基于卷积自编码器的手机Logo图像异常检测

Muyuan Ke, Chunyi Lin, Qinghua Huang
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引用次数: 21

摘要

手机上打印有Logo图像。标识图像异常检测是智能制造中重要的质量控制任务。在实际应用中,生产线上没有足够的负样品,我们无法研究它们与正常样品的区别。本文提出了一种基于卷积自编码器(CAE)的无监督学习方法来生成样本模板,并通过对比测试图像与自适应模板来检测异常信息。首先,引入了几种数据增强方法来扩大正样本的规模,以提高CAE的性能。其次,介绍了该CAE模型的拓扑结构。第三,介绍了Logo图像中异常信息的检测与定位的图像处理方法。在三组不同的Logo图像上进行的一系列实验表明,我们提出的方法可以有效地检测出图像中的大部分异常,平均准确率达到98.9%。
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Anomaly detection of Logo images in the mobile phone using convolutional autoencoder
There are Logo images printed in the mobile phone. Anomaly detection of Logo image is an important quality control task in the intelligent manufacture. In real applications, there are not enough negative samples in the production line for us to study their difference from normal samples. In this paper, we propose an unsupervised learning method based on convolutional autoencoder (CAE) to generate the template of sample and detect the abnormal information through comparing test images with the adaptive template. Firstly, several methods of data augmentation are introduced to expand the scale of positive samples, aiming to improve the performance of CAE. Secondly, the topology of proposed CAE model is introduced. Thirdly, we introduce the image processing methods to detect and locate the abnormal information in the Logo image. A series of experiments on three group of different Logo image have shown that the method we proposed can effectively detect most of the anomalies in the image and achieve the average accuracy of 98.9%.
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