论文标题
通过机器学习从超低原子的单拍图像中优化可观察的读数
Optimized Observable Readout from Single-shot Images of Ultracold Atoms via Machine Learning
论文作者
论文摘要
单拍图像是超电原子的实验的标准读数,这是其多体物理学的光泽玻璃。因此,从单次图像中有效提取可观察到的物品至关重要。在这里,我们演示了人工神经网络如何优化这种提取。与标准的平均方法相反,机器学习允许从大量减少的单拍图像中准确地获得单粒子密度。直接利用量子波动和相关性,以在前所未有的精度下以倾斜的双孔电势获得玻色子的物理可观察物。引人注目的是,机器学习还可以可靠地从真实空间的单拍图像中可靠地提取动量空间可观察物,反之亦然。这消除了对原位和飞行时间成像之间实验设置进行重新配置的必要性,从而有可能赋予资源的出色减少。
Single-shot images are the standard readout of experiments with ultracold atoms -- the tarnished looking glass into their many-body physics. The efficient extraction of observables from single-shot images is thus crucial. Here, we demonstrate how artificial neural networks can optimize this extraction. In contrast to standard averaging approaches, machine learning allows both one- and two-particle densities to be accurately obtained from a drastically reduced number of single-shot images. Quantum fluctuations and correlations are directly harnessed to obtain physical observables for bosons in a tilted double-well potential at an unprecedented accuracy. Strikingly, machine learning also enables a reliable extraction of momentum-space observables from real-space single-shot images and vice versa. This obviates the need for a reconfiguration of the experimental setup between in-situ and time-of-flight imaging, thus potentially granting an outstanding reduction in resources.