论文标题

基于部分目标数据的技术域中缺陷特征的跨域转移

Cross-domain Transfer of defect features in technical domains based on partial target data

论文作者

Schlagenhauf, Tobias, Scheurenbrand, Tim

论文摘要

在现实世界分类方案中,具有依次附加目标域数据的一个普遍挑战是在培训阶段的培训数据集不足。因此,传统的深度学习和转移学习分类器不适用,尤其是当单个课程在一开始没有代表或严重代表人数的情况下。但是,在许多技术领域中,只有缺陷或破坏的拒绝类的代表不足,而非缺陷类通常从一开始就可以使用。提出的分类方法解决了此类条件,并基于CNN编码器。遵循对比度学习方法,使用两个数据集对其进行了修改的三重损失函数培训:除非缺陷目标域1ST数据集(一种最先进的标记为标记的标记的源域数据集),其中包含高度相关的类别,例如,相关的制造错误或相关的制造错误或磨损,但来自高度不同的域中,来自高度不同的域,例如不同的域,例如,材料,材料,材料,外观= 2N = 2N = 2N = 2N = 2N = 2N = 2ND。该方法从源域数据集中学习分类功能,同时在单个训练步骤中学习源和目标域之间的差异,旨在将相关功能传输到目标域。分类器对分类特征和构建结构对高度特定于域特异性上下文的敏感性变得敏感。该方法以技术和非技术领域的基准为基准,并显示出令人信服的分类结果。特别是,表明域的概括能力和分类结果通过提议的体系结构提高,从而使源域和目标域之间的域移动更大。

A common challenge in real world classification scenarios with sequentially appending target domain data is insufficient training datasets during the training phase. Therefore, conventional deep learning and transfer learning classifiers are not applicable especially when individual classes are not represented or are severely underrepresented at the outset. In many technical domains, however, it is only the defect or worn reject classes that are insufficiently represented, while the non-defect class is often available from the beginning. The proposed classification approach addresses such conditions and is based on a CNN encoder. Following a contrastive learning approach, it is trained with a modified triplet loss function using two datasets: Besides the non-defective target domain class 1st dataset, a state-of-the-art labeled source domain dataset that contains highly related classes e.g., a related manufacturing error or wear defect but originates from a highly different domain e.g., different product, material, or appearance = 2nd dataset is utilized. The approach learns the classification features from the source domain dataset while at the same time learning the differences between the source and the target domain in a single training step, aiming to transfer the relevant features to the target domain. The classifier becomes sensitive to the classification features and by architecture robust against the highly domain-specific context. The approach is benchmarked in a technical and a non-technical domain and shows convincing classification results. In particular, it is shown that the domain generalization capabilities and classification results are improved by the proposed architecture, allowing for larger domain shifts between source and target domains.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源