基于变压器的金属3d打印质量识别方法

Weihao Zhang, Jiapeng Wang, Honglin Ma, Qi Zhang, Shuqian Fan
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引用次数: 1

摘要

大量未标注的生产数据阻碍了先进的监督学习技术在现代工业中的大规模应用。金属3D打印产生大量的现场数据,这些数据与零件的成形质量密切相关。为了解决在改变打印材料和工艺参数时,由于数据集重新标注造成的人工成本问题,设计了一种基于深度聚类的成形质量识别模型,使金属3D打印成形质量识别任务更加灵活。受Vision Transformer成功的启发,我们在Vision Transformer结构中引入卷积神经网络,在学习全局表示的同时对图像的归纳偏差进行建模。我们的方法比其他基于Vision transformer的模型实现了最先进的精度。此外,我们提出的框架对于缺乏注释的特定工业视觉任务来说是一个很好的候选。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Transformer-Based Approach for Metal 3d Printing Quality Recognition
The mass unlabeled production data hinders the large-scale application of advanced supervised learning techniques in the modern industry. Metal 3D printing generates huge amounts of in-situ data that are closely related to the forming quality of parts. In order to solve the problem of labor cost caused by re-labeling dataset when changing printing materials and process parameters, a forming quality recognition model based on deep clustering is designed, which makes the forming quality recognition task of metal 3D printing more flexible. Inspired by the success of Vision Transformer, we introduce convolutional neural networks into the Vision Transformer structure to model the inductive bias of images while learning the global representations. Our approach achieves state-of-the-art accuracy over the other Vision Transformer-based models. In addition, our proposed framework is a good candidate for specific industrial vision tasks where annotations are scarce.
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