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首页> 外文期刊>IEEE transactions on industrial informatics >A Real-Time Defect Detection Method for Digital Signal Processing of Industrial Inspection Applications
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A Real-Time Defect Detection Method for Digital Signal Processing of Industrial Inspection Applications

机译:工业检测应用数字信号处理的实时缺陷检测方法

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摘要

The signal processing of industrial big data (IBD) is a challenging task, owing to the complex working scenarios and the lack of annotations. Defect detection, which is an important subject of IBD research works, has shown its effectiveness in digital signal processing of industrial inspection applications in many previous studies. This article proposes a novel defect detection method based on deep learning for digital signal processing of industrial inspection applications. In our method, a module named feature collection and compression network is applied to merge multiscale feature information. Then, a new pooling method named Gaussian weighted pooling, which provides more precise location information, is used to replace region of interest (ROI) pooling. Experiment results show that our method gets improvements in both accuracy and efficiency, with mAP/AP(50) of 41.8/80.2 at 33 fps on NEU-DET, which satisfies the requirement of real-time systems.
机译:由于复杂的工作场景和缺乏注释,工业大数据(IBD)的信号处理是一个具有挑战性的任务。缺陷检测是IBD研究作品的重要主题,在许多先前研究中显示了其在工业检测应用的数字信号处理中的有效性。本文提出了一种基于深度学习的新型缺陷检测方法,用于工业检测应用的数字信号处理。在我们的方法中,应用了一个名为特征集合和压缩网络的模块来合并多尺度功能信息。然后,用于称为高斯加权池的新汇集方法,该方法提供了更精确的位置信息,用于替换兴趣区域(ROI)池。实验结果表明,我们的方法在准确性和效率方面取得了改进,使用41.8 / 80.2的地图/ AP(50)在Neu-Det上的33 FPS,满足实时系统的要求。

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