SIFTing through satellite imagery with the Satellite Information Familiarization Tool

IF 0.8 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES
Jordan J. Gerth, R. Garcia, D. Hoese, S. Lindstrom, T. Schmit
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引用次数: 0

Abstract

The Satellite Information Familiarization Tool (SIFT) is an open-source, multi-platform graphical user interface designed to easily display spectral and temporal sequences of geostationary satellite imagery. The Advanced Baseline Imager (ABI) and Advanced Himawari Imager (AHI) on the “new generation” of geostationary satellites collect imagery with a spatial resolution four times greater than previously available. Combined with the increased number of spectral bands and more frequent imaging, the new series imagers collect approximately 60 times more data. Given the resulting large file sizes, the development of SIFT is a multiyear effort to make those satellite imagery data files accessible to the broad community of students, scientists, and operational meteorologists. To achieve the objective of releasing software that provides an intuitive user experience to complement optimum performance on consumer-grade computers, SIFT was built to leverage modern graphics processing units (GPUs) through existing open-source Python packages, and runs on the three major operating systems: Windows, Mac, and Linux. The United States National Weather Service funded the development of SIFT to help enhance the satellite meteorology acumen of their operational meteorologists. SIFT has basic image visualization capabilities and enables the fluid animation and interrogation of satellite images, creation of Red-Green-Blue (RGB) composites and algebraic combinations of multiple spectral bands, and comparison of imagery with numerical weather prediction output. Open for community development, SIFT users and features continue to grow. SIFT is freely available with short tutorials and a user guide online. The mandate for the software, its development, realized applications, and envisioned role in science and training are explained.
利用卫星信息熟悉工具通过卫星图像进行SIFTing
卫星信息熟悉工具(SIFT)是一个开源的多平台图形用户界面,旨在方便地显示地球同步卫星图像的光谱和时间序列。“新一代”地球静止卫星上的先进基线成像仪(ABI)和先进Himawari成像仪(AHI)收集的图像空间分辨率比以前高4倍。结合增加的光谱波段数量和更频繁的成像,新系列成像仪收集的数据大约是以前的60倍。考虑到产生的大文件大小,SIFT的开发是一个多年的努力,使这些卫星图像数据文件对学生、科学家和业务气象学家的广泛社区开放。为了实现发布软件的目标,提供直观的用户体验,以补充消费级计算机的最佳性能,SIFT通过现有的开源Python包来利用现代图形处理单元(gpu),并在三个主要操作系统上运行:Windows, Mac和Linux。美国国家气象局资助了SIFT的开发,以帮助提高其业务气象学家的卫星气象敏锐度。SIFT具有基本的图像可视化能力,能够对卫星图像进行流体动画和查询,创建红-绿-蓝(RGB)复合图像和多个光谱带的代数组合,并将图像与数值天气预报输出进行比较。开放社区发展,SIFT用户和功能不断增长。SIFT免费提供简短的教程和在线用户指南。解释了该软件的任务、开发、实现的应用以及在科学和培训中的预期作用。
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来源期刊
Journal of Operational Meteorology
Journal of Operational Meteorology METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
2.40
自引率
0.00%
发文量
4
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