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Data Augmentation on Defect Detection of Sanitary Ceramics

机译:卫生陶瓷缺陷检测的数据扩充

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In this paper, we propose four offline data aug-mentation methods to improve the performance of convolutional neural network(CNN) on defect detection of sanitary ceramics. In recent years, based on big data, deep learning has begun to become a popular way for sanitary ceramics defect detection. Comparing with traditional vision inspection system, deep learning method is more robust and convenient without manual design of feature extraction. As a data-driven detection way, data plays a vital roll, however, sometimes we could not obtain a high-quality and large dataset. Consequently, we consider data augmentation to improve the quality of original dataset. Here, we use image generation, image mosaic, image fusion and image rotation mosaic. According to the experiment results, with these methods, the enhanced datasets perform well compared with the original one.
机译:本文提出了四种离线数据增强方法,以提高卷积神经网络(CNN)在卫生陶瓷缺陷检测中的性能。近年来,基于大数据,深度学习已开始成为卫生陶瓷缺陷检测的流行方法。与传统的视觉检查系统相比,无需人工设计特征提取,深度学习方法更加健壮,便捷。作为一种数据驱动的检测方式,数据起着至关重要的作用,但是,有时我们无法获得高质量的大型数据集。因此,我们考虑通过数据扩充来提高原始数据集的质量。在这里,我们使用图像生成,图像镶嵌,图像融合和图像旋转镶嵌。根据实验结果,使用这些方法,增强后的数据集与原始方法相比表现良好。

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