GRIN: Zero-Shot Metric Depth with Pixel-Level Diffusion

Published: 23 Mar 2025, Last Modified: 24 Mar 20253DV 2025 OralEveryoneRevisionsBibTeXCC BY 4.0
Keywords: monocular depth estimation, zero-shot metric depth, diffusion models
TL;DR: Zero-Shot Metric Monocular Depth Estimation with Efficient Pixel-Level Diffusion
Abstract: Learning-based methods address its inherent scale ambiguity by leveraging increasingly large labeled and unlabeled datasets, to produce geometric priors capable of generating accurate predictions across domains. As a result, state of the art approaches show impressive performance in zero-shot relative and metric depth estimation. Recently, diffusion models have exhibited remarkable scalability and generalizable properties in their learned representations. However, because these models repurpose tools originally designed for image generation, they can only operate on dense ground-truth, which is not available for most depth labels, especially in real-world settings. In this paper we present GRIN, an efficient diffusion model designed to ingest sparse unstructured training data. We use image features with 3D geometric positional encodings to condition the diffusion process both globally and locally, generating depth predictions at a pixel-level. With comprehensive experiments across eight indoor and outdoor datasets, we show that GRIN establishes a new state of the art in zero-shot metric monocular depth estimation even when trained from scratch.
Supplementary Material: zip
Submission Number: 158
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