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Industrial machine tool component surface defect dataset

机译:工业机床部件表面缺陷数据集

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Using machine learning (ML) techniques in general and deep learning techniques in specific needs a certain amount of data often not available in large quantities in technical domains. The manual inspection of machine tool components and the manual end-of-line check of products are labor- intensive tasks in industrial applications that companies often want to automate. To automate classification processes and develop reliable and robust machine learning-based classification and wear prognostics models, one needs real-world datasets to train and test the models. The presented dataset consists of images of defects on ball screw drive spindles showing the progression of the defects on the spindle surface. The dataset is analysed via an initial object detection model available under:https://github.com/2Obe?tab=repositories. The reuse potential of the dataset lays in the development of failure detection and failure forecasting models for the purpose of condition monitoring and predictive maintenance. The dataset is available underhttps://doi.org/10.5445/IR/1000129520.
机译:使用机器学习(ML)技术在一般的一般和深度学习技术中需要一定量的数据在技术领域中通常不可用。手动检查机床部件和手动终端检查产品是公司往往希望自动化的工业应用中的劳动密集型任务。为了自动化分类过程并开发可靠和强大的基于机器学习的分类和佩戴预后模型,需要真实的数据集来培训和测试模型。所提出的数据集包括滚珠丝杠驱动纺织缺陷的图像,显​​示主轴表面上的缺陷的进展。通过以下初始对象检测模型分析数据集:https://github.com/2obe?tab =存储库。数据集的重用潜力位于故障检测和故障预测模型的开发中,以便调控和预测维护的目的。 DataSet可用下行://doi.org/10.5445/ir/1000129520。

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