Anomaly Detection Combining Discriminative and Generative Models

Kyota Higa, Hideaki Sato, Soma Shiraishi, Katsumi Kikuchi, K. Iwamoto
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引用次数: 1

Abstract

This paper proposes a method to accurately detect anomaly from an image by combining features extracted by discriminative and generative models. Automatic anomaly detection is a key factor for reducing operation costs of visual inspection in a wide range of domains. The proposed method consists of three sub-networks. The first sub-network is convolutional neural networks as a discriminative model for extracting features to distinguish between anomaly and normal. The second subnetwork is a variational autoencoder as a generative model to extract features representing normal. The third sub-network is neural networks to discriminate between anomaly and normal on the basis of features from the discriminative and generative models. Experiments were conducted using pseudo anomalous images generated by superimposing anomaly which was manually extracted from real images. Results of the experiments show that the proposed method improves the area under the curve by 0.08-0.33 points compared with that of a conventional method. With high accuracy, automatic visual inspection systems can be implemented for reducing operation costs.
结合判别和生成模型的异常检测
本文提出了一种结合判别模型和生成模型提取的特征来准确检测图像异常的方法。在广泛的领域中,自动异常检测是降低视觉检测运行成本的关键因素。该方法由三个子网组成。第一个子网络是卷积神经网络作为一种判别模型,用于提取特征以区分异常和正常。第二个子网络是一个变分自编码器,作为一个生成模型来提取代表常态的特征。第三个子网络是基于判别模型和生成模型的特征来区分异常和正常的神经网络。利用人工提取的真实图像上的异常叠加生成的伪异常图像进行实验。实验结果表明,与传统方法相比,该方法的曲线下面积提高了0.08 ~ 0.33个点。高精度的自动目视检测系统可用于降低操作成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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