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Detection of apple defect using laser-induced light backscattering imaging and convolutional neural network

机译:使用激光诱导光反向散射成像和卷积神经网络检测苹果缺陷

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The similarity of gray characteristics and shapes of the defects, stems, and calyxes in apple images is a difficult challenge for automatic identification and detection of apple defects in the machine vision field. This paper attempts towards finding an automatic and efficient way to identify apple defects. An automatic detection method is proposed for apple defects based on laser-induced light backscattering imaging and convolutional neural network (CNN) algorithm. Laser backscattering spectroscopic images of apples are obtained using semiconductor laser. We take preprocessing steps to get the finest image dataset for CNN. An AlexNet model with an 11-layer structure is established and trained to identify apple defects. We analyze how well the model does with the recognition effects of apple defects. The proposed CNN model for the detection of apple defects achieves a higher recognition rate of 92.5%, and the accuracy is better than conventional machine learning algorithms. The method based on laser backscattering imaging analysis and CNN theory provides an idea and theoretical basis for efficient, non-destructive, and online detection of fruits quality. (C) 2019 Published by Elsevier Ltd.
机译:苹果图像中缺陷,茎和萼状缺陷,茎和萼形状的相似性是一种难以识别和检测机器视觉领域的苹果缺陷的挑战。本文试图寻找自动和有效的方法来识别苹果缺陷。基于激光诱导光反向散射成像和卷积神经网络(CNN)算法的苹果缺陷提出了一种自动检测方法。使用半导体激光获得苹果的激光反向散射光谱图像。我们采用预处理步骤来获取CNN的最佳图像数据集。建立和培训具有11层结构的AlexNet模型,以识别苹果缺陷。我们分析模型对苹果缺陷的识别效果的表现如何。拟议的用于检测苹果缺陷的CNN模型实现了92.5%的更高识别率,并且精度优于传统机器学习算法。基于激光反向散射成像分析和CNN理论的方法为高效,无损和在线检测水果质量提供了一种理念和理论依据。 (c)2019年由elestvier有限公司出版

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