Anomaly Detection with Adversarially Learned Perturbations of Latent Space

Vahid Reza Khazaie, A. Wong, John Taylor Jewell, Y. Mohsenzadeh
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引用次数: 3

Abstract

Anomaly detection is to identify samples that do not conform to the distribution of the normal data. Due to the unavailability of anomalous data, training a supervised deep neural network is a cumbersome task. As such, unsupervised methods are preferred as a common approach to solve this task. Deep autoencoders have been broadly adopted as a base of many unsupervised anomaly detection methods. However, a notable shortcoming of deep autoencoders is that they provide insufficient representations for anomaly detection by generalizing to reconstruct outliers. In this work, we have designed an adversarial framework consisting of two competing components, an Adversarial Distorter, and an Autoencoder. The Adversarial Distorter is a convolutional encoder that learns to produce effective perturbations and the autoencoder is a deep convolutional neural network that aims to reconstruct the images from the perturbed latent feature space. The networks are trained with opposing goals in which the Adversarial Distorter produces perturbations that are applied to the en-coder's latent feature space to maximize the reconstruction error and the autoencoder tries to neutralize the effect of these perturbations to minimize it. When applied to anomaly detection, the proposed method learns semantically richer representations due to applying perturbations to the feature space. The proposed method outperforms the existing state-of-the-art methods in anomaly detection on image and video datasets.
基于潜空间逆学习扰动的异常检测
异常检测是识别不符合正常数据分布的样本。由于异常数据的不可用性,训练监督深度神经网络是一项繁琐的任务。因此,无监督方法是解决此任务的常用方法。深度自编码器已被广泛采用为许多无监督异常检测方法的基础。然而,深度自编码器的一个显著缺点是,通过泛化重建异常值来提供不足的异常检测表示。在这项工作中,我们设计了一个对抗性框架,由两个相互竞争的组件组成,一个对抗性扭曲器和一个自动编码器。对抗性失真器是一种学习产生有效扰动的卷积编码器,自编码器是一种深度卷积神经网络,旨在从扰动的潜在特征空间重构图像。网络以相反的目标进行训练,其中对抗性失真器产生摄动,这些摄动应用于编码器的潜在特征空间以最大化重建误差,而自编码器试图中和这些摄动的影响以最小化重构误差。当应用于异常检测时,由于对特征空间施加扰动,该方法学习到更丰富的语义表示。该方法在图像和视频数据集的异常检测方面优于现有的先进方法。
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