Automated Detection of Defects with Casting DR Image Based on Deep Learning

Jinyangzi Fu, Kuan Shen
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引用次数: 0

Abstract

In the production process of castings, due to the constraints of casting technology and production conditions, different types and degrees of defects will inevitably occur inside the casting. The traditional defect detection needs to manually determine the position and type of the defect in the Digital Radiography (DR) image of the casting, which is affected by the subjective initiative of people. For the disadvantages of manual judgment, we propose a method for detecting defects in DR images of castings based on deep learning. Firstly, the image is smoothed by guided filtering, and perform image enhancement on the smoothed image. Subsequently, we propose an improved Cascade Mask R-CNN network based on the Cascade Mask R-CNN to realize the detection and grading of the defects in the DR image of the casting. The experimental results show that the improved Cascade Mask R-CNN network has greatly improved the shrinkage defect recall rate of castings, reduced the missed defect rate, and improved the detection precision. It is proved that the improved Cascade Mask R-CNN network can better realize the detection of casting defects.
基于深度学习的铸造DR图像缺陷自动检测
在铸件的生产过程中,由于受到铸造工艺和生产条件的制约,铸件内部不可避免地会出现不同类型和程度的缺陷。传统的缺陷检测需要人工在铸件的数字射线成像(DR)图像中确定缺陷的位置和类型,受人主观能动性的影响。针对人工判断的缺点,提出了一种基于深度学习的铸件DR图像缺陷检测方法。首先对图像进行引导滤波平滑,并对平滑后的图像进行图像增强。随后,我们在Cascade Mask R-CNN的基础上提出了改进的Cascade Mask R-CNN网络,实现了铸件DR图像中缺陷的检测和分级。实验结果表明,改进的级联掩模R-CNN网络大大提高了铸件的收缩缺陷召回率,降低了缺陷率,提高了检测精度。实验证明,改进的级联掩模R-CNN网络能更好地实现铸件缺陷的检测。
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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