服装款式推荐系统

W. Hsieh, B. Xue, Ju-Chin Chen, K. W. Lin, Weng-Long Chang
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引用次数: 1

摘要

通过分析人脸特征与服装风格之间的关系,提出了一种服装风格推荐系统。在我们的工作中定义了五种不同的脸型和七种不同的服装风格。为了提取在不同光照条件下稳定的特征,使用几何信息来测量规则特征之间的距离,例如眼睛之间的距离,眼睛到鼻子的平均距离。采用主动形状模型预先检测人脸特征点,而不是直接检测规则的人脸特征。然后提取了14种不同的几何信息,可以捕获判别特征来描述特定面部形状以及不同面部形状之间的显著性属性。最后是多标签分类,因为一种脸型适合多种服装风格。二值相关(BP)方法和标签功率集(LP)方法分别将多标签分类转化为多个二值类问题和一个多类问题。实验采用两种传递方法对系统性能进行评价,并采用haming -loss函数和F-score进行精度度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clothes style recommendation system
We propose a clothes style recommendation system by analyzing the relation between facial features and clothes style. Five different kinds of face shapes and seven different kinds of clothes styles are defined in our work. To extract features that are stable under different lighting conditions, geometric information is used, which measure distance between regular features, e.g. distance between eyes, average distance from eye to nose. Instead of detecting regular facial features directly, facial feature points are detected by active shape model in advance. Then 14 different kinds of geometric information are extracted, which can capture discriminant features to describe the significance properties not only for the specific facial shape but between different facial shapes. Finally, multi-label classification is applied because one facial shape is suitable to more one clothes styles. Binary-Relevance (BP) and Label Powerset (LP) methods are used to transfer multi-label classification into multiple binary class problems and one multi-class problem, respectively. Experiments are designed to evaluate the system performance with two transferring methods, and Hamming-loss function and F-score are used for accuracy measure.
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