PanoDepth: A Two-Stage Approach for Monocular Omnidirectional Depth Estimation

2 Feb 2022  ·  Yuyan Li, Zhixin Yan, Ye Duan, Liu Ren ·

Omnidirectional 3D information is essential for a wide range of applications such as Virtual Reality, Autonomous Driving, Robotics, etc. In this paper, we propose a novel, model-agnostic, two-stage pipeline for omnidirectional monocular depth estimation. Our proposed framework PanoDepth takes one 360 image as input, produces one or more synthesized views in the first stage, and feeds the original image and the synthesized images into the subsequent stereo matching stage. In the second stage, we propose a differentiable Spherical Warping Layer to handle omnidirectional stereo geometry efficiently and effectively. By utilizing the explicit stereo-based geometric constraints in the stereo matching stage, PanoDepth can generate dense high-quality depth. We conducted extensive experiments and ablation studies to evaluate PanoDepth with both the full pipeline as well as the individual modules in each stage. Our results show that PanoDepth outperforms the state-of-the-art approaches by a large margin for 360 monocular depth estimation.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Depth Estimation Stanford2D3D Panoramic PanoDepth RMSE 0.3747 # 13
absolute relative error 0.0972 # 8

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