Industry 4.0 aims to optimize the manufacturing environment by leveraging new technological advances, such as new sensing capabilities and artificial intelligence. The DRAEM technique has shown state-of-the-art performance for unsupervised classification. The ability to create anomaly maps highlighting areas where defects probably lie can be leveraged to provide cues to supervised classification models and enhance their performance. Our research shows that the best performance is achieved when training a defect detection model by providing an image and the corresponding anomaly map as input. Furthermore, such a setting provides consistent performance when framing the defect detection as a binary or multiclass classification problem and is not affected by class balancing policies. We performed the experiments on three datasets with real-world data provided by Philips Consumer Lifestyle BV.
翻译:4.0 工业4.0 旨在通过利用新技术进步,例如新的遥感能力和人工智能,优化制造环境;DRAEM技术显示在不受监督的分类方面最先进的性能;能够制作异常图,突出可能存在缺陷的领域,为监督分类模型提供提示,提高它们的性能;我们的研究表明,通过提供图像和相应的异常图作为投入来培训缺陷检测模型,取得最佳性能;此外,这种设置在将缺陷检测确定为二进制或多级分类问题时提供一贯性能,不受阶级平衡政策的影响;我们用菲利普消费者生活方式BV提供的现实世界数据对三个数据集进行了实验。