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基于图像处理技术的地基云图云量的识别 被引量:4
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作者 杨健 沈彦燕 宋志刚 《气象水文海洋仪器》 2009年第3期42-45,共4页
本文对云量的自动识别做了探索性研究,提出了两种方案。方案一采用直方图理论直接计算识别;方案二先对图像进行阈值分割再计算识别。实验结果表明,两种方法都具有较好的效果。
关键词 图像处理 直方图 云量识别
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Daytime precipitation identification scheme based on multiple cloud parameters retrieved from visible and infrared measurements
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作者 LIU XianTong LIU Qi +1 位作者 FU YunFei LI Rui 《Science China Earth Sciences》 SCIE EI CAS 2014年第9期2112-2124,共13页
Visible and infrared(VIR) measurements and the retrieved cloud parameters are commonly used in precipitation identification algorithms, since the VIR observations from satellites, especially geostationary satellites, ... Visible and infrared(VIR) measurements and the retrieved cloud parameters are commonly used in precipitation identification algorithms, since the VIR observations from satellites, especially geostationary satellites, have high spatial and temporal resolutions. Combined measurements from visible/infrared scanner(VIRS) and precipitation radar(PR) aboard the Tropical Rainfall Measuring Mission(TRMM) satellite are analyzed, and three cloud parameters, i.e., cloud optical thickness(COT), effective radius(Re), and brightness temperature of VIRS channel 4(BT4), are particularly considered to characterize the cloud status. By associating the information from VIRS-derived cloud parameters with those from precipitation detected by PR, we propose a new method for discriminating precipitation in daytime called Precipitation Identification Scheme from Cloud Parameters information(PISCP). It is essentially a lookup table(LUT) approach that is deduced from the optimal equitable threat score(ETS) statistics within 3-dimensional space of the chosen cloud parameters. South and East China is selected as a typical area representing land surface, and the East China Sea and Yellow Sea is selected as typical oceanic area to assess the performance of the new scheme. It is proved that PISCP performs well in discriminating precipitation over both land and oceanic areas. Especially, over ocean, precipitating clouds(PCs) and non-precipitating clouds(N-PCs) are well distinguished by PISCP, with the probability of detection(POD) near 0.80, the probability of false detection(POFD) about 0.07, and the ETS higher than 0.43. The overall spatial distribution of PCs fraction estimated by PISCP is consistent with that by PR, implying that the precipitation data produced by PISCP have great potentials in relevant applications where radar data are unavailable. 展开更多
关键词 precipitation identification cloud parameters Tropical Rainfall Measuring Mission(TRMM)
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