测绘通报 ›› 2026, Vol. 0 ›› Issue (6): 92-97.doi: 10.13474/j.cnki.11-2246.2026.0614

• 学术研究 • 上一篇    

基于质量图引导的深度学习相位解缠方法

徐超   

  1. 南京邮电大学物联网学院, 江苏 南京 210023
  • 收稿日期:2025-10-15 发布日期:2026-07-09
  • 作者简介:徐超(2000—),男,硕士生,主要研究方向为遥感图像处理。E-mail:648700739@qq.com

Quality map-guided deep learning phase unwrapping methods

XU Chao   

  1. School of Internet of Things, Nanjing University of Posts and Telecommunications, Nanjing 210023, China
  • Received:2025-10-15 Published:2026-07-09

摘要: [目的] 为解决InSAR相位解缠中复杂噪声、相位不连续区域解缠精度低,传统算法难以兼顾精度、稳健性与计算效率的问题,本文提出了一种基于质量图引导的残差U-Net(QG-ResUNet)深度学习方法。[方法]该方法创新地将像素级相位质量图作为先验信息,通过注意力机制融入具有残差连接的U-Net架构中,引导网络关注高可靠性相位区域并智能处理低质量区域。以归一化缠绕相位和质量图为双通道输入,网络端到端地预测解缠相位。[结果]在包含多种复杂地形和噪声水平的仿真数据集上,QG-ResUNet在RMSE、MAE和SSIM上显著优于传统SNAPHU及基线U-Net、PhaseNet等方法,RMSE降至0.51 rad,SSIM提升至0.95。消融试验证明,质量图引导机制使RMSE降低了约34.6%,验证了其核心作用。[结论]对真实Sentinel-1数据的测试表明,该方法能有效处理复杂噪声和不连续性,生成高质量的解缠结果。

关键词: 相位解缠, InSAR, 深度学习, 残差U-Net

Abstract: [Purposes]To address the low unwrapping accuracy in regions with complex noise and phase discontinuities, as well as the difficulty of traditional phase unwrapping algorithms in balancing precision, robustness and computational efficiency,the study proposes a deep learning method called quality-guided residual U-Net (QG-ResUNet).[Methods]This approach innovatively incorporates pixel-level phase quality maps as prior information through an attention mechanism into a residual-connected U-Net architecture,guiding the network to focus on high-reliability phase regions while intelligently handling low-quality areas.[Findings]Using normalized wrapped phase and quality maps as dual-channel inputs,the network end-to-end predicts detwisted phase.On a simulated dataset featuring diverse complex terrains and noise levels,QG-ResUNet significantly outperforms traditional methods like SNAPHU,baseline U-Net,and PhaseNet in RMSE,MAE,and SSIM metrics,reducing RMSE to 0.51 rad and improving SSIM to 0.95.Ablation studies demonstrate that the quality map-guided mechanism reduces RMSE by approximately 34.6%,validating its core role.[Conclusions]Testing on real Sentinel-1 data further shows that this method effectively handles complex noise and discontinuities,generating high-quality disentanglement results.

Key words: phase unwrapping, InSAR, deep learning, residual U-Net

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