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5 months ago

End-to-End Learning of Geometry and Context for Deep Stereo Regression

Alex Kendall; Hayk Martirosyan; Saumitro Dasgupta; Peter Henry; Ryan Kennedy; Abraham Bachrach; Adam Bry

End-to-End Learning of Geometry and Context for Deep Stereo Regression

Abstract

We propose a novel deep learning architecture for regressing disparity from a rectified pair of stereo images. We leverage knowledge of the problem's geometry to form a cost volume using deep feature representations. We learn to incorporate contextual information using 3-D convolutions over this volume. Disparity values are regressed from the cost volume using a proposed differentiable soft argmin operation, which allows us to train our method end-to-end to sub-pixel accuracy without any additional post-processing or regularization. We evaluate our method on the Scene Flow and KITTI datasets and on KITTI we set a new state-of-the-art benchmark, while being significantly faster than competing approaches.

Code Repositories

zyf12389/GC-Net
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
stereo-lidar-fusion-on-kitti-depth-completionGCNet
RMSE: 1031.4

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End-to-End Learning of Geometry and Context for Deep Stereo Regression | Papers | HyperAI