CVAug 15, 2023

FLAME-based Multi-View 3D Face Reconstruction

arXiv:2308.07551v25 citationsh-index: 16
Originality Incremental advance
AI Analysis

This work addresses face 3D reconstruction for applications in various fields, but appears incremental as it combines existing approaches.

The paper tackles 3D face reconstruction by combining the FLAME parametric model with a multi-view training framework called MFNet, achieving good results on AFLW and FaceScape datasets.

At present, face 3D reconstruction has broad application prospects in various fields, but the research on it is still in the development stage. In this paper, we hope to achieve better face 3D reconstruction quality by combining multi-view training framework with face parametric model Flame, propose a multi-view training and testing model MFNet (Multi-view Flame Network). We build a self-supervised training framework and implement constraints such as multi-view optical flow loss function and face landmark loss, and finally obtain a complete MFNet. We propose innovative implementations of multi-view optical flow loss and the covisible mask. We test our model on AFLW and facescape datasets and also take pictures of our faces to reconstruct 3D faces while simulating actual scenarios as much as possible, which achieves good results. Our work mainly addresses the problem of combining parametric models of faces with multi-view face 3D reconstruction and explores the implementation of a Flame based multi-view training and testing framework for contributing to the field of face 3D reconstruction.

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