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SuperDepth: Self-Supervised, Super-Resolved Monocular Depth Estimation

About

Recent techniques in self-supervised monocular depth estimation are approaching the performance of supervised methods, but operate in low resolution only. We show that high resolution is key towards high-fidelity self-supervised monocular depth prediction. Inspired by recent deep learning methods for Single-Image Super-Resolution, we propose a sub-pixel convolutional layer extension for depth super-resolution that accurately synthesizes high-resolution disparities from their corresponding low-resolution convolutional features. In addition, we introduce a differentiable flip-augmentation layer that accurately fuses predictions from the image and its horizontally flipped version, reducing the effect of left and right shadow regions generated in the disparity map due to occlusions. Both contributions provide significant performance gains over the state-of-the-art in self-supervised depth and pose estimation on the public KITTI benchmark. A video of our approach can be found at https://youtu.be/jKNgBeBMx0I.

Sudeep Pillai, Rares Ambrus, Adrien Gaidon• 2018

Related benchmarks

TaskDatasetResultRank
Monocular Depth EstimationKITTI (Eigen)
Abs Rel0.112
502
Depth EstimationKITTI (Eigen split)
RMSE4.958
276
Monocular Depth EstimationKITTI
Abs Rel0.112
161
Monocular Depth EstimationKITTI Raw Eigen (test)
RMSE4.958
159
Monocular Depth EstimationKITTI 2015 (Eigen split)
Abs Rel0.112
95
Depth PredictionKITTI original ground truth (test)
Abs Rel0.116
38
Depth EstimationKITTI improved ground truth 2015 (93% Eigen split)
Abs Rel0.09
32
Depth EstimationKITTI Eigen split improved ground truth (test)
Abs Rel0.09
22
Monocular Depth EstimationKITTI Improved Ground Truth 40
Abs Rel Error0.09
22
Monocular Depth EstimationKITTI Raw (KR) Eigen 80m (test)
Abs Rel Error0.112
20
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