articleJan 1, 2014GOLD OA

Speeding up Convolutional Neural Networks with Low Rank Expansions

University of Oxford

Indexed incrossref

Abstract

The focus of this paper is speeding up the application of convolutional neural networks. While delivering impressive results across a range of computer vision and machine learning tasks, these networks are computationally demanding, limiting their deployability. Convolutional layers generally consume the bulk of the processing time, and so in this work we present two simple schemes for drastically speeding up these layers. This is achieved by exploiting cross-channel or filter redundancy to construct a low rank basis of filters that are rank-1 in the spatial domain. Our methods are architecture agnostic, and can be easily applied to existing CPU and GPU convolutional frameworks for tuneable speedup…

Citation impact

1,147
total citations
FWCI
36.08
Percentile
100%
References
38
Citations per year

Authors

3

Topics & keywords

Keywords
  • Convolutional neural network
  • Computer science
  • Rank (graph theory)
  • Artificial intelligence
  • Mathematics
  • Combinatorics
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