Utilization of Data Augmentation Techniques in Automated Inspection Systems for Defect Detection in Metals With Limited Data

Mohammad Mohammadzadeh, Elif Elçin Günay, John Jackman, Gül E. Kremer, Paul Kremer
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Abstract

Accurate identification of defects on metal surfaces is of great interest to many industry sectors, such as the automotive and aerospace industries. In contrast to conventional manual inspection techniques, recent automated inspection systems employ deep learning models trained to detect defects rapidly and precisely. The development of these models often requires a substantial image dataset to acquire adequate knowledge of defect features and enhance their predictive accuracy. When data is limited, augmentation techniques are often used to improve the precision and accuracy of defect detection systems. This study examined the prediction performance of two object detection models, namely Faster Region-based Convolutional Neural Network (Faster R-CNN) and You Only Look Once version 8 (YOLOv8), to identify dent defects in limited images of cast iron cylinder head surfaces. The original image set contains 46 images with 563 dents. To overcome limited data availability, common image augmentation techniques along with a copy-paste method were applied. Results show that standard augmentation improved YOLOv8 accuracy by 8.00% and average precision (AP) by 3.00%. On the other hand, the copy-paste technique achieved a 20.00% increase in accuracy and a 1% increase in AP with just 200 synthetic dents. These results provide support for using the copy-paste augmentation strategy to enhance defect detection performance, with a limited dataset, contributing to more accurate defect identification in remanufacturing processes.

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数据增强技术在有限数据金属缺陷自动检测系统中的应用
金属表面缺陷的准确识别是许多工业部门,如汽车和航空航天工业非常感兴趣的。与传统的人工检测技术相比,最近的自动检测系统采用经过训练的深度学习模型来快速准确地检测缺陷。这些模型的开发通常需要大量的图像数据集来获得足够的缺陷特征知识并提高其预测精度。当数据有限时,通常使用增强技术来提高缺陷检测系统的精度和准确性。本研究检测了两种目标检测模型的预测性能,即Faster区域卷积神经网络(Faster R-CNN)和You Only Look Once version 8 (YOLOv8),用于识别铸铁缸盖表面有限图像中的凹痕缺陷。原始图像集包含46个图像,有563个凹痕。为了克服有限的数据可用性,应用了常见的图像增强技术以及复制-粘贴方法。结果表明,标准增强后YOLOv8的准确率提高了8.00%,平均精度(AP)提高了3.00%。另一方面,复制粘贴技术的准确性提高了20.00%,AP增加了1%,只有200个合成凹痕。这些结果为在有限的数据集上使用复制-粘贴增强策略来提高缺陷检测性能提供了支持,有助于更准确地识别再制造过程中的缺陷。
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