JOURNAL of the JAPAN RESEARCH ASSOCIATION for TEXTILE END-USES
Online ISSN : 1884-6599
Print ISSN : 0037-2072
ISSN-L : 0037-2072
Volume 61, Issue 10
Displaying 1-12 of 12 articles from this issue
  • Motoshi HONDA, Satoru HIROSAWA, Shigeki NISHINO, Kanya KURAMORO, SAOri ...
    2020Volume 61Issue 10 Pages 730-737
    Published: October 25, 2020
    Released on J-STAGE: October 25, 2020
    JOURNAL FREE ACCESS

    An automated pilling grading method was introduced. In this study, a pilling grade of fabric samples was evaluated visually by experts. A pilling grade was also predicted from a fabric height map using a convolutional neural network. The performance of this network model was evaluated by comparing it with the grade given by experts. The difference amongst the experts tended to be large around a grade of between 2 to 4. As a result, 60 % of the network model predictions were equivalent to the grade given by experts and 90 % of those were within the range of the maximum and minimum grade given by experts. Moreover, the correlation between the prediction and the average grade given by experts was as high as that between an expert and the average of the expert grade. The findings from this study show that the use of this network model could be an effective alternative to the conventional visual assessment.

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