, a novel method termed Multi-Instance Dictionary Learning (MIDL) is presented for detecting abnormal events in crowded video scenes. With respect to multi-instance learning, each event (video clip) in videos is modeled as a bag containing several sub-events (local observations); while each sub-event is regarded as an instance. The MIDL jointly learns a dictionary for sparse representations of sub-events (instances) and multi-instance classifiers for classifying events into normal or abnormal. We further adopt three different multi-instance models, yielding the Max-Pooling-based MIDL (MP-MIDL), Instance-based MIDL (Inst-MIDL) and Bag-based MIDL (Bag-MIDL), for detecting both global and local abnormalities. The MP-MIDL classifies observed events by using bag features extracted via max-pooling over sparse representations. The Inst-MIDL and Bag-MIDL classify observed events by the predicted values of corresponding instances. The proposed MIDL is evaluated and compared with the state-of-the-art methods for abnormal event detection on the UMN (for global abnormalities) and the UCSD (for local abnormalities) datasets and results show that the proposed MP-MIDL and Bag-MIDL achieve either comparable or improved detection performances. The proposed MIDL method is also compared with other multi-instance learning methods on the task and superior results are obtained by the MP-MIDL scheme.

Publisher

World Scientific Pub Co Pte Lt

Subject

Computer Networks and Communications,General Medicine

Reference24 articles.

1. H. Lee, Advances in Neural Information Processing Systems 19, eds. B. Schölkopf, J. Platt and T. Hoffman (MIT Press, Cambridge, MA, 2007) pp. 801–808.

2. Image Denoising Via Sparse and Redundant Representations Over Learned Dictionaries

3. HUMAN ACTIVITY RECOGNITION BASED ON EVOLVING FUZZY SYSTEMS

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