Hunting for Fashion via Large Scale Soft Biometrics Analysis

Xiaoyuan Wang, Li Lu, Qijun Zhao, K. Ubul
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引用次数: 1

Abstract

Fashion analysis has gained increasing attention thanks to its immense potential in fashion industry, precision marketing, and sociological analysis, etc. While a lot of fashion analysis work has been done for clothing and makeup, few of them address the problem from the perspective of large scale soft biometrics. In this paper, we focus on soft biometric attributes on human faces, particularly lip color and hair color, based on the analysis of which using a large scale data set we aim to reveal the fashion trend of lipstick color and hair color. To this end, we first perform the following steps on each image: face detection, occlusion detection, face parsing, and color feature extraction from the lip and hair regions. We then perform clustering based on the extracted color features in the given large scale data set. In the experiments, we collect from the Internet 15, 366 mouth-occluded and 14, 580 hair-occluded face images to train an effective occlusion detector such that noisy face images with occluded mouths/hairs are excluded from the subsequent fashion analysis, and another more than 20, 000 face images for analyzing the fashion trend of lipstick and hair colors. Our experimental results on the collected large scale data set prove the effectiveness of our proposed method.
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通过大规模软生物特征分析寻找时尚
时尚分析因其在时尚产业、精准营销、社会学分析等领域的巨大潜力而受到越来越多的关注。虽然对服装和化妆品进行了大量的时尚分析工作,但很少有人从大规模软生物识别的角度来解决这个问题。在本文中,我们重点研究了人脸的软生物特征属性,特别是唇色和发色,在此基础上,利用大规模的数据集,我们旨在揭示口红颜色和发色的流行趋势。为此,我们首先对每张图像执行以下步骤:人脸检测、遮挡检测、人脸解析以及唇部和毛发区域的颜色特征提取。然后,我们根据提取的颜色特征在给定的大规模数据集中进行聚类。在实验中,我们从互联网上收集了15366张嘴巴被遮挡的人脸图像和14580张头发被遮挡的人脸图像来训练一个有效的遮挡检测器,使得嘴巴/头发被遮挡的嘈杂人脸图像被排除在随后的时尚分析之外,另外还有2万多张人脸图像用于分析口红和头发颜色的时尚趋势。在大规模数据集上的实验结果证明了该方法的有效性。
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