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Anomalous Event Detection Using a Semi-Two Dimensional Hidden Markov Model

机译:使用半二维隐马尔可夫模型进行异常事件检测

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The rapid increase in the deployment of CCTV systems has led to a greater demand for algorithms that are able to process incoming video feeds. These algorithms are designed to extract information of interest for human operators. During the past several years, there has been a large effort to detect abnormal activities through computer vision techniques. Typically, the problem is formulated as a novelty detection task where the system is trained on normal data and is required to detect events which do not fit the learned `normal' model. Many researchers have tried various sets of features to train different learning models to detect abnormal behaviour in video footage. In this work we propose using a Semi-2D Hidden Markov Model (HMM) to model the normal activities of people. The outliers of the model with insufficient likelihood are identified as abnormal activities. Our Semi-2D HMM is designed to model both the temporal and spatial causalities of the crowd behaviour by assuming the current state of the Hidden Markov Model depends not only on the previous state in the temporal direction, but also on the previous states of the adjacent spatial locations. Two different HMMs are trained to model both the vertical and horizontal spatial causal information. Location features, flow features and optical flow textures are used as the features for the model. The proposed approach is evaluated using the publicly available UCSD datasets and we demonstrate improved performance compared to other state of the art methods.
机译:CCTV系统部署的快速增加导致对能够处理传入视频源的算法的更大需求。这些算法旨在提取人类运营商感兴趣的信息。在过去几年中,通过计算机视觉技术努力检测异常活动。通常,该问题被制定为新颖性检测任务,其中系统在正常数据上培训,并且需要检测不符合学习的“正常”模型的事件。许多研究人员尝试了各种特征来训练不同的学习模型,以检测视频镜头中的异常行为。在这项工作中,我们建议使用半2D隐马尔可夫模型(HMM)来模拟人们的正常活动。似然不足的模型的异常值被确定为异常活动。我们的SEMI-2D HMM旨在通过假设隐藏的马尔可夫模型的当前状态不仅取决于时间方向上的先前状态,而且还模拟了人群行为的时间和空间因果关系。还取决于时间方向上的先前状态,还取决于相邻的先前状态空间位置。培训两种不同的HMMS以模拟垂直和水平空间因果信息。位置特征,流量和光学流量纹理用作模型的功能。使用公开的UCSD数据集进行评估所提出的方法,与其他技术的方法相比,我们展示了改进的性能。

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