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Expert video-surveillance system for real-time detection of suspicious behaviors in shopping malls

机译:专家视频监控系统,用于实时检测购物中心中的可疑行为

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Expert video-surveillance systems are a powerful tool applied in varied scenarios with the aim of automatizing the detection of different risk situations and helping human security officers to take appropriate decisions in order to enhance the protection of assets. In this paper, we propose a complete expert system focused on the real-time detection of potentially suspicious behaviors in shopping malls. Our video-surveillance methodology contributes several innovative proposals that compose a robust application which is able to efficiently track the trajectories of people and to discover questionable actions in a shop context. As a first step, our system applies an image segmentation to locate the foreground objects in scene. In this case, the most effective background subtraction algorithms of the state of the art are compared to find the most suitable for our expert video-surveillance application. After the segmentation stage, the detected blobs may represent full or partial people bodies, thus, we have implemented a novel blob fusion technique to group the partial blobs into the final human targets. Then, we contribute an innovative tracking algorithm which is not only based on people trajectories as the most part of state-of-the-art methods, but also on people appearance in occlusion situations. This tracking is carried out employing a new two-step method: (1) the detections-to-tracks association is solved by using Kalman filtering combined with an own-designed cost optimization for the Linear Sum Assignment Problem (LSAP); and (2) the occlusion management is based on SVM kernels to compute distances between appearance features such as GCH, LBP and HOG. The application of these three features for recognizing human appearance provides a great performance compared to other description techniques, because color, texture and gradient information are effectively combined to obtain a robust visual description of people. Finally, the resultant trajectories of people obtained in the tracking stage are processed by our expert video-surveillance system for analyzing human behaviors and identifying potential shopping mall alarm situations, as are shop entry or exit of people, suspicious behaviors such as loitering and unattended cash desk situations. With the aim of evaluating the performance of some of the main contributions of our proposal, we use the publicly available CAVIAR dataset for testing the proposed tracking method with a success near to 85% in occlusion situations. According to this performance, we corroborate in the presented results that the precision and efficiency of our tracking method is comparable and slightly superior to the most recent state-of-the-art works. Furthermore, the alarms given off by our application are evaluated on a naturalistic private dataset, where it is evidenced that our expert video-surveillance system can effectively detect suspicious behaviors with a low computational cost in a shopping mall context. (C) 2015 Elsevier Ltd. All rights reserved.
机译:专家级视频监控系统是一种功能强大的工具,可用于各种情况,以自动发现不同的风险情况,并帮助人类安全人员做出适当的决定,以加强对资产的保护。在本文中,我们提出了一个完整的专家系统,重点是对购物中心中潜在可疑行为的实时检测。我们的视频监控方法提供了一些创新的建议,这些建议构成了一个强大的应用程序,该应用程序可以有效地跟踪人员的轨迹并在商店环境中发现可疑的动作。第一步,我们的系统应用图像分割来定位场景中的前景对象。在这种情况下,将对现有技术中最有效的背景扣除算法进行比较,以找到最适合我们的专业视频监控应用程序。在分割阶段之后,检测到的斑点可能代表全部或部分人体,因此,我们实施了一种新颖的斑点融合技术,将部分斑点归为最终的人类目标。然后,我们提出了一种创新的跟踪算法,该算法不仅基于作为最新方法的大部分的人的轨迹,而且还基于遮挡情况下的人的外表。这种跟踪采用一种新的两步法进行:(1)通过将卡尔曼滤波与自己设计的线性和分配问题(LSAP)成本优化相结合,解决了跟踪与检测的关联; (2)遮挡管理基于SVM内核来计算外观特征(例如GCH,LBP和HOG)之间的距离。与其他描述技术相比,这三个特征在识别人类外观方面的应用提供了出色的性能,因为可以有效地组合颜色,纹理和渐变信息以获得对人的鲁棒的视觉描述。最后,在跟踪阶段获得的人员的最终轨迹将由我们的专业视频监控系统处理,以分析人员的行为并识别潜在的购物中心警报情况,例如人员进出商店,可疑行为(如闲逛和无人值守的现金)办公桌情况。为了评估我们提案的一些主要贡献的性能,我们使用了公开可用的CAVIAR数据集来测试所提出的跟踪方法,在遮挡情况下成功接近85%。根据这一性能,我们证实了所提出的结果,即我们的跟踪方法的精度和效率是可比的,并且略微优于最新技术。此外,我们的应用程序发出的警报是在自然主义的私有数据集上进行评估的,这表明我们的专业视频监控系统可以在购物中心环境中以较低的计算成本有效地检测可疑行为。 (C)2015 Elsevier Ltd.保留所有权利。

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