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Deep Learning with a Spatiotemporal Descriptor of Appearance and Motion Estimation for Video Anomaly Detection

机译:深度学习时空描述符的外观和运动估计用于视频异常检测

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The automatic detection and recognition of anomalous events in crowded and complex scenes on video are the research objectives of this paper. The main challenge in this system is to create models for detecting such events due to their changeability and the territory of the context of the scenes. Due to these challenges, this paper proposed a novel HOME FAST (Histogram of Orientation, Magnitude, and Entropy with Fast Accelerated Segment Test) spatiotemporal feature extraction approach based on optical flow information to capture anomalies. This descriptor performs the video analysis within the smart surveillance domain and detects anomalies. In deep learning, the training step learns all the normal patterns from the high-level and low-level information. The events are described in testing and, if they differ from the normal pattern, are considered as anomalous. The overall proposed system robustly identifies both local and global abnormal events from complex scenes and solves the problem of detection under various transformations with respect to the state-of-the-art approaches. The performance assessment of the simulation outcome validated that the projected model could handle different anomalous events in a crowded scene and automatically recognize anomalous events with success.
机译:视频拥挤复杂场景中异常事件的自动检测与识别是本文的研究目标。该系统中的主要挑战是创建用于检测此类事件的模型,因为这些事件具有可变性和场景上下文的范围。由于这些挑战,本文提出了一种基于光流信息来捕获异常的新颖的HOME FAST(定向,幅值和熵直方图,具有快速加速的分段测试)时空特征提取方法。该描述符在智能监视域内执行视频分析并检测异常。在深度学习中,训练步骤从高级和低级信息中学习所有正常模式。这些事件在测试中进行了描述,如果它们与正常模式不同,则被认为是异常的。总体上提出的系统从复杂场景中可靠地识别局部和全局异常事件,并且相对于最新方法解决了在各种变换下的检测问题。对模拟结果的性能评估证实,该投影模型可以处理拥挤场景中的各种异常事件,并能够成功地自动识别异常事件。

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