Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Monocular Depth Estimation using Diffusion Models

About

We formulate monocular depth estimation using denoising diffusion models, inspired by their recent successes in high fidelity image generation. To that end, we introduce innovations to address problems arising due to noisy, incomplete depth maps in training data, including step-unrolled denoising diffusion, an $L_1$ loss, and depth infilling during training. To cope with the limited availability of data for supervised training, we leverage pre-training on self-supervised image-to-image translation tasks. Despite the simplicity of the approach, with a generic loss and architecture, our DepthGen model achieves SOTA performance on the indoor NYU dataset, and near SOTA results on the outdoor KITTI dataset. Further, with a multimodal posterior, DepthGen naturally represents depth ambiguity (e.g., from transparent surfaces), and its zero-shot performance combined with depth imputation, enable a simple but effective text-to-3D pipeline. Project page: https://depth-gen.github.io

Saurabh Saxena, Abhishek Kar, Mohammad Norouzi, David J. Fleet• 2023

Related benchmarks

TaskDatasetResultRank
Monocular Depth EstimationKITTI (Eigen)
Abs Rel0.064
502
Monocular Depth EstimationNYU v2 (test)
Abs Rel0.074
257
Depth EstimationNYU Depth V2
RMSE0.314
177
Monocular Depth EstimationKITTI Raw Eigen (test)
RMSE2.985
159
Depth EstimationKITTI depth (val)
Acc (δ < 1.25)0.953
16
Showing 5 of 5 rows

Other info

Code

Follow for update