Real-time Deep Dynamic Characters
About
We propose a deep videorealistic 3D human character model displaying highly realistic shape, motion, and dynamic appearance learned in a new weakly supervised way from multi-view imagery. In contrast to previous work, our controllable 3D character displays dynamics, e.g., the swing of the skirt, dependent on skeletal body motion in an efficient data-driven way, without requiring complex physics simulation. Our character model also features a learned dynamic texture model that accounts for photo-realistic motion-dependent appearance details, as well as view-dependent lighting effects. During training, we do not need to resort to difficult dynamic 3D capture of the human; instead we can train our model entirely from multi-view video in a weakly supervised manner. To this end, we propose a parametric and differentiable character representation which allows us to model coarse and fine dynamic deformations, e.g., garment wrinkles, as explicit space-time coherent mesh geometry that is augmented with high-quality dynamic textures dependent on motion and view point. As input to the model, only an arbitrary 3D skeleton motion is required, making it directly compatible with the established 3D animation pipeline. We use a novel graph convolutional network architecture to enable motion-dependent deformation learning of body and clothing, including dynamics, and a neural generative dynamic texture model creates corresponding dynamic texture maps. We show that by merely providing new skeletal motions, our model creates motion-dependent surface deformations, physically plausible dynamic clothing deformations, as well as video-realistic surface textures at a much higher level of detail than previous state of the art approaches, and even in real-time.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Novel Pose Synthesis | DynaCap Tight Outfits | PSNR31.21 | 10 | |
| Novel Pose Synthesis | DynaCap Loose Outfits | PSNR28.1 | 10 | |
| Novel View Synthesis | DynaCap D2 (test) | PSNR32.56 | 8 | |
| Motion Synthesis | DynaCap D2 subject (test) | PSNR28.05 | 8 | |
| Novel View Synthesis | DynaCap Subject S1 - tight clothing 8 (test) | PSNR32.96 | 6 | |
| Novel Pose Synthesis | DynaCap Subject S1 - tight clothing 8 (test) | PSNR28.05 | 6 | |
| Novel Pose Synthesis | DynaCap Subject S2 - loose clothing 8 (test) | PSNR25.92 | 6 | |
| Novel View Synthesis | DynaCap Subject S2 - loose clothing 8 (test) | PSNR27.92 | 6 | |
| Surface Tracking | DynaCap S1 Novel View | CD11.53 | 3 | |
| Surface Tracking | DynaCap S1 (Novel Pose) | CD15.5 | 3 |