A Lightweight Network with Multi-Stage Feature Fusion Module for Single-View 3d Face Reconstruction

Jing Wang, Shikun Zhang, F. Song, Ge Song, Ming Yang
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Abstract

3D face reconstruction has attracted great attentions of researchers from both academic and industry for its potential application in many scenarios such as face alignment and recognition across large poses. 3D Morphable Model which reconstructs a 3D face through basis coefficients prediction, is usually adopted as the typical parametric framework for 3D face and is suitable to combine with deep learning. Existing cascade regression method predicts coefficients by multiple iterations, which is time-consuming. In this paper, we propose an efficient and end-to-end method for single-view 3D face reconstruction. We build a lightweight network based on mobile blocks with faster speed for parameter extraction and smaller model size. Especially, a multi-stage feature fusion module is designed for enhancing the end-to-end learning. To match the setting of input image size, we updated the pose label of images under various sizes in training dataset before training. Extensive experiments on challenging datasets validate the efficiency of our method for both 3D face reconstruction and face alignment.
基于多阶段特征融合模块的单视图三维人脸重建轻量级网络
三维人脸重建由于其在人脸对齐和大姿态识别等诸多场景中的潜在应用而受到学术界和工业界的广泛关注。三维变形模型(3D Morphable Model)是一种通过基系数预测重建三维人脸的模型,通常被用作三维人脸的典型参数化框架,适合与深度学习相结合。现有的级联回归方法需要多次迭代来预测系数,耗时长。本文提出了一种高效的端到端单视图三维人脸重建方法。我们构建了一个基于移动块的轻量级网络,具有更快的参数提取速度和更小的模型尺寸。特别设计了多阶段特征融合模块,增强了端到端学习能力。为了匹配输入图像大小的设置,我们在训练前更新了训练数据集中不同大小图像的姿态标签。在具有挑战性的数据集上进行的大量实验验证了我们的方法在三维人脸重建和人脸对齐方面的有效性。
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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