Remote Sensing (Sep 2023)

SEL-Net: A Self-Supervised Learning-Based Network for PolSAR Image Runway Region Detection

  • Ping Han,
  • Yanwen Peng,
  • Zheng Cheng,
  • Dayu Liao,
  • Binbin Han

DOI
https://doi.org/10.3390/rs15194708
Journal volume & issue
Vol. 15, no. 19
p. 4708

Abstract

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This paper proposes an information enhancement network based on self-supervised learning (SEL-Net) for runway area detection. During the self-supervised learning phase, the distinctive attributes of PolSAR multi-channel data are fully harnessed to enhance the generated pretrained model’s focus on airport runway areas. During the detection phase, this paper presents an improved U-Net detection network. Edge Feature Extraction Modules (EEM) are integrated into the encoder and skip connection sections, while Semantic Information Transmission Modules (STM) are embedded into the decoder section. Furthermore, improvements have been applied to the network’s upsampling and downsampling architectures. Experimental results demonstrate that the proposed SEL-Net effectively addresses the issues of high false alarms and runway integrity, achieving a superior detection performance.

Keywords