Dense depth estimation plays a key role in multiple applications such as robotics, 3D reconstruction, and augmented reality. While sparse signal, e.g., LiDAR and Radar, has been leveraged as guidance for enhancing dense depth estimation, the improvement is limited due to its low density and imbalanced distribution. To maximize the utility from the sparse source, we propose $S^3$ technique, which expands the depth value from sparse cues while estimating the confidence of expanded region. The proposed $S^3$ can be applied to various guided depth estimation approaches and trained end-to-end at different stages, including input, cost volume and output. Extensive experiments demonstrate the effectiveness, robustness, and flexibility of the $S^3$ technique on LiDAR and Radar signal.
翻译:高深度估计在机器人、3D重建和扩大现实等多种应用中发挥着关键作用,虽然利用微弱的信号,例如激光雷达和雷达作为加强密集深度估计的指导,但由于密度低和分布不均,改进有限,为了最大限度地利用稀疏来源的效用,我们提议3美元技术,在估计扩大区域信任度的同时,从稀疏的提示扩大深度价值;拟议的3美元可用于各种有指导的深度估计方法和在不同阶段,包括投入、成本量和产出,经过培训的端对端方法;广泛的实验表明关于激光雷达和雷达信号的3美元技术的有效性、稳健性和灵活性。