纺织学报 ›› 2017, Vol. 38 ›› Issue (12): 124-128.doi: 10.13475/j.fzxb.20170104105

• 服装工程 • 上一篇    下一篇

朴素贝叶斯算法在女童体型判别中的应用

  

  • 收稿日期:2017-01-22 修回日期:2017-07-19 出版日期:2017-12-15 发布日期:2017-12-18

Application of Naive Bayesian method in girl’s figure discrimination

  • Received:2017-01-22 Revised:2017-07-19 Online:2017-12-15 Published:2017-12-18

摘要:

为实现女童体型的准确判别归类,通过采集女童样本数据,建立了具有详细测量信息的数据库。利用聚类分析方法将女童体型分为3类,在此基础上,应用朴素贝叶斯算法建立了判别模型,实现了女童体型的判别归类。同时利用最小差值算法查找了被测女童样本在数据库中的相似体,最后,以主要控制部位尺寸作为查询的基础指标,绘制了雷达图拟合二者的主要控制部位尺寸。研究得出:朴素贝叶斯女童体型判别模型的判别准确度达93.8%;被测女童样本及其相似体在雷达图中各主要控制部位尺寸误差较小,相似体可用于替代被测样本;为需要获取人体详细测量信息的相关应用领域提供数据支持。

关键词: 女童体型分类, 体型判别, 贝叶斯算法, 尺寸拟合

Abstract:

In order to achieve accurate identification of girl’s figure, a large number of girl samples are collected to establish a database with detailed measurement index information. The data were analyzed and the girl’s figure are divided into three types using cluster analysis method. On the basis, the Naive Bayesian (NB) algorithm is applied to the study of girl’s figure discrimination, and the discriminant model is established. The discrimination of girl’s figure is realized. At the same time, the similar body of the test sample in the database is found through querying based on size variation, take advantage of main measurement size. And finally, the radar map was charted to fit the main measurement size of them. The study provides, the discriminant accuracy of girl’s figure discriminant model established by NB algorithm reached 94%. And the error of test sample and similar body’s main measurement size is small in the radar map. The test sample can be replaced by the similar body, and the method provides data support for the relevant application areas needing to acquire detailed measurement information about girls.

Key words: girl's figure classification, figure discrimination, Naive Bayesian method, size fitting

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