Yao Feng, Fan Wu, Xiaohu Shao, Yan-Feng Wang, Xi Zhou
We propose a straightforward method that simultaneously reconstructs the 3D facial structure and provides dense alignment. To achieve this, we design a 2D representation called UV position map which records the 3D shape of a complete face in UV space, then train a simple Convolutional Neural Network to regress it from a single 2D image. We also integrate a weight mask into the loss function during training to improve the performance of the network. Our method does not rely on any prior face model, and can reconstruct full facial geometry along with semantic meaning. Meanwhile, our network is very light-weighted and spends only 9.8ms to process an image, which is extremely faster than previous works. Experiments on multiple challenging datasets show that our method surpasses other state-of-the-art methods on both reconstruction and alignment tasks by a large margin.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Facial Recognition and Modelling | Stirling-LQ (FG2018 3D face reconstruction challenge) | Mean Reconstruction Error (mm) | 2.38 | PRNet |
| Facial Recognition and Modelling | REALY | all | 2.013 | PRNet |
| Facial Recognition and Modelling | Stirling-HQ (FG2018 3D face reconstruction challenge) | Mean Reconstruction Error (mm) | 2.06 | PRNet |
| Facial Recognition and Modelling | NoW Benchmark | Mean Reconstruction Error (mm) | 1.98 | PRNet |
| Facial Recognition and Modelling | NoW Benchmark | Median Reconstruction Error | 1.5 | PRNet |
| Facial Recognition and Modelling | NoW Benchmark | Stdev Reconstruction Error (mm) | 1.88 | PRNet |
| Facial Recognition and Modelling | REALY (side-view) | all | 2.032 | PRNet |
| Face Reconstruction | Stirling-LQ (FG2018 3D face reconstruction challenge) | Mean Reconstruction Error (mm) | 2.38 | PRNet |
| Face Reconstruction | REALY | all | 2.013 | PRNet |
| Face Reconstruction | Stirling-HQ (FG2018 3D face reconstruction challenge) | Mean Reconstruction Error (mm) | 2.06 | PRNet |
| Face Reconstruction | NoW Benchmark | Mean Reconstruction Error (mm) | 1.98 | PRNet |
| Face Reconstruction | NoW Benchmark | Median Reconstruction Error | 1.5 | PRNet |
| Face Reconstruction | NoW Benchmark | Stdev Reconstruction Error (mm) | 1.88 | PRNet |
| Face Reconstruction | REALY (side-view) | all | 2.032 | PRNet |
| 3D | Stirling-LQ (FG2018 3D face reconstruction challenge) | Mean Reconstruction Error (mm) | 2.38 | PRNet |
| 3D | REALY | all | 2.013 | PRNet |
| 3D | Stirling-HQ (FG2018 3D face reconstruction challenge) | Mean Reconstruction Error (mm) | 2.06 | PRNet |
| 3D | NoW Benchmark | Mean Reconstruction Error (mm) | 1.98 | PRNet |
| 3D | NoW Benchmark | Median Reconstruction Error | 1.5 | PRNet |
| 3D | NoW Benchmark | Stdev Reconstruction Error (mm) | 1.88 | PRNet |
| 3D | REALY (side-view) | all | 2.032 | PRNet |
| 3D Face Modelling | Stirling-LQ (FG2018 3D face reconstruction challenge) | Mean Reconstruction Error (mm) | 2.38 | PRNet |
| 3D Face Modelling | REALY | all | 2.013 | PRNet |
| 3D Face Modelling | Stirling-HQ (FG2018 3D face reconstruction challenge) | Mean Reconstruction Error (mm) | 2.06 | PRNet |
| 3D Face Modelling | NoW Benchmark | Mean Reconstruction Error (mm) | 1.98 | PRNet |
| 3D Face Modelling | NoW Benchmark | Median Reconstruction Error | 1.5 | PRNet |
| 3D Face Modelling | NoW Benchmark | Stdev Reconstruction Error (mm) | 1.88 | PRNet |
| 3D Face Modelling | REALY (side-view) | all | 2.032 | PRNet |
| 3D Face Reconstruction | Stirling-LQ (FG2018 3D face reconstruction challenge) | Mean Reconstruction Error (mm) | 2.38 | PRNet |
| 3D Face Reconstruction | REALY | all | 2.013 | PRNet |
| 3D Face Reconstruction | Stirling-HQ (FG2018 3D face reconstruction challenge) | Mean Reconstruction Error (mm) | 2.06 | PRNet |
| 3D Face Reconstruction | NoW Benchmark | Mean Reconstruction Error (mm) | 1.98 | PRNet |
| 3D Face Reconstruction | NoW Benchmark | Median Reconstruction Error | 1.5 | PRNet |
| 3D Face Reconstruction | NoW Benchmark | Stdev Reconstruction Error (mm) | 1.88 | PRNet |
| 3D Face Reconstruction | REALY (side-view) | all | 2.032 | PRNet |