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Measuring consistency of two datasets using fuzzy techniques and the concept of indiscernibility: Application to human perceptions on fabrics

机译:使用模糊技术和不可分辨性概念测量两个数据集的一致性:应用于人类对织物的感知

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摘要

This paper presents an approach for developing a new consistency degree of two datasets, obtained from two different measuring systems on the same collection of items. In this approach, the concept of indiscernibility, frequently used in rough set approaches, is used to discover the classification consistency-based inclusion of one dataset to another. Next, in order to take into account the influence of neighboring relations of different data, we modify the previous index by proposing a fuzzy classification consistency-based inclusion degree. Also, the ordinal correlation between these two datasets, measured using a non-parametric method called Kendall's coefficient, is introduced. Finally, in order to create a reasonable integration of the previous two indices, a general consistency measure is constituted by introducing the expert knowledge into a fuzzy inference system. The overall procedure is believed to be capable of detecting nonlinear patterns lying beneath data while being safe to use a comparatively small number of experimental samples. Moreover, this new method can prevent the "black box" phenomenon encountered in many modeling techniques and produce robust and interpretable results. In practice, the proposed method is particularly significant for validating one measuring or evaluation system with respect to a standard reference. In order to validate the effectiveness of the proposed consistency degree, we apply it to study the relationship between tactile properties of a collection of fabric samples and their visual representations. The obtained results confirm that most of the tactile information can be perceived correctly by assessors through either video or image displays, while a better performance is detected in video scenarios.
机译:本文提出了一种方法,用于开发两个数据集的新一致性程度,这两个数据集是从两个不同的测量系统对同一项目集合获得的。在这种方法中,经常在粗糙集方法中使用的不可区分性概念被用来发现基于分类一致性的一个数据集到另一个数据集的包含。接下来,为了考虑不同数据的相邻关系的影响,我们通过提出基于模糊分类一致性的包含度来修改先前的索引。此外,还介绍了使用称为Kendall系数的非参数方法测量的这两个数据集之间的顺序相关性。最后,为了创建前两个指标的合理整合,通过将专家知识引入模糊推理系统,构成了一个通用的一致性度量。相信整个程序能够检测数据下方的非线性模式,同时可以安全地使用相对少量的实验样本。而且,这种新方法可以防止许多建模技术中遇到的“黑匣子”现象,并产生可靠且可解释的结果。在实践中,所提出的方法对于相对于标准参考验证一种测量或评估系统特别重要。为了验证所提出的一致性程度的有效性,我们将其应用于研究织物样品集合的触觉特性与其视觉表示之间的关系。获得的结果证实,大多数触觉信息可以被评估者通过视频或图像显示正确地感知,而在视频场景中可以检测到更好的性能。

著录项

  • 来源
  • 作者

    Z. Xue; X. Zeng; L. Koehl; Y. Chen;

  • 作者单位

    GEMTEX, ENSAIT, 2 allee Louise et Victor Champier, BP30329, F-59056 Roubaix Cedex 1, France;

    GEMTEX, ENSAIT, 2 allee Louise et Victor Champier, BP30329, F-59056 Roubaix Cedex 1, France, Laboratoire Genie et Matriaux Textiles (GEMTEX), Ecole Nationale Superieure des arts et Industries Textiles (ENSAIT), 2 allee Louise et Victor Champier, BP30329, F-59056 Roubaix Cedex 1, France;

    GEMTEX, ENSAIT, 2 allee Louise et Victor Champier, BP30329, F-59056 Roubaix Cedex 1, France;

    Department of Clothing Design and Engineering, College of Textile and Clothing Engineering, Soochow University, Suzhou, Jiangsu Province 215021, PR China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Consistency degree; Indiscernibility; Fuzzy techniques; Fabrics; Tactile properties; Visual representation;

    机译:一致性程度;辨别力;模糊技术;面料;触觉特性;视觉表现;
  • 入库时间 2022-08-17 13:24:13

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