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Atmospheric motion vector retrieval using improved tracer selection algorithm

机译:利用改进的示踪剂选择算法检索大气运动矢量

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摘要

Tracer selection is the fundamental step in the retrieval of atmospheric motion vectors (AMVs). In this study, a new technique for tracer selection based on extracting the corner points in an infrared (IR) image of a geostationary satellite for the retrieval of AMVs is developed. Corner points are frequently used in computer vision to identify the important features of an image. These points are usually characterized by high gradient values of the image intensity in all directions and lie at the junctions of different brightness regions in the image. Corner points find application in computer vision for motion tracking, stereo vision, mosaics, etc., but this is the first time that the information from corners is used for tracer selection in AMV retrieval. In the present study, a commonly used Harris corner (HC) detection algorithm is followed to extract corners from the image intensity of an IR image. The tracers selected using the HC method are then passed on to the other steps of the retrieval algorithm, viz., tracking, height assignment, and quality control procedures for the retrieval of AMVs. For the initial development of the HC, Meteosat-7 IR images are used to derive AMVs for July and December 2010. The AMVs retrieved using HC are validated against collocated radiosonde observations, and the results are compared with the local anomaly (LA) method as reference. LA is used for tracer selection in operational AMV retrieval algorithm from the Indian geostationary satellite Kalpana-1. AMVs retrieved using HC have shown considerable improvement in the AMV accuracy over the AMVs derived using LA.
机译:示踪剂的选择是检索大气运动矢量(AMV)的基本步骤。在这项研究中,基于提取静止卫星的红外(IR)图像中的角点以提取AMV的跟踪器选择新技术被开发出来。角点通常用于计算机视觉中,以识别图像的重要特征。这些点通常以在所有方向上的图像强度的高梯度值为特征,并且位于图像中不同亮度区域的交界处。角点可用于运动跟踪,立体视觉,镶嵌等的计算机视觉中,但这是来自角的信息首次用于AMV检索中的示踪剂选择。在本研究中,遵循常用的哈里斯角(HC)检测算法从红外图像的图像强度中提取角。然后,将使用HC方法选择的示踪剂传递到检索​​算法的其他步骤,即用于检索AMV的跟踪,高度分配和质量控制程序。对于HC的初步开发,使用Meteosat-7红外图像得出2010年7月和2010年12月的AMV。针对并置的探空仪观测资料验证了使用HC检索到的AMV,并将结果与​​局部异常(LA)方法进行了比较,如下所示:参考。在印度对地静止卫星Kalpana-1的运营AMV检索算法中,LA被用于选择示踪剂。与使用LA派生的AMV相比,使用HC检索的AMV已显示出AMV准确性的显着提高。

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  • 来源
    《Theoretical and applied climatology》 |2015年第2期|299-312|共14页
  • 作者单位

    Atmospheric and Oceanic Sciences Group, Space Applications Centre, Indian Space Research Organization, Ahmedabad, Gujarat 380015, India;

    Atmospheric and Oceanic Sciences Group, Space Applications Centre, Indian Space Research Organization, Ahmedabad, Gujarat 380015, India;

    Atmospheric and Oceanic Sciences Group, Space Applications Centre, Indian Space Research Organization, Ahmedabad, Gujarat 380015, India;

    Atmospheric and Oceanic Sciences Group, Space Applications Centre, Indian Space Research Organization, Ahmedabad, Gujarat 380015, India;

    Atmospheric and Oceanic Sciences Group, Space Applications Centre, Indian Space Research Organization, Ahmedabad, Gujarat 380015, India;

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