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Development of Image Processing Method to Detect Noise in Geostationary Imagery

机译:对地静止图像噪声检测图像处理方法的发展

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The Clouds and the Earth's Radiant Energy System (CERES) has incorporated imagery from 16 individual geostationary (GEO) satellites across five contiguous domains since March 2000. In order to derive broadband fluxes uniform across satellite platforms it is important to ensure a good quality of the input raw count data. GEO data obtained by older GOES imagers (such as MTSAT-1, Meteosat-5, Meteosat-7, GMS-5, and GOES-9) are known to frequently contain various types of noise caused by transmission errors, sync errors, stray light contamination, and others. This work presents an image processing methodology designed to detect most kinds of noise and corrupt data in all bands of raw imagery from modern and historic GEO satellites. The algorithm is based on a set of different approaches to detect abnormal image patterns, including inter-line and inter-pixel differences within a scanline, correlation between scanlines, analysis of spatial variance, and also a 2D Fourier analysis of the image spatial frequencies. In spite of computational complexity, the described method is highly optimized for performance to facilitate volume processing of multi-year data and runs in fully automated mode. Reliability of this noise detection technique has been assessed by human supervision for each GEO dataset obtained during selected time periods in 2005 and 2006. This assessment has demonstrated the overall detection accuracy of over 99.5% and the false alarm rate of under 0.3%. The described noise detection routine is currently used in volume processing of historical GEO imagery for subsequent production of global gridded data products and for cross-platform calibration.
机译:自2000年3月以来,“云与地球的辐射能系统(CERES)”已将来自16个单独的地球静止(GEO)卫星的图像合并到五个连续的域中。输入原始计数数据。已知由较旧的GOES成像器(例如MTSAT-1,Meteosat-5,Meteosat-7,GMS-5和GOES-9)获得的GEO数据经常包含各种类型的噪声,这些噪声是由传输错误,同步错误,杂散光引起的污染等。这项工作提出了一种图像处理方法,旨在检测来自现代和历史GEO卫星的原始图像所有波段中的大多数噪声和损坏的数据。该算法基于一组不同的方法来检测异常图像模式,包括扫描线内的线间和像素间差异,扫描线之间的相关性,空间方差分析以及图像空间频率的2D傅里叶分析。尽管计算复杂,但所描述的方法在性能上进行了高度优化,以促进对多年数据的批量处理,并以全自动模式运行。在2005年和2006年的选定时间段内,通过人工监督对每个GEO数据集进行了评估,该噪声检测技术的可靠性。该评估表明,总体检测准确度超过99.5%,错误警报率低于0.3%。所描述的噪声检测例程当前用于历史GEO图像的体积处理中,以用于后续生产全局栅格数据产品和跨平台校准。

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