RIAWELC:用于焊缝缺陷自动分类的新型射线图像数据集

Benito Totino, F. Spagnolo, S. Perri
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引用次数: 0

摘要

近年来,射线图像中焊接缺陷的提取、分析和分类在一些工业制造中受到了极大的关注。目前,计算机视觉在许多实际应用中提供了相当高的精度,但使自动过程在该领域也接近仍然是一个挑战。例如,卷积神经网络(CNN)被广泛认为是高效和准确的分类结构,但是,由于特定数据集的可用性有限,训练CNN对焊接缺陷进行分类并非易事。本文提出了一个新的数据集,收集了24,407张与几种焊接缺陷相关的射线图像:缺乏穿透,裂纹,孔隙和无缺陷。提出的焊接缺陷射线图像数据集免费发布给研究社区。作为应用示例,该数据集已用于训练定制版本的SqueezeNet CNN,测试准确率高于93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RIAWELC: A Novel Dataset of Radiographic Images for Automatic Weld Defects Classification
In the last few years, extracting, analyzing and classifying welding defects in radiographic images received a great deal of attention in several industry manufacturing. Nowadays, computer vision affords considerable accuracy in many practical applications, but making automatic processes approachable also in this field is still a challenge. As an example, Convolutional Neural Networks (CNNs) are widely recognized as efficient and accurate classification structures, but, due to the limited availability of specific datasets, training a CNN to classify welding defects is not trivial. This paper presents a new dataset collecting 24,407 radiographic images related to several classes of welding defects: lack of penetration, cracks, porosity and no defect. The proposed dataset of welding defects in radiographic images is released freely to the research community. As an example of application, the dataset has been used to train a customized version of the SqueezeNet CNN obtaining a test accuracy higher than 93%.
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