Recognition of surface defects of aluminum profiles based on convolutional neural network

Wanbo Luo
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引用次数: 1

Abstract

Many manufacturers will strictly control the quality of products, especially the surface quality of products. Under the same conditions, the better the surface quality of the product, the more competitive it is. Many aluminum profile benchmarking companies have pain points with flaws on the surface of their products. Due to the work mistakes of the workers in the production workshop, unqualified aluminum materials need to be eliminated in the product production control, and the traditional method is to rely on the assembly line workers to check one by one. As the company’s production automation continues to increase, the shortcomings of manual inspection methods have become increasingly prominent. Aiming at the common types of surface defects in the company’s aluminum profile production process, this paper introduces the deep learning method into the identification of aluminum profile surface defects and uses convolutional neural network to identify the surface defects of aluminum profiles. The advantages and disadvantages of different aluminum profile surface defect recognition models such as AlexNet, VGG19 and Inception V4 are analyzed. Finally, according to the recognition effect of the aluminum profile data set, the recognition model of aluminum profile surface defects based on Inception V4 is selected as the optimal model.
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基于卷积神经网络的铝型材表面缺陷识别
很多厂家都会严格把控产品的质量,尤其是产品的表面质量。在同等条件下,产品的表面质量越好,就越具有竞争力。许多铝型材标杆公司都有产品表面缺陷的痛点。由于生产车间工人的工作失误,在产品生产控制中需要淘汰不合格的铝材,传统的方法是依靠装配线工人逐一检查。随着公司生产自动化程度的不断提高,人工检验方式的缺点日益突出。针对该公司铝型材生产过程中常见的表面缺陷类型,本文将深度学习方法引入到铝型材表面缺陷的识别中,利用卷积神经网络对铝型材表面缺陷进行识别。分析了AlexNet、VGG19、Inception V4等铝型材表面缺陷识别模型的优缺点。最后,根据铝型材数据集的识别效果,选择基于Inception V4的铝型材表面缺陷识别模型作为最优模型。
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