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An improve feature selection algorithm for defect detection of glass bottles

机译:一种改进特征选择算法,用于玻璃瓶的缺陷检测

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Defect detection is an effective technology to guarantee the quality of the products. In this paper, the defect detection of glass bottles is taken as a classification problem. Features abstracted from the knocking sound signals of the glass bottles are used as the input of the classifier. Because the detection of bottles usually should be done in real time, feature selection which could reduce the dimensionality of data and simplify the learned model has become an important technology in this work. Based on our previous proposed algorithm named Shuffled Frog Leaping Algorithm-Improved Minimal Redundancy Maximal Relevance(SFLA-ImRMR), this paper focuses on improving the classification performance and proposes an improved feature selection algorithm. In the proposed algorithm, feature selection is combined with the training of the classifier, the wrapper approach is used to evaluate the selected features, Shuffled Frog Leaping Algorithm(SFLA) is used as the search algorithm, and BP Neural Network(BPNN) is used as the classifier. The proposed algorithm is named SFLA-ImRMR-BP and tested in the data sets built by the knocking sound signals of the glass bottles. Compared with SFLA-ImRMR and some other feature selection algorithms based on Evolutionary Computation(EC), features selected by SFLA-ImRMR-BP can achieve the highest classification performance. (C) 2020 Published by Elsevier Ltd.
机译:缺陷检测是一种保证产品质量的有效技术。在本文中,玻璃瓶的缺陷检测被视为分类问题。从玻璃瓶的敲击声信号抽象的功能用作分类器的输入。因为瓶子的检测通常应该实时完成,所以可以减少数据的维度的特征选择,并简化学习模型已经成为这项工作的重要技术。基于我们以前的提出算法名为Shuffled Frog跳跃算法 - 提高了最小的冗余最大化(SFLA-IMRMR),本文侧重于提高分类性能并提出改进的特征选择算法。在所提出的算法中,特征选择与分类器的训练相结合,包装方法用于评估所选功能,随着Shuffled Frog跳跃算法(SFLA)用作搜索算法,使用BP神经网络(BPNN)作为分类器。所提出的算法名为SFLA-IMRMR-BP,并在由玻璃瓶的爆震声信号构建的数据集中进行测试。与基于进化计算(EC)的SFLA-IMRMR和一些其他特征选择算法相比,SFLA-IMRMR-BP选择的功能可以实现最高的分类性能。 (c)2020由elestvier有限公司发布

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