FHP:用于发型推荐的面部和头发特征处理器

Manan Doshi, Jimil Shah, Rahul Soni, Soni Bhambar
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引用次数: 1

摘要

发型在很大程度上决定了一个人的外貌。我们经常观察到,顾客的期望与理发师的理解之间存在巨大的差距,从而导致理发后的不满。造成这一问题的主要原因是用户在选择合适的发型时缺乏利用特征信息的理解。一个模型可以提取决策的基本特征,从而提高客户满意度。在本文中,我们提出了FHP架构,从用户提交的图像中提取对发型推荐至关重要的特征。该体系结构包括两个主要的提取面部和头发特征的管道。这个过程从图像分割和解析开始。将分割后的面部和毛发区域作为输入输入到两条管道中,分别提取脸型、肤色、发质和发色。这四个特征可以用于发型推荐专家系统的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FHP: Facial and Hair Feature Processor for Hairstyle Recommendation
Hairstyles contribute majorly to an individual’s physical appearance. It is commonly observed that there is a huge gap between customer’s expectations and the barber’s understanding leading to post-haircut dissatisfaction. A major cause of this problem is that users lack the understanding of utilizing feature information while selecting a suitable hairstyle. A model that extracts essential features for decision-making can improve customer satisfaction. In this paper, we propose the FHP architecture that extracts features from user-submitted images that are crucial to hairstyle recommendations. The architecture consists of two major pipelines for extracting facial and hair features. The process starts with image segmentation and parsing. The segmented facial and hair regions are given as input to the two pipelines for extracting face shape, skin tone, hair texture, and hair color. These four features can then be used in the development of an expert system for hairstyle recommendations.
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