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Yarn-dyed Fabric Defect Detection using U-shaped De-noising Convolutional Auto-Encoder

机译:使用U形去噪卷积自动编码器的纱线染料织物缺陷检测

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Practical factors such as high labor cost of labelling defect samples and scarcity of defect samples make it difficult for supervised machine learning models to solve the problem of yarn-dyed fabric defect detection. To solve this problem, this paper proposes an unsupervised yarn-dyed fabric defect detection method based on U-shaped de-noising convolutional auto-encoder (UDCAE). Firstly, for tested samples of yarn-dyed fabric, the training dataset was constructed by collecting the non-defect yarn-dyed fabric samples. Then, the non-defect dataset is utilized to model and train the proposed UDCAE model. Finally, the defective area can be quickly detected by calculating the residual between the original tested yarn-dyed fabric image and its reconstructed item correspondingly. The experiment results show that the proposed method can accurately detect defects of yarn-dyed fabrics with different patterns.
机译:诸如标签缺陷样品的高劳动力成本等实际因素,缺陷样品的稀缺性使得监督机器学习模型难以解决纱线染色织物缺陷检测问题。为了解决这个问题,本文提出了一种基于U形去噪卷积自动编码器(UDCAE)的无监督的纱线染料缺陷检测方法。首先,对于纱线染料织物的测试样品,通过收集非缺陷纱线染料织物样品来构建训练数据集。然后,使用非缺陷数据集用于模拟和培训所提出的UDCAE模型。最后,通过相应地计算原始测试的纱线染料织物图像和其重建项目之间的残留,可以快速检测缺陷区域。实验结果表明,该方法可以用不同的图案准确地检测纱线染色织物的缺陷。

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