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Effect of image size on performance of a plastic gear crack detection system based Convolutional Neural Networks: An experimental study

机译:图像尺寸对基于卷积神经网络的塑料齿轮裂纹检测系统性能的影响:实验研究

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Nowadays, deep learning (DL) has become a rapidly growing and provides useful tools for processing and analyzing big machinery data. Many research projects achieved success in failure classification from machinery data using convolutional neural networks (CNNs), one of the most extensive study aspects of DL. On this trend, we constructed a crack detection system of POM (Polyoxymethylene) gears using a deep convolutional neural network (DCNN). In our work, vibration data collected from plastic gears was visualized and labelled as crack data or non-crack images. A DCNN based on pre-trained VGG16, which firstly pre-learned from ImageNet's data and then re-learned from the labelled images, is utilized to classify crack or non-crack situations of plastic gears. In this case of study, the image quality distortions of the dataset such as blur, noise or contrast are stable and do not affect the performance of the DCNN. However, the image size, which keep a vital role to reach high performance of the detection system, has been unknown. Hence, this paper reveals an optimized size of images created from vibration data for high-accuracy of learning.
机译:如今,深度学习(DL)已迅速发展,并提供了用于处理和分析大型机械数据的有用工具。许多研究项目使用卷积神经网络(CNN)从机械数据中成功进行了故障分类,这是DL最广泛的研究内容之一。在这种趋势下,我们使用深度卷积神经网络(DCNN)构建了POM(聚甲醛)齿轮的裂纹检测系统。在我们的工作中,从塑料齿轮收集的振动数据被可视化并标记为裂纹数据或非裂纹图像。基于预先训练的VGG16的DCNN,首先从ImageNet的数据中进行预学习,然后从标记的图像中进行重新学习,然后将其用于对塑料齿轮的裂纹或非裂纹情况进行分类。在本研究案例中,数据集的图像质量失真(例如模糊,噪声或对比度)是稳定的,并且不会影响DCNN的性能。然而,未知的图像尺寸对于实现检测系统的高性能起着至关重要的作用。因此,本文揭示了从振动数据创建的图像的最佳尺寸,以实现高精度的学习。

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