Improved DCGAN for Solar Cell Defect Enhancement

Deng Hao, Yilihamu Yaermaimaiti
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Abstract

Aiming at the problems of serious overfitting and poor training results caused by too small a data set of solar cell defect images in the process of deep learning training, an improved DCGAN generation countermeasure network model is proposed. Firstly, CLAHE preprocessing is used to enhance the defect image features, which can improve the defect contrast and avoid excessive noise enhancement at the same time; Secondly, the NAM attention module is introduced into DCGAN to improve the quality of the defect image; Finally, S-RELU is used to replace Leaky Relu in DCGAN discriminator to avoid the influence of too much negative information with gradient on the decision of discriminator. The experimental results of classification and detection show that the data enhancement effect of the improved model is better. Compared with the original model, its accuracy is improved by 2.51%, and the mapped value is improved by 1.92%, which proves the effectiveness of the proposed algorithm.
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改进的DCGAN用于太阳能电池缺陷增强
针对太阳能电池缺陷图像在深度学习训练过程中数据集过小导致过拟合严重、训练效果差的问题,提出了一种改进的DCGAN生成对策网络模型。首先,采用CLAHE预处理对缺陷图像特征进行增强,在提高缺陷对比度的同时避免了过度的噪声增强;其次,在DCGAN中引入NAM关注模块,提高缺陷图像的质量;最后,利用S-RELU代替DCGAN鉴别器中的Leaky Relu,避免了梯度负信息过多对鉴别器决策的影响。分类和检测实验结果表明,改进模型的数据增强效果较好。与原模型相比,其精度提高了2.51%,映射值提高了1.92%,证明了算法的有效性。
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