分布式天空成像辐射测量和断层扫描

Amit Aides, Aviad Levis, Vadim Holodovsky, Y. Schechner, D. Althausen, Adi Vainiger
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引用次数: 18

摘要

大气的组成对我们的生态系统很重要。因此,有必要感知大气散射体的分布,如气溶胶和云滴。人们对在三维(3D)中恢复这些散射场越来越感兴趣。即便如此,目前的大气观测通常使用昂贵且无法扩展的设备。此外,目前的分析基于简化的一维模型检索部分信息(例如,云底高度,云顶水滴大小)。为了推进观测和检索,我们开发了一种新的计算成像方法来感知和分析大气,体积。我们的方法包括一个地面摄像头网络。我们将它与其他遥感设备一起部署,包括拉曼激光雷达和太阳光度计,这些设备为算法和地面真相提供初始化。相机网络是可扩展的,低成本的,并且能够在高空间和时间分辨率下进行3D观测。我们描述了如何校准系统,以提供光场的绝对辐射读数。因此,我们描述了如何使用层析成像恢复散射体的体积场。层析成像过程相对于现有技术进行了调整,可以在大规模域上运行,并且在散射场内处于原位。我们从经验上论证了利用地面数据进行云层析成像的可行性。
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Distributed Sky Imaging Radiometry and Tomography
The composition of the atmosphere is significant to our ecosystem. Accordingly, there is a need to sense distributions of atmospheric scatterers such as aerosols and cloud droplets. There is growing interest in recovering these scattering fields in three-dimensions (3D). Even so, current atmospheric observations usually use expensive and unscalable equipment. Moreover, current analysis retrieves partial information (e.g., cloud-base altitudes, water droplet size at cloud tops) based on simplified 1D models. To advance observations and retrievals, we develop a new computational imaging approach for sensing and analyzing the atmosphere, volumetrically. Our approach comprises a ground-based network of cameras. We deployed it in conjunction with additional remote sensing equipment, including a Raman lidar and a sunphotometer, which provide initialization for algorithms and ground truth. The camera network is scalable, low cost, and enables 3D observations in high spatial and temporal resolution. We describe how the system is calibrated to provide absolute radiometric readouts of the light field. Consequently, we describe how to recover the volumetric field of scatterers, using tomography. The tomography process is adapted relative to prior art, to run on large-scale domains and being in-situ within scatterer fields. We empirically demonstrate the feasibility of tomography of clouds, using ground-based data.
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