4.7 Article

FRF-Net: Land Cover Classification From Large-Scale VHR Optical Remote Sensing Images

Journal

IEEE GEOSCIENCE AND REMOTE SENSING LETTERS
Volume 17, Issue 6, Pages 1057-1061

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LGRS.2019.2938555

Keywords

Semantics; Radio frequency; Encoding; Decoding; Feature extraction; Optical imaging; Optical sensors; Deep learning (DL); land cover classification; remote sensing (RS); semantic segmentation; very high resolution (VHR)

Funding

  1. Chang Jiang Scholars Program [T2012122]
  2. Hundred Leading Talent Project of Beijing Science and Technology [Z141101001514005]

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Deep learning (DL) technique is widely applied in remote sensing (RS) applications because of its outstanding nonlinear feature extraction ability. However, with regard to the issues of large-scale and very high-resolution (VHR) land cover classification, multi-object distributions and clear appearance with large intraclass difference become challenges for refined pixelwise land cover mapping. Focusing on these problems, the letter proposed a novel encoding-to-decoding method called the full receptive field (RF) network (FRF-Net) based on two types of attention mechanism. In the FRF-Net, ResNet-101 is used as the basic backbone. Then, the ensemble feature is generated by encoding the high-level features based on the self-attention mechanism which could achieve full RF to capture long-range semantic. Next, the encoding result is decoded by the fusion attention mechanism combined with the low-level feature to produce a fusion feature which contains a refined semantic description for accurate land cover mapping. Extensive experiments based on the GID and ISPRS data sets proved that the proposed network outperforms the state-of-the-art methods. The FRF-Net achieved 66.71% and 64.17% of the mean of classwise Intersection over Union (mIOU) with smaller computation cost on ISPRS and GID, respectively.

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