Search engine :
Return to the menu
| : /
Vote:
Results:
0 Votes
NOVEMBER 2025 - Volume: 100 - Pages: 545-551
Download pdf
Automated defect detection in fabrics is a key challenge in quality control within the textile industry. This study proposes a deep learning-based methodology to identify defects in Batavia and Sarga fabrics. In the first stage, an autoencoder was used to filter anomalous images, enabling the creation of a dataset with sufficient defective cases, which are otherwise difficult to obtain in textile production. Subsequently, convolutional neural networks (DenseNet121, EfficientNetB0/B3, Xception, and VGG) were trained using data augmentation techniques and stratified cross-validation. ForBatavia fabrics, DenseNet121 achieved an AU-ROC of 0.88 and an AU-PR of 0.93, demonstrating high detection capability. For Sarga fabrics, three different references (42402, 45433, and 43105) were considered, showing more variable performance across models and datasets. Nonetheless, odels such as ResNet101 and Xception achieved competitive results. The results indicate that the combination of autoencoder and CNN facilitates the generation of balanced datasets and enables consistent defect detection, although performance depends on the type of fabric and the specific reference, suggesting that model selection should be adapted to the characteristics of each case.• Keywords: Defect detection, Textile, Industry 4.0, Deep Learning,Convolutional neural networks, Image analysis, Autoencoder.
Share:
© Engineering Journal Dyna 2025 - UK Zhende Publishing Limited
Address: Unit 7 Wilsons Business Park, Manchester M40 8WN United Kingdom
Email: office@revistadyna.com
Regístrese en un paso con su email y podrá personalizar sus preferencias mediante su perfil
Name: *
Surname 1: *
Surname 2:
Email: *