在异常检测中注入稀疏性以实现高效推理

Bokyeung Lee, Hanseok Ko
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引用次数: 1

摘要

视频异常检测是计算机视觉任务中的一个具有挑战性的问题。近年来,深度网络在异常检测中得到了成功的应用,并取得了良好的效果。现代深度网络采用许多提取重要特征的模块。异常检测方法只是通过开发网络架构和插入额外的网络来提高性能,但这些方法通常需要大量的计算负荷和训练参数。由于受到现场设备、移动系统等现实世界的限制,减少可训练参数的数量和模型容量是异常检测中的一个重要问题。此外,该方法应在不增加可训练参数的情况下开发,以提高异常检测算法的性能。本文提出了一种稀疏性注入模块,该模块加强了现有模型的特征表示,并利用稀疏性来表示异常评分函数。在实验结果中,我们的稀疏注入模块在没有额外可训练参数的情况下提高了最先进方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Injecting Sparsity in Anomaly Detection for Efficient Inference
Anomaly detection in the video is a challenging problem in computer vision tasks. Deep networks recently have been successfully applied and achieved competitive performance in anomaly detection. Modern deep networks employ many modules which extract important features. The anomaly detection approaches just developed network architecture and inserted additional networks to improve performance, however, these methods generally require a tremendous amount of computational load and training parameters. Because of limitations in the real world such as field equipment, mobile system, etc., reducing the number of trainable parameters and model capacity is an important issue in anomaly detection. Moreover, the method, which improves the performance of the anomaly detection algorithm, should be developed without additional trainable parameters. In this paper, we propose a sparsity injecting module which reinforces the feature representation of the existing model and presents the abnormality score function using sparsity. In experimental results, our sparsity injecting module improves the performance of state-of-the-art methods without additional trainable parameters.
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