宽带蝴蝶网络:通过多频神经网络实现稳定高效的反演

Matthew Li, L. Demanet, Leonardo Zepeda-N'unez
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引用次数: 2

摘要

我们引入了一种端到端的深度学习架构,称为宽带蝴蝶网络(WideBNet),用于从宽带散射数据中近似逆散射图。该体系结构结合了计算谐波分析的工具,如蝴蝶分解,以及传统的多尺度方法,如Cooley-Tukey FFT算法,以大幅减少可训练参数的数量,以匹配问题的固有复杂性。因此,WideBNet是高效的:它比现成的架构需要更少的训练点,并且具有稳定的训练动态,因此它可以依赖于标准的权值初始化策略。该体系结构仅使用用户必须指定的几个超参数自动适应数据的维度。WideBNet能够产生与基于优化的方法竞争的图像,但成本只是其中的一小部分,并且我们还通过数值证明,它可以在全孔径散射设置中学习超分辨散射体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wide-band butterfly network: stable and efficient inversion via multi-frequency neural networks
We introduce an end-to-end deep learning architecture called the wide-band butterfly network (WideBNet) for approximating the inverse scattering map from wide-band scattering data. This architecture incorporates tools from computational harmonic analysis, such as the butterfly factorization, and traditional multi-scale methods, such as the Cooley-Tukey FFT algorithm, to drastically reduce the number of trainable parameters to match the inherent complexity of the problem. As a result WideBNet is efficient: it requires fewer training points than off-the-shelf architectures, and has stable training dynamics, thus it can rely on standard weight initialization strategies. The architecture automatically adapts to the dimensions of the data with only a few hyper-parameters that the user must specify. WideBNet is able to produce images that are competitive with optimization-based approaches, but at a fraction of the cost, and we also demonstrate numerically that it learns to super-resolve scatterers in the full aperture scattering setup.
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