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DepthLab: From Partial to Complete

About

Missing values remain a common challenge for depth data across its wide range of applications, stemming from various causes like incomplete data acquisition and perspective alteration. This work bridges this gap with DepthLab, a foundation depth inpainting model powered by image diffusion priors. Our model features two notable strengths: (1) it demonstrates resilience to depth-deficient regions, providing reliable completion for both continuous areas and isolated points, and (2) it faithfully preserves scale consistency with the conditioned known depth when filling in missing values. Drawing on these advantages, our approach proves its worth in various downstream tasks, including 3D scene inpainting, text-to-3D scene generation, sparse-view reconstruction with DUST3R, and LiDAR depth completion, exceeding current solutions in both numerical performance and visual quality. Our project page with source code is available at https://johanan528.github.io/depthlab_web/.

Zhiheng Liu, Ka Leong Cheng, Qiuyu Wang, Shuzhe Wang, Hao Ouyang, Bin Tan, Kai Zhu, Yujun Shen, Qifeng Chen, Ping Luo• 2024

Related benchmarks

TaskDatasetResultRank
Monocular Depth EstimationNYU V2
Delta 1 Acc98.8
174
Monocular Depth EstimationETH3D
AbsRel3.1
159
Monocular Depth EstimationDIODE
AbsRel17.6
147
Monocular Depth EstimationScanNet
AbsRel2.3
103
Monocular Depth EstimationKITTI
AbsRel7.2
69
Depth CompletionKITTI
RMSE2.171
53
Depth CompletionNYU V2
RMSE0.276
44
Depth CompletionNYU Depth V2
RMSE0.09
43
Depth CompletioniBIMS-1
MAE0.098
43
Depth Super-Resolution / CompletionETH-3D (test)
AbsRel2.6
41
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