IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2024)

PolSAR-MPIformer: A Vision Transformer Based on Mixed Patch Interaction for Dual-Frequency PolSAR Image Adaptive Fusion Classification

  • Xinyue Xin,
  • Ming Li,
  • Yan Wu,
  • Xiang Li,
  • Peng Zhang,
  • Dazhi Xu

DOI
https://doi.org/10.1109/JSTARS.2024.3386854
Journal volume & issue
Vol. 17
pp. 8527 – 8542

Abstract

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Vision transformer (ViT) provides new ideas for polarization synthetic aperture radar (PolSAR) image classification due to its advantages in learning global-spatial information. However, the lack of local-spatial information within samples and correlation information among samples, as well as the complexity of network structure, limit the application of ViT in practice. In addition, dual-frequency PolSAR data provide rich information, but there are fewer related studies compared to single-frequency classification algorithms. In this article, we adopt ViT as the basic framework, and propose a novel model based on mixed patch interaction for dual-frequency PolSAR image adaptive fusion classification (PolSAR-MPIformer). First, a mixed patch interaction (MPI) module is designed for the feature extraction, which replaces the high-complexity self-attention in ViT with patch interaction intra- and intersample. Besides the global-spatial information learning within samples by ViT, the MPI module adds the learning of local-spatial information within samples and correlation information among samples, thereby obtaining more discriminative features through a low-complexity network. Subsequently, a dual-frequency adaptive fusion (DAF) module is constructed as the classifier of PolSAR-MPIformer. On the one hand, the attention mechanism is utilized in DAF to reduce the impact of speckle noise while preserving details. On the other hand, the DAF evaluates the classification confidence of each band and assigns different weights accordingly, which achieves reasonable utilization of the complementarity between dual-frequency data and improves classification accuracy. Experiments on four real dual-frequency PolSAR datasets substantiate the superiority of the proposed PolSAR-MPIformer over other state-of-the-art algorithms.

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