纺织学报 ›› 2011, Vol. 32 ›› Issue (7): 146-149.

• 管理与信息化 • 上一篇    下一篇

毛针织服装任意衣片的自动识别

汪秀琛1,李晓久2   

  1. 1. 中原工学院;天津工业大学
    2. 天津工业大学
  • 收稿日期:2010-08-02 修回日期:2011-01-27 出版日期:2011-07-15 发布日期:2011-09-15
  • 通讯作者: 汪秀琛 E-mail:nbwangxiuchen@163.com
  • 基金资助:

    河南省重大科技攻关项目(102102210064);省级

Automatic Recognition of Arbitrary Pieces for Wool Knitted Clothing

  • Received:2010-08-02 Revised:2011-01-27 Online:2011-07-15 Published:2011-09-15
  • Contact: Xiu-chen Wang E-mail:nbwangxiuchen@163.com

摘要: 本文提出一种新的基于模糊理论的毛针织服装衣片自动识别算法,使计算机能自动识别任意衣片,为后续工艺单计算、尺寸部位识别及工艺流程的制定提供依据。通过建立基于关键点的衣片数据模型对衣片进行数字化描述,提出任意衣片与标准衣片的对比方法及步骤;通过对任意衣片的等比例变换,给出基于关键点及基于轮廓点的两种任意衣片与标准衣片的隶属値公式;通过隶属度归一化处理,最终给出了决定任意衣片归类的总隶度函数。编写程序对上述算法进行验证,得出了任意衣片识别准确率达到95%以上的实验结果。结论指出,该算法能较为准确的识别毛针织服装任意衣片的种类

Abstract: This paper proposes a new automatic recognition algorithm for wool knitted clothing based on fuzzy theory. This new algorithm can recognize arbitrary clothing pieces by computer and provide evidences for continue process sheet calculation, size parts recognition and process formulation. Firstly, it does digitized description for clothing pieces by clothing pieces’ data model based on key points, and proposes a contrast method between arbitrary and standard clothing pieces. Secondly, it gives a membership function between two arbitrary and standard clothing pieces based on key points and contour points according to equal proportion transformation of clothing pieces. After normalization processing by this membership function, a general membership function for determining the classification of arbitrary clothing pieces is obtained. Finally, we compile some programs to verify above algorithm and obtain an experimental result that the recognition accuracy of arbitrary clothing pieces can reach more than 95%. From these results, we conclude that the classification of arbitrary clothing pieces can recognized more accurately by this algorithm.

中图分类号: 

  • TS 184.5
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