Neural Capture and Synthesis Perceiving Systems Conference Paper 2022

Towards Metrical Reconstruction of Human Faces

Mica

Face reconstruction and tracking is a building block of numerous applications in AR/VR, human-machine interaction, as well as medical applications. Most of these applications rely on a metrically correct prediction of the shape, especially, when the reconstructed subject is put into a metrical context (i.e., when there is a reference object of known size). A metrical reconstruction is also needed for any application that measures distances and dimensions of the subject (e.g., to virtually fit a glasses frame). State-of-the-art methods for face reconstruction from a single image are trained on large 2D image datasets in a self-supervised fashion. However, due to the nature of a perspective projection they are not able to reconstruct the actual face dimensions, and even predicting the average human face outperforms some of these methods in a metrical sense. To learn the actual shape of a face, we argue for a supervised training scheme. Since there exists no large-scale 3D dataset for this task, we annotated and unified small- and medium-scale databases. The resulting unified dataset is still a medium-scale dataset with more than 2k identities and training purely on it would lead to overfitting. To this end, we take advantage of a face recognition network pretrained on a large-scale 2D image dataset, which provides distinct features for different faces and is robust to expression, illumination, and camera changes. Using these features, we train our face shape estimator in a supervised fashion, inheriting the robustness and generalization of the face recognition network. Our method, which we call MICA (MetrIC fAce), outperforms the state-of-the-art reconstruction methods by a large margin, both on current non-metric benchmarks as well as on our metric benchmarks (15\%\/ and 24\%\/ lower average error on NoW, respectively). Project website: \url{https://zielon.github.io/mica/}.

Author(s): Zielonka, Wojciech and Bolkart, Timo and Thies, Justus
Book Title: Computer Vision – ECCV 2022
Volume: 13
Pages: 250--269
Year: 2022
Month: October
Series: Lecture Notes in Computer Science, 13673
Editors: Avidan, Shai and Brostow, Gabriel and Cissé, Moustapha and Farinella, Giovanni Maria and Hassner, Tal
Publisher: Springer
Bibtex Type: Conference Paper (inproceedings)
Address: Cham
DOI: 10.1007/978-3-031-19778-9_15
Event Name: 17th European Conference on Computer Vision (ECCV 2022)
Event Place: Tel Aviv, Israel
State: Published
URL: https://zielon.github.io/mica/
Electronic Archiving: grant_archive
ISBN: 978-3-031-19777-2
Links:

BibTex

@inproceedings{MICA:ECCV2022,
  title = {Towards Metrical Reconstruction of Human Faces},
  booktitle = {Computer Vision – ECCV 2022},
  abstract = {Face reconstruction and tracking is a building block of numerous applications in AR/VR, human-machine interaction, as well as medical applications. Most of these applications rely on a metrically correct prediction of the shape, especially, when the reconstructed subject is put into a metrical context (i.e., when there is a reference object of known size). A metrical reconstruction is also needed for any application that measures distances and dimensions of the subject (e.g., to virtually fit a glasses frame). State-of-the-art methods for face reconstruction from a single image are trained on large 2D image datasets in a self-supervised fashion. However, due to the nature of a perspective projection they are not able to reconstruct the actual face dimensions, and even predicting the average human face outperforms some of these methods in a metrical sense. To learn the actual shape of a face, we argue for a supervised training scheme. Since there exists no large-scale 3D dataset for this task, we annotated and unified small- and medium-scale databases. The resulting unified dataset is still a medium-scale dataset with more than 2k identities and training purely on it would lead to overfitting. To this end, we take advantage of a face recognition network pretrained on a large-scale 2D image dataset, which
  provides distinct features for different faces and is robust to expression, illumination, and camera changes. Using these features, we train our face shape estimator in a supervised fashion, inheriting the robustness and generalization of the face recognition network. Our method, which we call MICA (MetrIC fAce), outperforms the state-of-the-art reconstruction methods by a large margin, both on current non-metric benchmarks as well as on our metric benchmarks (15\%\/ and 24\%\/ lower average error on NoW, respectively). Project website: \url{https://zielon.github.io/mica/}.},
  volume = {13},
  pages = {250--269},
  series = {Lecture Notes in Computer Science, 13673},
  editors = {Avidan, Shai and Brostow, Gabriel and Cissé, Moustapha and Farinella, Giovanni Maria and Hassner, Tal},
  publisher = {Springer},
  address = {Cham},
  month = oct,
  year = {2022},
  slug = {mica-eccv2022},
  author = {Zielonka, Wojciech and Bolkart, Timo and Thies, Justus},
  url = {https://zielon.github.io/mica/},
  month_numeric = {10}
}