The problem of sparse multichannel blind deconvolution (S-MBD) arises frequently in many engineering applications such as radar/sonar/ultrasound imaging. To reduce its computational and implementation cost, we propose a compression method that enables blind recovery from much fewer measurements with respect to the full received signal in time. The proposed compression measures the signal through a filter followed by a subsampling, allowing for a significant reduction in implementation cost. We derive theoretical guarantees for the identifiability and recovery of a sparse filter from compressed measurements. Our results allow for the design of a wide class of compression filters. We, then, propose a data-driven unrolled learning framework to learn the compression filter and solve the S-MBD problem. The encoder is a recurrent inference network that maps compressed measurements into an estimate of sparse filters. We demonstrate that our unrolled learning method is more robust to choices of source shapes and has better recovery performance compared to optimization-based methods. Finally, in applications with limited data (fewshot learning), we highlight the superior generalization capability of unrolled learning compared to conventional deep learning.
翻译:多通道失明分解(S-MBD)问题在许多工程应用中经常出现,如雷达/声纳/超声波成像等。为了降低计算和执行成本,我们建议采用压缩方法,使在及时收到完整信号时能够从少得多的测量中恢复失明。拟议的压缩方法通过过滤器测量信号,然后进行子取样,从而大大降低执行成本。我们从理论上保证从压缩测量中提取微薄过滤器的可识别性和回收性。我们的结果允许设计一大批压缩过滤器。然后,我们提出一个数据驱动的无滚动学习框架,以学习压缩过滤器并解决S-MBD问题。编码器是一个经常性的推断网络,将压缩测量结果绘制成稀薄过滤器的估计值。我们证明,我们的无动学习方法对于选择源形状更为有力,而且比优化方法的恢复性更强。最后,在应用有限的数据(光学)中,我们强调与常规深层学习相比,非滚动学习的更普遍能力。