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Research on Recognition Technology of Aluminum Profile Surface Defects Based on Deep Learning

机译:基于深度学习的铝型材表面缺陷识别技术研究

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摘要

Aluminum profile surface defects can greatly affect the performance, safety, and reliability of products. Traditional human-based visual inspection has low accuracy and is time consuming, and machine vision-based methods depend on hand-crafted features that need to be carefully designed and lack robustness. To recognize the multiple types of defects with various size on aluminum profiles, a multiscale defect-detection network based on deep learning is proposed. Then, the network is trained and evaluated using aluminum profile surface defects images. Results show 84.6%, 48.5%, 96.9%, 97.9%, 96.9%, 42.5%, 47.2%, 100%, 100%, and 43.3% average precision (AP) for the 10 defect categories, respectively, with a mean AP of 75.8%, which illustrate the effectiveness of the network in aluminum profile surface defects detection. In addition, saliency maps also show the feasibility of the proposed network.
机译:铝型材表面缺陷会极大地影响产品的性能,安全性和可靠性。传统的基于人眼的视觉检查精度低且耗时,基于机器视觉的方法依赖于需要精心设计且缺乏鲁棒性的手工特征。为了识别铝型材上各种尺寸的多种类型的缺陷,提出了一种基于深度学习的多尺度缺陷检测网络。然后,使用铝型材表面缺陷图像对网络进行训练和评估。结果显示10个缺陷类别的平均精度(AP)分别为84.6%,48.5%,96.9%,97.9%,96.9%,42.5%,47.2%,100%,100%和43.3%,平均AP为75.8%,说明了网络在铝型材表面缺陷检测中的有效性。此外,显着性图还显示了拟议网络的可行性。

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