Reconstruction of field quantities from sparse measurements is a problem arising in a broad spectrum of applications. This task is particularly challenging when the mapping between sparse measurements and field quantities is performed in an unsupervised manner. Further complexity is added for moving sensors and/or random on-off status. Under such conditions, the most straightforward solution is to interpolate the scattered data onto a regular grid. However, the spatial resolution achieved with this approach is ultimately limited by the mean spacing between the sparse measurements. In this work, we propose a super-resolution generative adversarial network (GAN) framework to estimate field quantities from random sparse sensors without needing any full-field high-resolution training. The algorithm exploits random sampling to provide incomplete views of the {high-resolution} underlying distributions. It is hereby referred to as RAndomly-SEEDed super-resolution GAN (RaSeedGAN). The proposed technique is tested on synthetic databases of fluid flow simulations, ocean surface temperature distributions measurements, and particle image velocimetry data of a zero-pressure-gradient turbulent boundary layer. The results show excellent performance even in cases with high sparsity or with levels of noise. To our knowledge, this is the first GAN algorithm for full-field high-resolution estimation from randomly-seeded fields with no need of full-field high-resolution representations.
翻译:从稀少的测量中重建实地数量是广泛应用中产生的一个问题。当对稀少的测量量和实地数量进行测绘时,这项任务特别具有挑战性。对于移动传感器和(或)随机就地状态而言,增加了进一步的复杂性。在这种情况下,最直接的解决办法是将分散的数据内插到一个常规网格中。然而,采用这种方法实现的空间分辨率最终受到稀少测量量之间平均间距的限制。在这项工作中,我们提议一个超级分辨率基因对抗网络框架,从随机稀散传感器中估算实地数量,而不需要任何全方位高分辨率培训。算法利用随机抽样来提供{高分辨率}基本分布的不完整视图。在此情况下,最直接的解决办法是将分散的数据插入一个常规网格。提议的技术在液流模拟、海洋表面温度分布测量以及零压力感应波浪地边界层的粒子图像光度数据综合数据库中进行测试。结果显示,即使在具有高分辨率的高级分辨率]基本分布图的样本中,也显示出色的性性表现。