Application of AI intelligent vision detection technology using deep learning algorithm

IF 0.6 Q4 ENGINEERING, MECHANICAL
Yan Huang
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引用次数: 0

Abstract

This study aims to design efficient and reliable artificial intelligence vision detection models to improve detection efficiency and accuracy. The study filters defect-free images by image preprocessing and region of interest detection techniques. AlexNet network is enhanced by introducing attention mechanism modules, deep separable convolutions, and more to effectively boost the network's feature extraction capacity. An area convolutional neural network is developed to rapidly identify and locate defects on steel plate surfaces, utilizing an enhanced AlexNet network for feature extraction. Results demonstrated that the algorithm attained an average detection rate of 98 % and can identify defects in a minimal time of only 0.0011 seconds. For the detection of six types of steel plate defects, the average accuracy of the optimized fast regional convolutional neural network reached more than 0.9, especially for the detection of small-size defects with excellent performance. This improved AlexNet network has a great advantage in F1 value. The conclusion of the study shows that the designed artificial intelligence vision detection model has high detection accuracy, speed, and performance stability in steel plate surface defect detection and has a wide range of application prospects.
利用深度学习算法应用人工智能智能视觉检测技术
本研究旨在设计高效可靠的人工智能视觉检测模型,以提高检测效率和准确性。采用图像预处理和兴趣区域检测技术对无缺陷图像进行滤波。AlexNet网络通过引入注意机制模块、深度可分离卷积等来增强网络的特征提取能力。利用增强的AlexNet网络进行特征提取,开发了一种区域卷积神经网络来快速识别和定位钢板表面缺陷。结果表明,该算法的平均检测率为98%,可以在0.0011秒的最短时间内识别出缺陷。对于6类钢板缺陷的检测,优化后的快速区域卷积神经网络的平均精度达到0.9以上,特别是对小尺寸缺陷的检测,性能优异。这种改进的AlexNet网络在F1值上有很大的优势。研究结论表明,所设计的人工智能视觉检测模型在钢板表面缺陷检测中具有较高的检测精度、速度和性能稳定性,具有广泛的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Measurements in Engineering
Journal of Measurements in Engineering ENGINEERING, MECHANICAL-
CiteScore
2.00
自引率
6.20%
发文量
16
审稿时长
16 weeks
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