基于极限学习机的玻璃瓶口缺陷检测方法研究
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引用本文:黎牧星,黄志鸿.基于极限学习机的玻璃瓶口缺陷检测方法研究[J].计算技术与自动化,2016,(4):117-120
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作者单位
黎牧星,黄志鸿 (1. 湖南大学 机器人视觉感知与控制技术国家工程实验室 湖南 长沙410082
2. 湖南师范大学附属中学,湖南 长沙410006) 
中文摘要:针对目前玻璃空瓶回收再生产过程中造成瓶口缺陷破损的在线实时检测难题,提出一种基于极限学习机(Extreme Learning Machine, ELM)的检测算法。首先对采集的瓶口进行预处理,通过研究表面缺陷,提取灰度方差等6种表面特征。然后运用遗传算法对极限学习机的输入层层的阈值和权值进行优化,提高算法的检测精度。最后现场选取569个样本对所设计ELM分类器进行训练学习与测试,并与LVQ算法、BP分类器对比实验。结果表明该算法能够满足对机器视觉检测系统缺陷检测高速高精度的要求。
中文关键词:缺陷检测  机器视觉  特征提取  极限学习机
 
Research on Beer Bottle Defect Detection Method Based on Extreme Learning Machine
Abstract:A novel defect detection method based on Extreme Learning Machine was proposed for beer bottle mouth, which tackles with the problem of beer online real-time defect detection in recycling and reproduction process. The proposed method consists of the following steps. First, the bottle mouth is preprocessed by researching on the characteristics of surface defect bottle mouth, which extracts six kinds of surface features such as gray scale variance. Then, to improve the detection accuracy, we optimize Extreme Learning Machine (ELM) input and output layers of threshold and weight by using genetic algorithm. Finally, 569 samples from experimental test platform are selected to design the ELM classifier, and experimental results are compared with LVQ algorithm and BP algorithm. Experimental results show that the proposed ELM based classifier is able to obtain much higher speed and higher detection accuracy, which can meet the requirements of the production enterprise for machine vision system.
keywords:defect detection  machine vision  feature extraction  extreme learning machine
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