Abstract

Inspection is the most important role in textile industry which declares the quality of the apparel product. Many Industries were improving their production or quality using Artificial Intelligence. Inspection of fabric in textile industry takes more time and labours. In order to reduce the number of labours and time taken to complete inspection, computerized image processing is done to identify the defects. It gives the accurate result in less time, thereby saves time and increases the production. The convolutional neural network in deep learning is mainly used for image processing for defect detection and classification. The high quality images are given as input, and then the images were used to train the deep learning neural network. Thewoven fabricdefects such as Holes, Selvedge tails, Stains, Wrong drawing and Snarlswere identified by using Convolutional Neural Network. The sample images were collected from the SkyCotex India Pvt.Ltd. The sample images were processed in CNN based machine learning ingoogle platform; the network has a input layer, n number of hidden layer and output layer. The neural network is trained and tested with the samples and the result obtained is used to calculate the efficiency of defect identification.

Highlights

  • Identifying the defects in the fabrics is a very important process in the textile manufacturing industries as it affects the quality of the fabrics manufactured by the industries.Usually fabric inspection in textile industries is done by human

  • Fabric inspection in textile industries is done by human

  • Digital Image Processing application is applied for defected fabric

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Summary

INTRODUCTION

Identifying the defects in the fabrics is a very important process in the textile manufacturing industries as it affects the quality of the fabrics manufactured by the industries. An application of Convolutional Neural Network in textile industry is increasingintextileprocesses in case of estimationofyarnqualityparameter, classification of knitted and woven fabricetc This can be implied in fabric inspection to classify the defects(Habib and Ahmed 2014).The main objective of this research includes reduction in the cost and improvement in the efficiency, to improve overall reliability and reduce the man power and to find the defects in the fabric and notify the workmen. Published By: Deep Learning Convolutional Neural Network for Defect Identification and Classification in Woven Fabric comparetheclassifiersbyusingperformance metrics(He. Zhang and Sun J 2016). They are known as shift invariant or space invariant artificial neural networks (SIANN), based on their shared-weights architecture and translation invariance characteristics They have applications in image and video recognition, recommender systems, image classification, medical image analysis, natural language processing, brain-computer interfaces, and financial time series (Huanhuan, JinxiuJunfengand Pengfei2019).The aim of the present work is to identify different types of defects in woven fabric and analyzing by using Convolutional Neural Network

METHODOLOGY
DATASET
TRAINING OF THE CONVOLUTIONAL NEURALNETWORK
VIII. EXPERIMENTAL RESULT
CONCLUSION
Findings
Objective
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