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FabricNET: A Microscopic Image Dataset of Woven Fabrics for Predicting Texture and Weaving Parameters through Machine Learning

Author

Listed:
  • Mine Seçkin

    (Textile Engineering, Engineering Faculty, Uşak University, Uşak 64100, Türkiye
    Physiotherapy Department, Aydın Vocational School of Health Services, Aydın Adnan Menderes University, Aydın 09100, Türkiye)

  • Ahmet Çağdaş Seçkin

    (Computer Engineering Department, Engineering Faculty, Aydın Adnan Menderes University, Aydın 09100, Türkiye)

  • Pinar Demircioglu

    (Mechanical Engineering Department, Engineering Faculty, Aydın Adnan Menderes University, Aydın 09100, Türkiye
    Institute of Materials Science, TUM School of Engineering and Design, Technical University of Munich, 85748 Garching, Germany)

  • Ismail Bogrekci

    (Mechanical Engineering Department, Engineering Faculty, Aydın Adnan Menderes University, Aydın 09100, Türkiye)

Abstract

This research presents an approach aimed at enhancing texture recognition and weaving parameter estimation in the textile industry to align with sustainability goals and improve product quality. By utilizing low-cost handheld microscopy and machine learning, this method offers the potential for more precise production outcomes. In this study, textile images were manually labeled for texture, specific mass, weft, and warp parameters, followed by the extraction of various texture features, resulting in a comprehensive dataset comprising four hundred and fifty-eight inputs and four outputs. Prominent machine learning algorithms, including XGBoost, RF, and MLP, were applied, resulting in noteworthy achievements. Specifically, XGBoost demonstrated an impressive texture classification accuracy of 0.987, while RF yielded the lowest MAE (5.121 g/cm) in specific mass prediction. Additionally, weft and warp estimations displayed superior accuracy compared to manual measurements. This research emphasizes the crucial role of AI in improving efficiency and sustainability within the textile industry, potentially reducing resource wastage, enhancing worker safety, and increasing productivity. These advancements hold the promise of significant positive environmental and social impacts, marking a substantial step forward in the industry’s pursuit of its objectives.

Suggested Citation

  • Mine Seçkin & Ahmet Çağdaş Seçkin & Pinar Demircioglu & Ismail Bogrekci, 2023. "FabricNET: A Microscopic Image Dataset of Woven Fabrics for Predicting Texture and Weaving Parameters through Machine Learning," Sustainability, MDPI, vol. 15(21), pages 1-18, October.
  • Handle: RePEc:gam:jsusta:v:15:y:2023:i:21:p:15197-:d:1265964
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