Data augmentation techniques for transfer learning improvement in drill wear classification using convolutional neural network

J. Kurek, J. Aleksiejuk-Gawron, Izabella Antoniuk, J. Górski, Albina Jegorowa, M. Kruk, A. Orłowski, J. Pach, B. Świderski, Grzegorz Wieczorek
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引用次数: 8

Abstract

This paper presents an improved method for recognizing the drill state on the basis of hole images drilled in a laminated chipboard, using convolutional neural network (CNN) and data augmentation techniques. Three classes were used to describe the drill state: red -- for drill that is worn out and should be replaced, yellow -- for state in which the system should send a warning to the operator, indicating that this element should be checked manually, and green -- denoting the drill that is still in good condition, which allows for further use in the production process. The presented method combines the advantages of transfer learning and data augmentation methods to improve the accuracy of the received evaluations. In contrast to the classical deep learning methods, transfer learning requires much smaller training data sets to achieve acceptable results. At the same time, data augmentation customized for drill wear recognition makes it possible to expand the original dataset and to improve the overall accuracy. The experiments performed have confirmed the suitability of the presented approach to accurate class recognition in the given problem, even while using a small original dataset.
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基于卷积神经网络的钻头磨损分类迁移学习改进的数据增强技术
本文提出了一种基于层压刨花板上钻孔图像的改进方法,该方法采用卷积神经网络(CNN)和数据增强技术来识别钻孔状态。用三个等级来描述钻头的状态:红色表示钻头已经磨损,需要更换;黄色表示系统应该向操作员发出警告,表明应该手动检查该元件;绿色表示钻头仍然处于良好状态,可以在生产过程中进一步使用。该方法结合了迁移学习和数据增强方法的优点,提高了接收评价的准确性。与经典的深度学习方法相比,迁移学习需要更小的训练数据集来获得可接受的结果。同时,为钻头磨损识别定制的数据增强功能可以扩展原始数据集,提高整体精度。所进行的实验证实了所提出的方法在给定问题中准确识别类别的适用性,即使在使用小型原始数据集时也是如此。
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来源期刊
Machine Graphics and Vision
Machine Graphics and Vision Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
0.40
自引率
0.00%
发文量
1
期刊介绍: Machine GRAPHICS & VISION (MGV) is a refereed international journal, published quarterly, providing a scientific exchange forum and an authoritative source of information in the field of, in general, pictorial information exchange between computers and their environment, including applications of visual and graphical computer systems. The journal concentrates on theoretical and computational models underlying computer generated, analysed, or otherwise processed imagery, in particular: - image processing - scene analysis, modeling, and understanding - machine vision - pattern matching and pattern recognition - image synthesis, including three-dimensional imaging and solid modeling
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