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

机译:用于检测监控视频中异常事件的多实例词典学习

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摘要

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. © 2014 World Scientific Publishing Company.
机译:本文介绍了一种称为多实例字典学习(MIDL)的新方法,用于检测拥挤的视频场景中的异常事件。关于多实例学习,视频中的每个事件(视频剪辑)被建模为包含多个子事件(本地观察)的袋子;虽然每个子事件被视为实例。 MIDL共同学习用于将事件分类为正常或异常的子事件(实例)和多实例分类器的稀疏表示的字典。我们进一步采用了三种不同的多实例模型,产生了基于MAX的MIDL(MP-MIDL),基于实例的MIDL(即时MIDL)和基于袋的MIDL(BAG-MIDL),用于检测全局和本地异常。 MP-MIDL通过使用通过MAX池在稀疏表示上提取的袋子功能对观察到的事件进行分类。 inst-midl和bag-minl通过相应实例的预测值对观察到的事件进行分类。拟议的MIDL被评估,并与最先进的方法进行比较,用于UMN(对于全局异常)和UCSD(用于局部异常)数据集和结果表明所提出的MP-MIDL和袋子 - MIDL达到可比或改善的检测性能。建议的MIDL方法也与其他多实例学习方法进行比较,并且通过MP-MIDL方案获得了卓越的结果。 ©2014世界科学出版公司。

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