Automated defect inspection of LED chip using deep convolutional neural network

被引:1
|
作者
Hui Lin
Bin Li
Xinggang Wang
Yufeng Shu
Shuanglong Niu
机构
[1] HUST,State Key Laboratory of Digital Manufacturing Equipment and Technology, School of Mechanical Science and Engineering
[2] HUST,Media and Communication Lab, School of Electronic Information and Communications
来源
关键词
Defect inspection; Convolutional neural network; Class activation mapping; LED chip; Classification; Localization;
D O I
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中图分类号
学科分类号
摘要
Defect inspection is a vital part of the production process to control the quality of LED chip. On the one hand, traditional methods are time-consuming, which rely on models badly and require rich operation experience. On the other hand, defect localization cannot be achieved by using traditional networks. To solve these problems, we achieve the application of convolutional neural network (CNN) for LED chip defect inspection. Built in the CNN, a class activation mapping technique is proposed to localize defect regions without using region-level human annotations. Further, LED chip datasets are collected for training the CNN. It is worth to emphasize that the chip defect classification and localization tasks are completed in a single CNN which is very fast and convenient. The proposed CNN based defect inspector named LEDNet achieves impressively high performance on the inspection of LED chip defects (line blemishes and scratch marks) with an inaccuracy of 5.04%, localizing exact defect regions as well.
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收藏
页码:2525 / 2534
页数:9
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