Dense 3D Face Alignment from 2D Video for Real-Time Use - Robotics Institute Carnegie Mellon University

Dense 3D Face Alignment from 2D Video for Real-Time Use

Journal Article, Image and Vision Computing, Vol. 58, pp. 13 - 24, February, 2017

Abstract

To enable real-time, person-independent 3D registration from 2D video, we developed a 3D cascade regression approach in which facial landmarks remain invariant across pose over a range of approximately 60. From a single 2D image of a person's face, a dense 3D shape is registered in real time for each frame. The algorithm utilizes a fast cascade regression framework trained on high-resolution 3D face-scans of posed and spontaneous emotion expression. The algorithm first estimates the location of a dense set of landmarks and their visibility, then reconstructs face shapes by fitting a part-based 3D model. Because no assumptions are required about illumination or surface properties, the method can be applied to a wide range of imaging conditions that include 2D video and uncalibrated multi-view video. The method has been validated in a battery of experiments that evaluate its precision of 3D reconstruction, extension to multi-view reconstruction, temporal integration for videos and 3D head-pose estimation. Experimental findings strongly support the validity of real-time, 3D registration and reconstruction from 2D video. The software is available online at http://zface.org. Display Omitted 3D cascade regression approach is proposed in which facial landmarks remain invariant.From a single 2D image of a person's face, a dense 3D shape is registered in real time for each frame. Multi-view reconstruction and temporal integration for videos are presented.Method is robust for 3D head-pose estimation under various conditions.

BibTeX

@article{Jeni-2017-119650,
author = {Laszlo A. Jeni and Jeffrey F. Cohn and Takeo Kanade},
title = {Dense 3D Face Alignment from 2D Video for Real-Time Use},
journal = {Image and Vision Computing},
year = {2017},
month = {February},
volume = {58},
pages = {13 - 24},
}