Image Defect Detection and Segmentation Algorithm of Solar Cell Based on Convolutional Neural Network

Song Tian, Weijun Li, Shuang Li, Guangyan Tian, Linjun Sun, X. Ning
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引用次数: 4

Abstract

The use of infrared or electroluminescence(EL) images of solar cell modules for defect detection is a very important method in non-destructive testing. Traditionally, this work is done by skilled technicians, which is time-consuming and susceptible to subjective factors. The surface defect detection method of solar cells based on machine learning has become one of the main research directions because of its high efficiency and convenience. For this reason, this paper proposes an improved fusion model based on VGGNet and U-Net++, which is used for defect detection and segmentation of EL images of solar cells. In the defect detection stage, the input image is processed pertinently, and by modifying the convolutional layer and the fully connected layer of the network, while improving the performance of the algorithm, it accelerates the convergence and avoids the phenomenon of over-fitting. In the defect segmentation stage, the defect location is marked based on the public data set, which is used for the training of each segmentation model, and the effect of different segmentation networks is compared to select a reasonable model. The experimental results show that the defect detection accuracy of the improved VGG16 network on the elpv-dataset is 95.2%, and the U-Net++ defect segmentation model has an average MIoU value of 0.955, which is better than other existing methods.
基于卷积神经网络的太阳能电池图像缺陷检测与分割算法
利用太阳能电池组件的红外或电致发光图像进行缺陷检测是一种非常重要的无损检测方法。传统上,这项工作是由熟练的技术人员完成的,这既耗时又容易受到主观因素的影响。基于机器学习的太阳能电池表面缺陷检测方法因其高效、便捷成为主要研究方向之一。为此,本文提出了一种基于VGGNet和U-Net++的改进融合模型,用于太阳能电池EL图像的缺陷检测和分割。在缺陷检测阶段,对输入图像进行针对性处理,通过修改网络的卷积层和全连接层,在提高算法性能的同时,加快了收敛速度,避免了过拟合现象。在缺陷分割阶段,基于公开数据集对缺陷位置进行标记,用于各分割模型的训练,并比较不同分割网络的效果,选择合理的模型。实验结果表明,改进的VGG16网络在elpv数据集上的缺陷检测准确率为95.2%,U-Net++缺陷分割模型的平均MIoU值为0.955,优于现有的其他方法。
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