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Snatch theft detection in unconstrained surveillance videos using action attribute modelling

机译:使用动作属性建模在不受约束的监视视频中进行抢劫检测

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In a city with hundreds of cameras and thousands of interactions daily among people, manually identifying crimes like chain and purse snatching is a tedious and challenging task. Snatch thefts are complex actions containing attributes like walking, running etc. which are affected by actor and view variations. To capture the variation in these attributes in diverse scenarios, we propose to model snatch thefts using a Gaussian mixture model (GMM) with a large number of mixtures known as universal attribute model (UAM). However, the number of snatch thefts typically recorded in a surveillance videos is not sufficient enough to train the parameters of the UAM. Hence, we use the large human action datasets like UCF101 and HMDB51 to train the UAM as many of the actions in these datasets share attributes with snatch thefts. Then, a super-vector representation for each snatch theft clip is obtained using maximum aposterion (MAP) adaptation of the universal attribute model. However, super-vectors are high-dimensional and contain many redundant attributes which do not contribute to snatch thefts. So, we propose to use factor analysis to obtain a low-dimensional representation called action-vector that contains only the relevant attributes. For evaluation, we introduce a video dataset called Snatch 1.0 created from many hours of surveillance footage obtained from different traffic cameras placed in the city of Hyderabad, India. We show that using action-vectors snatch thefts can be better identified than existing state-of-the-art feature representations. (C) 2018 Elsevier B.V. All rights reserved.
机译:在一个每天有成百上千个摄像头和成千上万的人与人互动的城市中,手动识别诸如绑链和抢钱包之类的犯罪是一项繁琐而富挑战性的任务。抢夺盗窃是复杂的动作,包含诸如步行,奔跑等属性,这些属性受演员和视图变化的影响。为了捕获不同情况下这些属性的变化,我们建议使用高斯混合模型(GMM)和大量被称为通用属性模型(UAM)的混合模型对抢劫盗窃进行建模。但是,通常在监视视频中记录的抢夺盗窃次数不足以训练UAM的参数。因此,我们使用诸如UCF101和HMDB51之类的大型人类动作数据集来训练UAM,因为这些数据集中的许多动作共享具有抢劫盗窃的属性。然后,使用通用属性模型的最大后继(MAP)适应来获取每个抢夺防盗剪辑的超向量表示。但是,超级向量是高维的,并且包含许多冗余属性,这些属性不会导致抢劫。因此,我们建议使用因子分析来获得仅包含相关属性的低维表示形式,称为动作向量。为了进行评估,我们引入了一个名为Snatch 1.0的视频数据集,该数据集是通过从放置在印度海得拉巴市的不同交通摄像机获得的多个小时的监控录像创建的。我们证明,使用动作向量抢夺盗窃可以比现有的最新功能表示更好地识别。 (C)2018 Elsevier B.V.保留所有权利。

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