建立用于射线检测焊缝深度学习分析的亚表面缺陷样本

Niphaporn Panya, Sansiri Tanachutiwat
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引用次数: 1

摘要

本工作的目的是为射线检测工件焊接材料无损检测的深度学习模型的开发创造更多的缺陷样品。在一些罕见的情况下,缺陷样本数量不足对缺陷检测和分类深度学习模型的发展构成了重大挑战。从真品中获得真正的稀有缺陷在业内是不可能的。为此,设计并提出了一种焊接缺陷样品的生成和采集方法。试件设计和缺陷定义均按国际标准执行。
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Creating Subsurface Defect Specimens for Deep Learning Analyzing of Radiographic Weld Testing
The purpose of this work is to create more defective specimen for development of deep learning model for non-destructive inspection of welding materials of the workpiece by radiographic testing. Inadequate amounts of defective samples in some rare cases poses a major challenge for the development of defect detection and classification deep learning models. Obtaining actual rare defects from real works is improbable in the industry. Therefore, an approach to create and collect defective welding sample are design and proposed. The specimen design and defect definition are according to international standards.
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