Rough Set-Based Decision Tool for Classification of Cotton Yarn Neps

被引:0
|
作者
Das S. [1 ]
Ghosh A. [1 ]
机构
[1] Government College of Engineering and Textile Technology, Berhampore
关键词
Classification; Cotton yarn; Decision rule; Neps; Rough set;
D O I
10.1007/s40034-020-00173-2
中图分类号
学科分类号
摘要
Neps in cotton yarn and fabric are considered as blemishes which can severely downgrade the product and economically affect the textile industry. Identification of neps in cotton yarn is a prerequisite to control their generation in the yarn formation process. Hence, a real-time nep identification technique would lead to more effective control and reduction in nep levels in cotton. In recent years, rough set theory has evolved as one of the most promising classification techniques. One of the cardinal uses of rough set theory is its application for rule generation. Our approach focuses on the classification of seed coat neps and fibrous neps using the effective decision rules envisaged by rough set theory. In this work, 60 images were captured and processed in rough set technique to classify neps in cotton yarn. The validation results ascertain that 11 out of 12 testing data are correctly predicted by the rough set technique. The framed decision rules provide an insight about the classification tool which ensures that the prediction accuracy of the tool can be raised further by framing more robust decision rules with the help of large training dataset. Thus, this technique is potent to get recognition from the modern textile industry as an automated neps classification technique. © 2020, The Institution of Engineers (India).
引用
收藏
页码:1 / 10
页数:9
相关论文
共 50 条
  • [41] A Rough Set-Based Method for Updating Decision Rules on Attribute Values' Coarsening and Refining
    Chen, Hongmei
    Li, Tianrui
    Luo, Chuan
    Horng, Shi-Jinn
    Wang, Guoyin
    [J]. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2014, 26 (12) : 2886 - 2899
  • [42] Non-hierarchical Clustering of Decision Tables toward Rough Set-Based Group Decision Aid
    Inuiguchi, Masahiro
    Enomoto, Ryuta
    Kusunoki, Yoshifumi
    [J]. MODELING DECISIONS FOR ARTIFICIAL INTELLIGENCE (MDAI), 2010, 6408 : 195 - 206
  • [43] On Rough Set-Based Modeling and with Application to Process Decision for Forming Plate by Line Heating
    Feng, Zhi-qiang
    Jiao, Zi-quan
    Chen, Shan-ben
    Han, Jun-feng
    Han, Xiang-xi
    Yang, Run-dang
    Liu, Cun-gen
    [J]. JOURNAL OF SHIP PRODUCTION AND DESIGN, 2019, 35 (03): : 289 - 296
  • [44] A rough set based classification model for the generation of decision rules
    [J]. 1600, Science and Engineering Research Support Society (07):
  • [45] Optimistic Multi-granulation Rough Set-Based Classification for Neonatal Jaundice Diagnosis
    Kumar, S. Senthil
    Inbarani, H. Hannah
    Azar, Ahmad Taher
    Own, Hala S.
    Balas, Valentina Emilia
    Olariu, Teodora
    [J]. SOFT COMPUTING APPLICATIONS, (SOFA 2014), VOL 1, 2016, 356 : 307 - 317
  • [46] A rough set-based effective rule generation method for classification with an application in intrusion detection
    Gogoi, Prasanta
    Bhattacharyya, Dhruba K.
    Kalita, Jugal K.
    [J]. International Journal of Security and Networks, 2013, 8 (02) : 61 - 71
  • [47] Apply a rough set-based classifier to dependency parsing
    Ji, Yangsheng
    Shang, Lin
    Dai, Xinyu
    Ma, Ruoce
    [J]. ROUGH SETS AND KNOWLEDGE TECHNOLOGY, 2008, 5009 : 97 - 105
  • [48] A Framework on Rough Set-Based Partitioning Attribute Selection
    Herawan, Tutut
    Deris, Mustafa Mat
    [J]. EMERGING INTELLIGENT COMPUTING TECHNOLOGY AND APPLICATIONS: WITH ASPECTS OF ARTIFICIAL INTELLIGENCE, 2009, 5755 : 91 - 100
  • [49] Fuzzy Rough Set-Based Unstructured Text Categorization
    Bharadwaj, Aditya
    Ramanna, Sheela
    [J]. ADVANCES IN ARTIFICIAL INTELLIGENCE, CANADIAN AI 2017, 2017, 10233 : 335 - 340
  • [50] Structural risk minimization of rough set-based classifier
    Jinfu Liu
    Mingliang Bai
    Na Jiang
    Daren Yu
    [J]. Soft Computing, 2020, 24 : 2049 - 2066