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Local Characterisation and Detection of Woven Fabric Texture Based on a Sparse Dictionary
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Local Characterisation and Detection of Woven Fabric Texture Based on a Sparse Dictionary

By: Ying Wu,  Ren Wang,  Lin Lou,  Lali Wang and  Jun Wang  
Open Access
|Sep 2022

Abstract

To achieve enhanced accuracy of fabric representation and defect detection, an innovative approach using a sparse dictionary with small patches was used for fabric texture characterisation. The effectiveness of the algorithm proposed was tested through comprehensive characterisation by studying eight weave patterns: plain, twill, weft satin, warp satin, basket, honeycomb, compound twill, and diamond twill and detecting fabric defects. Firstly, the main parameters such as dictionary size, patch size, and cardinality T were optimised, and then 40 defect-free fabric samples were characterised by the algorithm proposed. Subsequently, the impact of the weave pattern was investigated based on the representation result and texture structure. Finally, defective fabrics were detected. The algorithm proposed is an alternative simple and scalable method to characterise fabric texture and detect textile defects in a single step without extracting features or prior information.

DOI: https://doi.org/10.2478/ftee-2022-0020 | Journal eISSN: 2300-7354 | Journal ISSN: 1230-3666
Language: English
Page range: 33 - 40
Published on: Sep 28, 2022
Published by: Łukasiewicz Research Network, Institute of Biopolymers and Chemical Fibres
In partnership with: Paradigm Publishing Services
Publication frequency: Volume open

© 2022 Ying Wu, Ren Wang, Lin Lou, Lali Wang, Jun Wang, published by Łukasiewicz Research Network, Institute of Biopolymers and Chemical Fibres
This work is licensed under the Creative Commons Attribution 3.0 License.