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OmniDepth: Dense Depth Estimation for Indoors Spherical Panoramas

About

Recent work on depth estimation up to now has only focused on projective images ignoring 360 content which is now increasingly and more easily produced. We show that monocular depth estimation models trained on traditional images produce sub-optimal results on omnidirectional images, showcasing the need for training directly on 360 datasets, which however, are hard to acquire. In this work, we circumvent the challenges associated with acquiring high quality 360 datasets with ground truth depth annotations, by re-using recently released large scale 3D datasets and re-purposing them to 360 via rendering. This dataset, which is considerably larger than similar projective datasets, is publicly offered to the community to enable future research in this direction. We use this dataset to learn in an end-to-end fashion the task of depth estimation from 360 images. We show promising results in our synthesized data as well as in unseen realistic images.

Nikolaos Zioulis, Antonis Karakottas, Dimitrios Zarpalas, Petros Daras• 2018

Related benchmarks

TaskDatasetResultRank
Monocular Depth EstimationStanford2D3D (test)
δ1 Accuracy83.26
71
Monocular Depth EstimationMatterport3D (test)
Delta Acc (< 1.25)68.3
48
Depth EstimationMatterport3D
delta187.95
35
Monocular Depth Estimation360D (test)
RMSE0.1113
25
Monocular 360 Depth EstimationMatterport3D official (test)
Delta Acc (1.25x)68.3
20
Depth CompletionMatterport3D (test)
RMSE0.7643
16
Monocular panoramic depth estimationStanford2D3D
Delta 1 Accuracy68.77
13
Depth EstimationStanford2D3D
Abs Rel0.1996
13
Monocular Depth EstimationPanoSunCG
RMSE0.3171
11
360 Depth Estimation3D60 (test)
Abs Rel0.0702
11
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