Boosted multi-task learning for face verification with applications to web image and video search

Xiaogang Wang, Cha Zhang, Zhengyou Zhang
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引用次数: 125

Abstract

Face verification has many potential applications including filtering and ranking image/video search results on celebrities. Since these images/videos are taken under uncontrolled environments, the problem is very challenging due to dramatic lighting and pose variations, low resolutions, compression artifacts, etc. In addition, the available number of training images for each celebrity may be limited, hence learning individual classifiers for each person may cause overfitting. In this paper, we propose two ideas to meet the above challenges. First, we propose to use individual bins, instead of whole histograms, of Local Binary Patterns (LBP) as features for learning, which yields significant performance improvements and computation reduction in our experiments. Second, we present a novel Multi-Task Learning (MTL) framework, called Boosted MTL, for face verification with limited training data. It jointly learns classifiers for multiple people by sharing a few boosting classifiers in order to avoid overfitting. The effectiveness of Boosted MTL and LBP bin features is verified with a large number of celebrity images/videos from the web.
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通过网络图像和视频搜索增强了面部验证的多任务学习
人脸验证有许多潜在的应用,包括过滤和对名人的图像/视频搜索结果进行排名。由于这些图像/视频是在不受控制的环境下拍摄的,由于戏剧性的照明和姿势变化,低分辨率,压缩伪影等,问题非常具有挑战性。此外,每个名人的可用训练图像数量可能有限,因此为每个人学习单个分类器可能会导致过拟合。在本文中,我们提出了两个想法来应对上述挑战。首先,我们建议使用局部二值模式(LBP)的单个箱子,而不是整个直方图作为学习特征,这在我们的实验中产生了显着的性能改进和计算减少。其次,我们提出了一种新的多任务学习(MTL)框架,称为增强MTL,用于有限训练数据的人脸验证。它通过共享几个增强分类器来共同学习多人的分类器,以避免过拟合。通过大量来自网络的名人图像/视频验证了boosting MTL和LBP bin功能的有效性。
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