首页> 外文会议>ASME Turbo Expo: Turbomachinery Technical Conference and Exposition >RAPID DEFECT DETECTION AND CLASSIFICATION IN IMAGES USING CONVOLUTIONAL NEURAL NETWORKS
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RAPID DEFECT DETECTION AND CLASSIFICATION IN IMAGES USING CONVOLUTIONAL NEURAL NETWORKS

机译:使用卷积神经网络的图像中快速缺陷检测和分类

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Several image processing methods have been implemented over recent years to assist and partially replace on-site technician visual inspection of both manufactured parts and operational equipments. Convolutional neural networks (CNNs) have seen great success in their ability to both identify and classify anomalies within images, in some cases they do this to a higher degree of accuracy than an expert human. Several parts that are manufactured for various aspects of turbomachinery operation must undergo a visual inspection prior to qualification. Machine learning techniques can streamline these visual inspection processes and increase both efficiency and accuracy of defect detection and classification. The adoption of CNNs to manufactured part inspection can also help to improve manufacturing methods by rapidly retrieving data for overall system improvement. In this work a dataset of images with a variety of surface defects and some without defects will be fed through varying CNN set-ups for the rapid identification and classification of the flaws within the images. This work will examine the techniques used to create CNNs and how they can best be applied to part surface image data, and determine the most accurate and efficient techniques that should be implemented. By combining machine learning with non-destructive evaluation methods component health can be rapidly determined and create a more robust system for manufactured parts and operational equipment evaluation.
机译:近年来已经实施了几种图像处理方法,以协助和部分更换现场技术人员的视觉检查制造零件和操作设备。卷积神经网络(CNNS)在他们在图像中识别和分类异常的能力方面取得了巨大的成功,在某些情况下,它们比专家人更高的准确度。为涡轮机械运行的各个方面制造的几个部件必须在资格认证之前进行视觉检查。机器学习技术可以简化这些目视检查过程,并提高缺陷检测和分类的效率和准确性。采用CNN制造的零件检验也可以通过快速检索整体系统改进的数据来帮助改善制造方法。在这作用中,通过改变CNN设置,将通过改变图像内的缺陷的快速识别和分类,以各种表面缺陷和一些没有缺陷的图像数据集。这项工作将检查用于创建CNN的技术以及如何最好地应用于零件曲面图像数据,并确定应该实现的最准确和有效的技术。通过将机器学习与非破坏性评估方法相结合,可以快速确定部件健康,并为制造零件和操作设备评估创造更强大的系统。

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