论文标题
一个类潜在正规化网络的异常检测
Anomaly Detection by One Class Latent Regularized Networks
论文作者
论文摘要
异常检测是具有许多现实应用应用的计算机视觉领域的一个基本问题。鉴于属于正常类别的各种图像,从某些分布中出现,此任务的目的是构造模型以检测属于异常实例的分布外图像。半监督的生成对抗网络(GAN)的方法最近在异常检测任务中广受欢迎。但是,GAN的培训过程仍然不稳定且具有挑战性。为了解决这些问题,提出了一个新颖的对抗双自动编码器网络,其中训练数据的基本结构不仅在潜在特征空间中捕获,而且可以以歧视方式进一步限制潜在表示的空间,从而导致更准确的检测器。此外,被视为鉴别器的辅助自动编码器可以获得更稳定的培训过程。实验表明,我们的模型可在MNIST和CIFAR10数据集以及GTSRB停止符号数据集上实现最新结果。
Anomaly detection is a fundamental problem in computer vision area with many real-world applications. Given a wide range of images belonging to the normal class, emerging from some distribution, the objective of this task is to construct the model to detect out-of-distribution images belonging to abnormal instances. Semi-supervised Generative Adversarial Networks (GAN)-based methods have been gaining popularity in anomaly detection task recently. However, the training process of GAN is still unstable and challenging. To solve these issues, a novel adversarial dual autoencoder network is proposed, in which the underlying structure of training data is not only captured in latent feature space, but also can be further restricted in the space of latent representation in a discriminant manner, leading to a more accurate detector. In addition, the auxiliary autoencoder regarded as a discriminator could obtain an more stable training process. Experiments show that our model achieves the state-of-the-art results on MNIST and CIFAR10 datasets as well as GTSRB stop signs dataset.