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Fabric surface defect classification and systematic analysis using a cuckoo search optimized deep residual network

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posted on 2024-05-28, 09:16 authored by Hiren Mewada, Ivan Miguel Pires, Pinalkumar Engineer, AMIT Patel

  

Fabric defects can significantly impact the quality of a textile product. By analyzing the types and frequencies of defects, manufacturers can identify process inefficiencies, equipment malfunctions, or operator errors. Although deep learning networks are accurate in classification applications, some defects may be subtle and difficult to detect, while others may have complex patterns or occlusions. CNNs may struggle to capture a wide range of defect variations and generalize well to unseen defects. Discriminating between genuine defects and benign variations requires sophisticated feature extraction and modeling techniques. This paper proposes a residual network-based CNN model to enhance the classification of fabric defects. A pretrained residual network, ResNet50, is fine-tuned to classify fabric defects into four categories: holes, objects, oil spots, and thread errors on the fabric surface. The fine-tuned network is further optimized via cuckoo search optimization using classification error as a fitness function. The network is systematically analyzed at different layers, and the investigation of classification results are reported using a confusion matrix and classification accuracy for each class. The experimental results confirm that the proposed model achieved superior performance with 95.36% accuracy and a 95.35% F1 score for multiclass classification. In addition, the proposed model achieved higher accuracy with similar or fewer trainable parameters than traditional deep CNN networks. 

Funding

FCT/MEC, Portugal

FEDER-PT2020 partnership agreement under project UIDB/50008/2020

History

School

  • Mechanical, Electrical and Manufacturing Engineering

Published in

Engineering Science and Technology, an International Journal

Volume

53

Publisher

Elsevier BV

Version

  • VoR (Version of Record)

Rights holder

© The Authors

Publisher statement

Published by Elsevier B.V. on behalf of Karabuk University This is an open access article under the CC BY-NC-ND license(http://creativecommons.org/licenses/by-nc-nd/4.0/)

Acceptance date

2024-03-24

Publication date

2024-04-04

Copyright date

2024

ISSN

2215-0986

Language

  • en

Depositor

Dr Amitkumar Patel. Deposit date: 22 May 2024

Article number

101681

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