Learning Locally-Adaptive Decision Functions for Person Verification

Z. Li, Shiyu Chang, Feng Liang, Thomas S. Huang, Liangliang Cao, John R. Smith
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引用次数: 518

Abstract

This paper considers the person verification problem in modern surveillance and video retrieval systems. The problem is to identify whether a pair of face or human body images is about the same person, even if the person is not seen before. Traditional methods usually look for a distance (or similarity) measure between images (e.g., by metric learning algorithms), and make decisions based on a fixed threshold. We show that this is nevertheless insufficient and sub-optimal for the verification problem. This paper proposes to learn a decision function for verification that can be viewed as a joint model of a distance metric and a locally adaptive thresholding rule. We further formulate the inference on our decision function as a second-order large-margin regularization problem, and provide an efficient algorithm in its dual from. We evaluate our algorithm on both human body verification and face verification problems. Our method outperforms not only the classical metric learning algorithm including LMNN and ITML, but also the state-of-the-art in the computer vision community.
学习局部自适应决策函数的人员验证
本文研究了现代监控和视频检索系统中的人员验证问题。问题是要识别出一组人脸或人体图像是否与同一个人有关,即使这个人以前没有见过。传统方法通常寻找图像之间的距离(或相似性)度量(例如,通过度量学习算法),并根据固定阈值做出决策。然而,我们证明这对于验证问题来说是不够的和次优的。本文提出学习一种用于验证的决策函数,该函数可以看作是距离度量和局部自适应阈值规则的联合模型。我们进一步将我们的决策函数的推理表述为一个二阶大余量正则化问题,并提供了一个有效的对偶算法。我们在人体验证和人脸验证问题上对我们的算法进行了评估。我们的方法不仅优于经典的度量学习算法,包括LMNN和ITML,而且优于计算机视觉界的最新技术。
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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