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BokehDepth: Enhancing Monocular Depth Estimation through Bokeh Generation

About

Bokeh and monocular depth estimation are tightly coupled through the same lens imaging geometry, yet current methods exploit this connection in incomplete ways. High-quality bokeh rendering pipelines typically depend on noisy depth maps, which amplify estimation errors into visible artifacts, while modern monocular metric depth models still struggle on weakly textured, distant and geometrically ambiguous regions where defocus cues are most informative. We introduce BokehDepth, a two-stage framework that decouples bokeh synthesis from depth prediction and treats defocus as an auxiliary supervision-free geometric cue. In Stage-1, a physically guided controllable bokeh generator, built on a powerful pretrained image editing backbone, produces depth-free bokeh stacks with calibrated bokeh strength from a single sharp input. In Stage-2, a lightweight defocus-aware aggregation module plugs into existing monocular depth encoders, fuses features along the defocus dimension, and exposes stable depth-sensitive variations while leaving downstream decoder unchanged. Across challenging benchmarks, BokehDepth improves visual fidelity over depth-map-based bokeh baselines and consistently boosts the metric accuracy and robustness of strong monocular depth foundation models.

Hangwei Zhang, Armando Teles Fortes, Tianyi Wei, Xingang Pan• 2025

Related benchmarks

TaskDatasetResultRank
Depth EstimationHAMMER
Delta 10.894
29
Monocular Depth EstimationNYU-Depth v2 (val)
A.Rel3.9
21
Metric Depth EstimationiBIMS-1
AbsRel0.039
13
Depth EstimationSintel
AbsRel0.391
12
Metric Depth EstimationMiddlebury
Delta171.6
7
Metric Depth EstimationMake3D
Delta178.6
7
Metric Depth EstimationETH3D
Delta196.3
7
Bokeh synthesisEBB! Val200 (real)
PSNR25.9084
5
Bokeh synthesisSystheBokeh300 (synthetic)
PSNR29.1215
5
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