Defect detection and classification technology has changed from traditional artificial visual inspection to current intelligent automated inspection, but most of the current defect detection methods are training related detection models based on a data-driven approach, taking into account the difficulty of collecting some sample data in the industrial field. We apply zero-shot learning technology to the industrial field. Aiming at the problem of the existing "Latent Feature Guide Attribute Attention" (LFGAA) zero-shot image classification network, the output latent attributes and artificially defined attributes are different in the semantic space, which leads to the problem of model performance degradation, proposed an LGFAA network based on semantic feedback, and improved model performance by constructing semantic embedded modules and feedback mechanisms. At the same time, for the common domain shift problem in zero-shot learning, based on the idea of co-training algorithm using the difference information between different views of data to learn from each other, we propose an Ensemble Co-training algorithm, which adaptively reduces the prediction error in image tag embedding from multiple angles. Various experiments conducted on the zero-shot dataset and the cylinder liner dataset in the industrial field provide competitive results.
翻译:缺陷检测和分类技术已经从传统的人工视觉检查转变为目前的智能自动检查,但大多数目前的缺陷检测方法都是根据数据驱动的方法培训相关的检测模型,同时考虑到在工业领域收集一些样本数据的难度。我们将零点学习技术应用到工业领域。针对现有的“Latent地貌指南属性注意”(LFGAA)零点图像分类网络的问题,输出潜值属性和人为定义属性在语义空间中不同,这导致了模型性能退化问题,提议了基于语义反馈的LGFAA网络,并通过建立语义嵌入模块和反馈机制改进模型性能。与此同时,对于零点学习中的通用域变化问题,我们根据使用不同数据观点差异信息进行共同培训算法,以便相互学习,我们建议了一种“Entsemble Co-training”算法,该算法可适应性地减少图像标签从多个角度嵌入的预测错误。在零点数据集和工业领域圆筒线数据集上进行的各种实验,提供了竞争性的结果。