A Parallel Dual-Task Learning Network for InSAR Phase Retrieval

Xu Zhan, Xiaoling Zhang, Xiangdong Ma, Jun Shi, Shunxin Zheng, Jiaping Chen, Shunjun Wei, Tianjiao Zeng
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Abstract

This work focuses on the problem of InSAR phase retrieval. Current methods consist of two cascaded tasks: phase filtering and phase unwrapping. Unavoidable accumulated errors cause precision loss, and serial computations cause efficiency loss. We propose a parallel dual-task learning work to address these issues for high-quality and efficient InSAR phase retrieval. Methodologically, we retrieve the InSAR phase in a parallel manner instead of a serially cascaded one. Specifically, three core phases throughout the whole processing chain are considered, including feature attraction, task learning, and task balance. First, for feature attraction, considering the InSAR image characteristics, we propose a hybrid Trans-Encoder module to attract features locally and nonlocally. Second, regarding the dual-task needs for feature learning, we propose a dual-decoder to denoise and unwrap parallelly. Third, considering the dual-task's different attributes for task balance, we propose an uncertainty-weighted loss to make balances between tasks. Experiments on both simulated and measured data verify the proposed method's higher precision and efficiency compared to other methods. An ability study is conducted that confirms the effectiveness of the proposed modules.
InSAR相位检索的并行双任务学习网络
本文主要研究InSAR相位检索问题。当前的方法包括两个级联任务:相位过滤和相位展开。不可避免的累积误差造成精度损失,串行计算造成效率损失。我们提出了一个并行的双任务学习工作来解决这些问题,以实现高质量和高效的InSAR相位检索。在方法上,我们以并行方式而不是串行级联方式检索InSAR相位。具体来说,考虑了贯穿整个处理链的三个核心阶段,包括特征吸引、任务学习和任务平衡。首先,在特征吸引方面,结合InSAR图像的特点,提出了一种混合的Trans-Encoder模块来吸引局部和非局部特征。其次,针对特征学习的双任务需求,我们提出了一种双解码器来并行去噪和解包裹。第三,考虑到双任务对任务平衡的不同属性,提出了不确定性加权损失来实现任务间的平衡。仿真和实测数据的实验结果表明,该方法具有较高的精度和效率。进行了一项能力研究,证实了所提出模块的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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