基于完全循环一致生成对抗网络的异常检测。

Zahra Dehghanian, Saeed Saravani, Maryam Amirmazlaghani, Mohamad Rahmati
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引用次数: 0

摘要

本研究提出了一种鲁棒的对抗方法,用于现实场景中的异常检测,利用生成对抗神经网络(GANs)的力量,通过重建误差的周期一致性。传统的方法常常因为类准确度的高差异而动摇,使得它们在不同的异常类型上无效。我们提出的模型通过在训练过程中引入创新的信息流并将其作为新的鉴别器集成到框架中来解决这些挑战,从而优化训练动态。此外,它在输入空间中使用补充分布来引导重构向正态数据分布。这种调整明显地隔离了异常实例,提高了检测精度。此外,还开发了两种独特的异常评分机制来增强检测能力。对六个不同数据集的综合评估证实了我们的模型优于一类异常检测基准。学术界可以在Github.a上公开访问该实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection Using Complete Cycle Consistent Generative Adversarial Network.

This research presents a robust adversarial method for anomaly detection in real-world scenarios, leveraging the power of generative adversarial neural networks (GANs) through cycle consistency in reconstruction error. Traditional approaches often falter due to high variance in class-wise accuracy, rendering them ineffective across different anomaly types. Our proposed model addresses these challenges by introducing an innovative flow of information in the training procedure and integrating it as a new discriminator into the framework, thereby optimizing the training dynamics. Furthermore, it employs a supplementary distribution in the input space to steer reconstructions toward the normal data distribution. This adjustment distinctly isolates anomalous instances and enhances detection precision. Also, two unique anomaly scoring mechanisms were developed to augment detection capabilities. Comprehensive evaluations on six varied datasets have confirmed that our model outperforms one-class anomaly detection benchmarks. The implementation is openly accessible to the academic community, available on Github.a.

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