CVROMay 22

WideDepth: Millimeter-Accurate Benchmark for Fisheye Depth Estimation

arXiv:2605.2407435.5
Predicted impact top 82% in CV · last 90 daysOriginality Incremental advance
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Provides a high-precision benchmark and training data for fisheye depth estimation, addressing a missing resource for robotics perception researchers.

WideDepth introduces the first indoor fisheye depth estimation benchmark with millimeter-accurate ground truth across 101 scenes, and shows that fine-tuning pinhole-trained stereo models on their 18K LiDAR-derived samples yields up to a 62% performance boost.

Fisheye cameras are increasingly adopted in robotics for near-field manipulation, navigation, and immersive perception, yet indoor depth benchmarks with accurate ground truth are still missing. To address this, we introduce WideDepth - the first indoor dataset for fisheye depth estimation, featuring 101 scenes containing 5K high-resolution stereo pairs labeled with millimeter-level ground truth depth and disparity. Our dataset also includes paired pinhole and fisheye samples across varying fields of view and baselines in both horizontal and vertical stereo setups. We further propose a method to adapt pinhole-trained stereo models to fisheye images and introduce a novel stereo fisheye image generation pipeline based on high-resolution LiDAR scans. Leveraging these methods, we thoroughly evaluate state-of-the-art monocular depth, stereo matching, and depth completion models on our benchmark. Additionally, we provide 18K LiDAR-derived sparse depth training samples, achieving up to a 62% performance boost on fisheye data when fine-tuning pinhole-based stereo models. In summary, the high precision and versatility of our benchmark set a strong foundation for advancing research in fisheye depth estimation and robotics perception. Project page: https://ilyaind.github.io/WideDepth

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