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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >NM-GAN: Noise-modulated generative adversarial network for video anomaly detection
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NM-GAN: Noise-modulated generative adversarial network for video anomaly detection

机译:NM-GaN:用于视频异常检测的噪声调制生成对抗网络

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摘要

As an important and challenging task for intelligent video surveillance systems, video anomaly detection is generally referred to as automatic recognition of video frames that contain abnormal targets, behavior or events. Although it has been widely applied in real scenes, anomaly detection remains a challenging task because of the vague definition of anomaly and the lack of the anomaly samples. Inspired by the widespread application of Generative Adversarial Network (GAN), we propose an end-to-end pipeline called NM-GAN which assembles an encode-decoder reconstruction network and a CNN-based discrimination network in a GAN-like architecture. The generalization ability of the reconstruction network is properly modulated via the adversarial learning around reconstruction error maps and noise maps. Meanwhile, the discrimination network is trained to distinguish anomaly samples from normal samples based on the reconstruction error maps. Finally, the output of the discrimination network is transferred to evaluate anomaly score of the input frame. The thorough proof-of-principle experiments and ablation tests on several popular datasets reveal that the proposed model enhance the generalization ability of the reconstruction network and the distinguishability of the discrimination network significantly. The comparison with the state-of-the-art shows that the proposed NM-GAN model outperforms most competing models in precision and stability.
机译:视频异常检测是智能视频监控系统的一项重要而富有挑战性的任务,通常被称为对包含异常目标、行为或事件的视频帧的自动识别。尽管异常检测在实际场景中得到了广泛的应用,但由于异常定义的模糊性和异常样本的缺乏,异常检测仍然是一项具有挑战性的任务。受生成性对抗网络(GAN)广泛应用的启发,我们提出了一种称为NM-GAN的端到端管道,该管道将编解码重建网络和基于CNN的识别网络组装在一个类似GAN的体系结构中。重建网络的泛化能力通过重建误差图和噪声图周围的对抗性学习得到适当调节。同时,训练判别网络,根据重建误差图区分异常样本和正常样本。最后,将判别网络的输出转换为对输入帧的异常评分进行评估。通过对几种常用数据集的原理验证实验和烧蚀实验表明,该模型显著提高了重构网络的泛化能力和判别网络的可分辨性。与现有模型的比较表明,提出的NM-GAN模型在精度和稳定性方面优于大多数竞争模型。

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