Concepedia

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

1.5K

Citations

38

References

2017

Year

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 stateof-the-art benchmark, while being significantly faster than competing approaches.

References

YearCitations

2016

214.9K

2017

75.5K

2015

36.2K

2014

31.2K

2014

14.6K

2012

14K

2002

6.7K

2013

4.9K

2007

4.1K

2002

3K

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