基于 U-Net 网络的织物缝纫断裂检测建模

Sheng Hu, Jiaqi Zhang
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摘要

为解决人工检测布料缝纫断线中的假阳性和假阴性问题,提出了一种基于 U-Net 网络的布料缝纫断线检测方法。通过检测相邻缝线特征轮廓线之间的相邻距离,计算缝线在缝制图案中的分布均匀性,实现织物缝纫断线的异常检测和溯源。首先,利用缝纫图像及其对应的缝合特征标注图训练 U-Net 网络缝合特征提取模型。然后,利用训练好的网络模型处理缝纫图像样本,得到二进制缝合特征图。其次,使用闭合操作对缝合特征图进行处理,以消除残留的图像噪声。在此基础上,使用模板匹配算法提取缝合特征轮廓。最后,根据相邻特征轮廓之间的距离,构建织物缝合断裂检测和异常追踪模型。通过实例对模型进行了验证,结果表明可以检测出缝合线的异常样本,并给出相应的断裂位置。模型的总体检测准确率为 95.75%,表明所构建的织物缝合断裂检测模型是有效的。
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Modeling of fabric sewing break detection based on U-Net network
To solve the problem of false positives and false negatives in the manual detection of fabric sewing breaks, a method of fabric sewing break detection based on the U-Net network is proposed. By detecting the adjacent distance between the characteristic contours of adjacent sewing stitches, the distribution uniformity of sewing stitches in sewing patterns is calculated, and the abnormal detection and traceability of fabric sewing broken threads are realized. First, the U-Net network sewing feature extraction model was trained using sewing images and their corresponding stitching feature annotation maps. Then, the trained network model was used to process sewing image samples to obtain binary stitching feature maps. Second, the stitching feature maps were processed using a closing operation to eliminate residual image noise. On this basis, the template matching algorithm was used to extract the stitching feature contours. Finally, according to the distance between adjacent feature contours, the fabric sewing break detection and abnormality tracing model was constructed. The model is validated by examples, and the results show that the abnormal samples of stitching lines are detected, and the corresponding break positions are given. The overall detection accuracy of the model is 95.75%, indicating that the constructed fabric sewing break detection model is effective.
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