论文标题
高噪声免疫时域通过级联网络(TICAN)用于复杂散射器
High Noise Immune Time-domain Inversion via Cascade Network (TICaN) for Complex Scatterers
论文作者
论文摘要
在本文中,提出了高噪声免疫时域级联网络(TICAN)来重建来自测得的电磁场的散射器。 TICAN由一个旨在提高信号噪声比率的脱氧块组成,以及一个反转模块,用于从原始的时间域测量值中重建电磁性能。这项研究中研究的散点子包括复杂的几何形状和高对比度,涵盖了层层,有损的培养基和超细结构等。在经过良好的训练之后,从准确性,噪声免疫,计算加速度和普遍性的角度评估了TICAN的性能。可以证明,所提出的框架可以在高强度的噪声环境下实现高精度倒置。与传统的重建方法相比,TICAN通过利用GPU的平行计算能力,从而显着减少计算时间,从而避免了乏味的迭代计算。此外,拟议的提琴在重建未知的散点子(例如著名的奥地利戒指)方面具有一定的概括能力。在此,人们有信心的是,拟议中的TICAN将成为各种实际情况实时定量微波成像的新途径。
In this paper, a high noise immune time-domain inversion cascade network (TICaN) is proposed to reconstruct scatterers from the measured electromagnetic fields. The TICaN is comprised of a denoising block aiming at improving the signal-to-noise ratio, and an inversion block to reconstruct the electromagnetic properties from the raw time-domain measurements. The scatterers investigated in this study include complicated geometry shapes and high contrast, which cover the stratum layer, lossy medium and hyperfine structure, etc. After being well trained, the performance of the TICaN is evaluated from the perspective of accuracy, noise-immunity, computational acceleration, and generalizability. It can be proven that the proposed framework can realize high-precision inversion under high-intensity noise environments. Compared with traditional reconstruction methods, TICaN avoids the tedious iterative calculation by utilizing the parallel computing ability of GPU and thus significantly reduce the computing time. Besides, the proposed TICaN has certain generalization ability in reconstructing the unknown scatterers such as the famous Austria rings. Herein, it is confident that the proposed TICaN will serve as a new path for real-time quantitative microwave imaging for various practical scenarios.