End-to-end Learning of Cost-Volume Aggregation for Real-time Dense Stereo
November 17, 2016 Β· Declared Dead Β· π International Workshop on Machine Learning for Signal Processing
"No code URL or promise found in abstract"
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Authors
Andrey Kuzmin, Dmitry Mikushin, Victor Lempitsky
arXiv ID
1611.05689
Category
cs.CV: Computer Vision
Citations
25
Venue
International Workshop on Machine Learning for Signal Processing
Last Checked
4 months ago
Abstract
We present a new deep learning-based approach for dense stereo matching. Compared to previous works, our approach does not use deep learning of pixel appearance descriptors, employing very fast classical matching scores instead. At the same time, our approach uses a deep convolutional network to predict the local parameters of cost volume aggregation process, which in this paper we implement using differentiable domain transform. By treating such transform as a recurrent neural network, we are able to train our whole system that includes cost volume computation, cost-volume aggregation (smoothing), and winner-takes-all disparity selection end-to-end. The resulting method is highly efficient at test time, while achieving good matching accuracy. On the KITTI 2015 benchmark, it achieves a result of 6.34\% error rate while running at 29 frames per second rate on a modern GPU.
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