Towards Sharper Object Boundaries in Self-Supervised Depth Estimation
By: Aurélien Cecille , Stefan Duffner , Franck Davoine and more
Potential Business Impact:
Makes 3D pictures clearer at edges.
Accurate monocular depth estimation is crucial for 3D scene understanding, but existing methods often blur depth at object boundaries, introducing spurious intermediate 3D points. While achieving sharp edges usually requires very fine-grained supervision, our method produces crisp depth discontinuities using only self-supervision. Specifically, we model per-pixel depth as a mixture distribution, capturing multiple plausible depths and shifting uncertainty from direct regression to the mixture weights. This formulation integrates seamlessly into existing pipelines via variance-aware loss functions and uncertainty propagation. Extensive evaluations on KITTI and VKITTIv2 show that our method achieves up to 35% higher boundary sharpness and improves point cloud quality compared to state-of-the-art baselines.
Similar Papers
Occlusion-Aware Self-Supervised Monocular Depth Estimation for Weak-Texture Endoscopic Images
CV and Pattern Recognition
Helps doctors see inside bodies better.
Dense Geometry Supervision for Underwater Depth Estimation
CV and Pattern Recognition
Helps cameras see clearly underwater.
Depth as Points: Center Point-based Depth Estimation
CV and Pattern Recognition
Helps self-driving cars see better and faster.