论文标题
通过深度学习增强了快速相关的光子成像
Fast Correlated-Photon Imaging Enhanced by Deep Learning
论文作者
论文摘要
相关的光子对具有强大的量子相关性,已被利用,将量子优势带入从生物成像到范围发现的各个领域。这种固有的非经典特性支持提取更有效的信号,即使在低通量级别中,随着光源降低到单光子水平,射击噪声在较低的级别中也会占主导地位。通过数值重建算法进行优化是可能的,但需要数千个光子 - 帕斯斯帧,因此无法实时实时。在这里,我们提出了通过深度学习增强的实验快速相关 - 光子成像,展示了一种智能计算策略,以发现大数据中更深的结构。发现卷积神经网络能够有效地解决与强射击噪声和背景噪声(电子噪声,散射光)相关的图像反问题。我们的结果填补了成像速度和图像质量之间不兼容的关键差距,这是通过将低光成像技术推向实时和单光子水平的制度,为现实生活中的深度倾斜增强的量子成像开辟了一条途径。
Correlated photon pairs, carrying strong quantum correlations, have been harnessed to bring quantum advantages to various fields from biological imaging to range finding. Such inherent non-classical properties support extracting more valid signals to build photon-limited images even in low flux-level, where the shot noise becomes dominant as light source decreases to single-photon level. Optimization by numerical reconstruction algorithms is possible but require thousands of photon-sparse frames, thus unavailable in real time. Here, we present an experimental fast correlated-photon imaging enhanced by deep learning, showing an intelligent computational strategy to discover deeper structure in big data. Convolutional neural network is found being able to efficiently solve image inverse problems associated with strong shot noise and background noise (electronic noise, scattered light). Our results fill the key gap in incompatibility between imaging speed and image quality by pushing low-light imaging technique to the regime of real-time and single-photon level, opening up an avenue to deep leaning-enhanced quantum imaging for real-life applications.