热轧钢表面锈蚀缺陷深度学习检测

Wai Yang Chen, Kein Huat Chua, Mohammad Babrdel Bonab, Kuew Wai Chew, Stella Morris, Li Wang
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引用次数: 1

摘要

目前,传统的热轧钢缺陷检测和判定方法是基于标准准则进行人工检测。然而,由于人为错误,评估的质量并不一致。因此,有必要开发一种自动检测系统,根据锈蚀的严重程度决定是否保留或释放热轧钢。近年来,人工智能已成为产品缺陷检测系统开发中最常被引用的话题之一。本项目旨在开发基于深度学习的热轧钢锈蚀检测系统,以辅助决策。检测过程可分为热轧钢检测、防锈检测和决策过程。模型中分别采用对象检测技术和颜色检测技术进行热轧钢检测和防锈检测。在本研究中,我们测试了三种类型的深度学习目标检测框架:Single Shot Detector (SSD) MobileNetv1、SSD MobileNetv2和Faster RCNN。由于Single Shot Detector (SSD) MobileNetv2在精度和推理速度方面具有最佳性能,因此选择其作为目标检测的深度学习架构,并使用HSV (Hue Saturation Value)颜色模型进行颜色检测。保留/释放决策输出基于图像中检测到的生锈区域的百分比。仿真结果表明,保持和释放的防锈缺陷检测准确率分别为96.05%和97.92%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Hot Rolled Steel Surface Rust Defects Detection
Currently, the conventional approach for the hot rolled steel defect inspections and decisions are made manually based on the standard guideline. However, the quality of the assessments is not consistent due to human error. Therefore, it is essential to develop an automatic inspection system that can decide whether to hold or release the rusted hot rolled steel based on its severity. Artificial intelligence has recently become one of the most frequently cited topics in the development of product defects inspection systems. This project aims to develop a deep learning-based hot rolled steels rust detection system to assist decision-making. The detection processes can be divided into hot rolled steel detection, rust detection, and the decision-making process. Object detection and color detection techniques are adopted in the model for hot rolled steel detection and rust detection respectively. In this study, there are three types of deep learning object detection framework were tested which are Single Shot Detector (SSD) MobileNetv1, SSD MobileNetv2 and Faster RCNN. As Single Shot Detector (SSD) MobileNetv2 has the optimum performance in terms of accuracy and inference speed, it was chosen as the deep learning architecture for the object detection while Hue Saturation Value (HSV) color model is used for the color detection. The hold/release decision-making output is based on the percentage of the detected rusty area from the image. Based on the simulation results, the accuracy of the rust defect detection for hold and release are 96.05% and 97.92%, respectively.
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