IEEE Access (Jan 2019)

DFR-net: Learning Dense Features at the Resolution Level

  • Yang He,
  • Wenyuan Tao,
  • Chung-Ming Own

DOI
https://doi.org/10.1109/ACCESS.2019.2930003
Journal volume & issue
Vol. 7
pp. 97013 – 97020

Abstract

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Patch matching is a significant stage in numerous computer vision tasks. This paper proposed a novel network structure, named DFR-net, appropriate to match patches. The proposed network uses a dense connectivity pattern at the resolution level, making the training efficient. This connectivity pattern has been shown improving the accuracy of patch matching. The DFR-net, with a single-tower architecture, focused on the relationship between (non-)corresponding patches, which improved the performance of the traditional Siamese network. The component of DFR-net, named RDCNet block, produces a smaller model size and is demonstrated suiting for patch matching. To ensure the experimental effectiveness, the DFR-net was trained on the public Brown patch dataset and the HPatches dataset.

Keywords