基于判别性全局共识优化的人脸对齐与跟踪协同效应

M. H. Khan, J. McDonagh, Georgios Tzimiropoulos
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引用次数: 36

摘要

视频中人脸标记定位的一个开放性问题是应该进行跟踪还是检测跟踪(即人脸对齐)。跟踪产生的配件精度高,但容易漂移。检测跟踪是无漂移的,但导致配件精度低。为了提供这个问题的解决方案,我们首先描述了我们所知的检测(人脸对齐)和跟踪之间的协同方法,它完全消除了人脸跟踪的漂移,而不仅仅是执行检测跟踪。我们的第一个主要贡献是表明可以使用基于使用ADMM的全局变量共识优化理论的原则优化框架实现检测和跟踪之间的这种协同作用;我们的第二个贡献是展示了如何将所提出的分析框架集成到基于级联回归和深度学习特征的人脸对齐和跟踪的最先进的判别方法中。总的来说,我们称我们的方法为判别全球共识模型(DGCM)。我们的第三个贡献是表明DGCM在300-VW数据集中最具挑战性的类别上比目前表现最好的人脸跟踪方法取得了很大的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synergy between Face Alignment and Tracking via Discriminative Global Consensus Optimization
An open question in facial landmark localization in video is whether one should perform tracking or tracking-by-detection (i.e. face alignment). Tracking produces fittings of high accuracy but is prone to drifting. Tracking-by-detection is drift-free but results in low accuracy fittings. To provide a solution to this problem, we describe the very first, to the best of our knowledge, synergistic approach between detection (face alignment) and tracking which completely eliminates drifting from face tracking, and does not merely perform tracking-by-detection. Our first main contribution is to show that one can achieve this synergy between detection and tracking using a principled optimization framework based on the theory of Global Variable Consensus Optimization using ADMM; Our second contribution is to show how the proposed analytic framework can be integrated within state-of-the-art discriminative methods for face alignment and tracking based on cascaded regression and deeply learned features. Overall, we call our method Discriminative Global Consensus Model (DGCM). Our third contribution is to show that DGCM achieves large performance improvement over the currently best performing face tracking methods on the most challenging category of the 300-VW dataset.
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