Using Group Prior to Identify People in Consumer Images

Andrew C. Gallagher, Tsuhan Chen
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引用次数: 58

Abstract

While face recognition techniques have rapidly advanced in the last few years, most of the work is in the domain of security applications. For consumer imaging applications, person recognition is an important tool that is useful for searching and retrieving images from a personal image collection. It has been shown that when recognizing a single person in an image, a maximum likelihood classifier requires the prior probability for each candidate individual. In this paper, we extend this idea and describe the benefits of using a group prior for identifying people in consumer images with multiple people. The group prior describes the probability of a group of individuals appearing together in an image. In our application, we have a subset of ambiguously labeled images for a consumer image collection, where we seek to identify all of the people in the collection. We describe a simple algorithm for resolving the ambiguous labels. We show that despite errors in resolving ambiguous labels, useful classifiers can be trained with the resolved labels. Recognition performance is further improved with a group prior learned from the ambiguous labels. In summary, by modeling the relationships between the people with the group prior, we improve classification performance.
使用群体优先识别消费者形象中的人物
虽然人脸识别技术在过去几年中得到了迅速发展,但大部分工作都是在安全领域的应用。对于消费者成像应用来说,人物识别是一个重要的工具,用于从个人图像集合中搜索和检索图像。研究表明,当识别图像中的单个人时,最大似然分类器需要每个候选个体的先验概率。在本文中,我们扩展了这一想法,并描述了使用群体先验来识别具有多个人的消费者图像中的人的好处。群体先验描述了一组个体在图像中一起出现的概率。在我们的应用程序中,我们有一个消费者图像集合的模糊标记图像子集,我们试图识别集合中的所有人。我们描述了一种解决歧义标签的简单算法。我们表明,尽管在解决歧义标签时存在错误,但可以使用解决的标签训练有用的分类器。利用从歧义标签中学习到的组先验进一步提高了识别性能。总之,通过对具有组先验的人之间的关系进行建模,我们提高了分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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