articleJun 1, 2016Closed access

Efficient Deep Learning for Stereo Matching

University of Toronto

Indexed incrossref

Abstract

In the past year, convolutional neural networks have been shown to perform extremely well for stereo estimation. However, current architectures rely on siamese networks which exploit concatenation followed by further processing layers, requiring a minute of GPU computation per image pair. In contrast, in this paper we propose a matching network which is able to produce very accurate results in less than a second of GPU computation. Towards this goal, we exploit a product layer which simply computes the inner product between the two representations of a siamese architecture. We train our network by treating the problem as multi-class classification, where the classes are all possible disparities. This allows us…

Citation impact

800
total citations
FWCI
59.97
Percentile
100%
References
39
Citations per year

Authors

3

Topics & keywords

Keywords
  • Exploit
  • Computer science
  • Concatenation (mathematics)
  • Computation
  • Matching (statistics)
  • Convolutional neural network
  • Artificial intelligence
  • Product (mathematics)
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