基于web人脸图像挖掘的人脸自动标注统一学习框架

Dayong Wang, S. Hoi, Ying He
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引用次数: 34

摘要

人脸自动标注在现实世界的多媒体信息和知识管理系统中起着重要的作用。最近,人们对挖掘互联网上的弱标记面部图像产生了浓厚的研究兴趣,以解决计算机视觉和图像理解领域长期存在的研究挑战。本文通过结合稀疏特征表示、基于内容的图像检索、转换学习和归纳学习技术的跨学科努力,提出了一种新的统一学习框架,用于挖掘弱标记的web面部图像。特别是,我们首先引入了一种新的基于搜索的人脸标注范式,然后提出了一种有效的归纳学习方案,用于从弱标记的人脸图像中训练基于分类的标注器,最后将转换和归纳学习方法统一起来,以最大限度地提高学习效果。我们在真实世界的网络面部图像数据库上进行了大量的实验,结果令人鼓舞,表明所提出的统一学习方案优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A unified learning framework for auto face annotation by mining web facial images
Auto face annotation plays an important role in many real-world multimedia information and knowledge management systems. Recently there is a surge of research interests in mining weakly-labeled facial images on the internet to tackle this long-standing research challenge in computer vision and image understanding. In this paper, we present a novel unified learning framework for face annotation by mining weakly labeled web facial images through interdisciplinary efforts of combining sparse feature representation, content-based image retrieval, transductive learning and inductive learning techniques. In particular, we first introduce a new search-based face annotation paradigm using transductive learning, and then propose an effective inductive learning scheme for training classification-based annotators from weakly labeled facial images, and finally unify both transductive and inductive learning approaches to maximize the learning efficacy. We conduct extensive experiments on a real-world web facial image database, in which encouraging results show that the proposed unified learning scheme outperforms the state-of-the-art approaches.
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