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Garment industry oriented clothes shape classifying by cluster

机译:服装产业导向的服装形状分类

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Based on research about patterns of garment, patterns were made to achieve data and interval of the bust eases. On the basis of bust eases, a series of shape profiles in different eases of garment were designed and distinguishing experiment was done according to the theory of psychics, which profiles in different eases were distinguished. The shapes in different fit were classified into four clusters: tight fit, fit, little loose and loose. The results of experiment were analyzed by k-means cluster method and quantitative classification based on bust ease was achieved. It opens our mind to make garment research by data mining method. A new method for garment fit research and classification exploration of outline shape was brought forward, which it offers reference for garment industry and research for automatic computer distinguishing technology.
机译:在对服装图案进行研究的基础上,制作出图案以获取数据和胸围缓解间隔。在胸围的基础上,设计了一系列不同服装的形状轮廓,并根据心理学理论进行了区分实验,对不同服装的轮廓进行了区分。不同适合度的形状分为四类:紧密适合度,适合度,极少松动度和松散度。采用k均值聚类法对实验结果进行了分析,实现了基于胸围缓解程度的定量分类。通过数据挖掘方法进行服装研究打开了我们的视野。提出了一种服装合身性研究和轮廓形状分类探索的新方法,为服装工业和计算机自动判别技术的研究提供参考。

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