使用面部表情去识别特征来评估总体幸福感

Insu Song, J. Vong
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引用次数: 8

摘要

联合国预测2010年手机的拥有量将达到50亿。移动电话和网络连接的普及为广大人口提供了前所未有的机会,包括以前难以接触到的农村地区和山区人口以及服务不足的人口。手机现在可以为发展中国家提供包括文本、图像处理和图像显示在内的功能。可以利用可用的标准化接口来创建强大的系统。特别是,手机的数码相机提供了易于使用的界面,用于捕获有关个人总体健康和情感特征的有用信息。然而,摄影图像在其原始形式中包含私人和敏感的个人信息,因此被认为不适合在线服务。因此,需要一种计算算法来从捕获的面部表情图像中提取匿名数字特征(例如,汉明距离),以估计不同的健康状态。我们已经开发了计算机算法,通过匿名的面部表情特征来预测幸福状态。研究结果可用于各种在线服务,包括建议有用的健康信息,以提高总体幸福感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing general well-being using de-identified features of facial expressions
The UN has predicted that cell-phone ownership will reach 5 billion in 2010. This proliferation of cell phones and connectivity offers an unprecedented opportunity to access vast populations, including previously hard-to-reach populations in rural areas and mountainous zones and underserved populations. Cell phones now can provide capabilities for the developing world that includes text, image processing and image displays. The available standardized interfaces can be leveraged to create powerful systems. In particular, digital cameras of cell phones provide easy to use interfaces for capturing useful information on the general well-being and emotive features of individuals. However, photographic images contain private and sensitive personal information in its raw form and thus considered unsuitable for online services. Therefore, there is a need for a computational algorithm for extracting anonymous digital features (for example, Hamming distance) from captured facial expression images for estimating different states of well-being. We have developed computer algorithms predicting well-being states from anonymous facial expression features. The research outcome can be used in a variety of online services including suggesting useful health information to improve general well-being.
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