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Iris: Bringing Real-World Priors into Diffusion Model for Monocular Depth Estimation

arXiv cs.CV / 3/18/2026

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Key Points

  • Iris proposes a deterministic diffusion-based framework for monocular depth estimation that integrates real-world priors into the diffusion model.
  • It introduces a two-stage Priors-to-Geometry Deterministic (PGD) schedule with Spectral-Gated Distillation (SGD) and Spectral-Gated Consistency (SGC) to transfer low-frequency priors and enforce high-frequency fidelity.
  • The two stages share weights and run on a high-to-low timestep schedule, enabling efficient training with limited data and better generalization from synthetic to real scenes.
  • Experimental results show significant improvements in monocular depth estimation performance and strong generalization to real-world scenarios.

Abstract

In this paper, we propose \textbf{Iris}, a deterministic framework for Monocular Depth Estimation (MDE) that integrates real-world priors into the diffusion model. Conventional feed-forward methods rely on massive training data, yet still miss details. Previous diffusion-based methods leverage rich generative priors yet struggle with synthetic-to-real domain transfer. Iris, in contrast, preserves fine details, generalizes strongly from synthetic to real scenes, and remains efficient with limited training data. To this end, we introduce a two-stage Priors-to-Geometry Deterministic (PGD) schedule: the prior stage uses Spectral-Gated Distillation (SGD) to transfer low-frequency real priors while leaving high-frequency details unconstrained, and the geometry stage applies Spectral-Gated Consistency (SGC) to enforce high-frequency fidelity while refining with synthetic ground truth. The two stages share weights and are executed with a high-to-low timestep schedule. Extensive experimental results confirm that Iris achieves significant improvements in MDE performance with strong in-the-wild generalization.