Surface Defect Image Classification of Lithium Battery Pole Piece Based on Deep Learning
Weisheng MAO,
Linsheng LI,
Yifan TAO
et al.
Abstract:Aiming at the problem of low classification accuracy of surface defects of lithium battery pole pieces by traditional classification methods, an image classification algorithm for surface defects of lithium battery pole piece based on deep learning is proposed in this paper. Firstly, Wavelet Threshold and Histogram Equalization are used to preprocess the detect image to weaken influence of noise in non-defect regions and enhance defect features. Secondly, a VGG-InceptionV2 network with better performance is pr… Show more
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