Need for Speed: Zero-Shot Depth Completion with Single-Step Diffusion
arXiv cs.CV / 3/12/2026
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Key Points
- Marigold-SSD is a single-step, late-fusion depth completion framework that leverages diffusion priors while eliminating costly test-time optimization typical of diffusion-based methods.
- The approach shifts computational burden from inference to finetuning, enabling efficient and robust 3D perception under real-world latency constraints.
- It achieves significantly faster inference with a training cost of only 4.5 GPU days.
- The method is evaluated across four indoor and two outdoor benchmarks, showing strong cross-domain generalization and zero-shot performance compared to existing depth completion approaches.
- The work also analyzes performance under varying input sparsity levels, challenging common evaluation protocols and highlighting efficiency gains over discriminative models.
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