通过回归局部二进制特征在3000帧/秒的人脸对齐

Shaoqing Ren, Xudong Cao, Yichen Wei, Jian Sun
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引用次数: 867

摘要

本文提出了一种高效、高精度的人脸对齐回归方法。我们的方法有两个新颖的组成部分:一组局部二进制特征,以及用于学习这些特征的局部性原则。局部性原则指导我们独立地学习一组高度判别的局部二值特征。得到的局部二值特征用于共同学习最终输出的线性回归。在当前最具挑战性的基准测试中,我们的方法达到了最先进的结果。此外,由于提取和回归局部二值特征的计算成本非常低,因此我们的系统比以前的方法快得多。它在桌面电脑上达到3000帧/秒以上,在手机上达到300帧/秒以上,可以定位几十个地标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Alignment at 3000 FPS via Regressing Local Binary Features
This paper presents a highly efficient, very accurate regression approach for face alignment. Our approach has two novel components: a set of local binary features, and a locality principle for learning those features. The locality principle guides us to learn a set of highly discriminative local binary features for each facial landmark independently. The obtained local binary features are used to jointly learn a linear regression for the final output. Our approach achieves the state-of-the-art results when tested on the current most challenging benchmarks. Furthermore, because extracting and regressing local binary features is computationally very cheap, our system is much faster than previous methods. It achieves over 3, 000 fps on a desktop or 300 fps on a mobile phone for locating a few dozens of landmarks.
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