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Anomaly Detection in Videos Using Two-Stream Autoencoder with Post Hoc Interpretability

机译:使用双流自身辐射具有后HOC解释性的视频中的异常检测

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The growing interest in deep learning approaches to video surveillance raises concerns about the accuracy and efficiency of neural networks. However, fast and reliable detection of abnormal events is still a challenging work. Here, we introduce a two-stream approach that offers an autoencoder-based structure for fast and efficient detection to facilitate anomaly detection from surveillance video without labeled abnormal events. Furthermore, we present post hoc interpretability of feature map visualization to show the process of feature learning, revealing uncertain and ambiguous decision boundaries in the video sequence. Experimental results on Avenue, UCSD Ped2, and Subway datasets show that our method can detect abnormal events well and explain the internal logic of the model at the object level.
机译:对视频监控的深度学习方法的兴趣越来越令人担忧神经网络的准确性和效率。 然而,快速可靠地检测异常事件仍然是一个具有挑战性的工作。 在这里,我们介绍了一种双流方法,提供了一种基于自动化的结构,用于快速和有效的检测,以便于从监视视频中检测不具有标记的异常事件的异常检测。 此外,我们介绍了特征映射可视化的后HOC可解释性,以显示特征学习的过程,在视频序列中揭示了不确定和模糊的决策边界。 大街,UCSD PED2和地铁数据集上的实验结果表明,我们的方法可以良好地检测异常事件并解释对象级别的模型内部逻辑。

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