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Geometric accuracy assessment of coarse-resolution satellite datasets: a study based on AVHRR GAC data at the sub-pixel level

机译:粗辨率卫星数据集的几何精度评估:基于子像素级别的AVHRR GAC数据的研究

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AVHRR Global Area Coverage (GAC) data provide daily global coverage of the Earth, which are widely used for global environmental and climate studies. However, their geolocation accuracy has not been comprehensively evaluated due to the difficulty caused by onboard resampling and the resulting coarse resolution, which hampers their usefulness in various applications. In this study, a correlation-based patch matching method (CPMM) was proposed to characterize and quantify the geo-location accuracy at the sub-pixel level for satellite data with coarse resolution, such as the AVHRR GAC dataset. This method is neither limited to landmarks nor suffers from errors caused by false detection due to the effect of mixed pixels caused by a coarse spatial resolution, and it thus enables a more robust and comprehensive geometric assessment than existing approaches. Data of NOAA-17, MetOp-A and MetOp-B satellites were selected to test the geocoding accuracy. The three satellites predominately present west shifts in the across-track direction, with average values of ?1.69, ?1.9, ?2.56 km and standard deviations of 1.32, 1.1, 2.19 km for NOAA-17, MetOp-A, and MetOp-B, respectively. The large shifts and uncertainties are partly induced by the larger satellite zenith angles (SatZs) and partly due to the terrain effect, which is related to SatZ and becomes apparent in the case of large SatZs. It is thus suggested that GAC data with SatZs less than 40° should be preferred in applications. The along-track geolocation accuracy is clearly improved compared to the across-track direction, with average shifts of ?0.7, ?0.02 and 0.96 km and standard deviations of 1.01, 0.79 and 1.70 km for NOAA-17, MetOp-A and MetOp-B, respectively. The data can be accessed from https://doi.org/10.5676/DWD/ESA_Cloud_cci/AVHRR-AM/V002 (Stengel et al., 2017) and https://doi.org/10.5067/MODIS/MOD13A1.006 (Didan, 2015).
机译:AVHRR全球区域覆盖范围(GAC)数据提供地球的每日全球覆盖率,广泛用于全球环境和气候研究。然而,由于船上重采样和由此产生的粗糙分辨率难以困扰,它们的地理定位精度尚未全面评估它们在各种应用中的有用性。在本研究中,提出了一种基于相关的补丁匹配方法(CPMM)来表征和量化具有粗略分辨率的卫星数据的子像素电平的地理位置精度,例如AVHRR GAC数据集。由于由粗糙的空间分辨率引起的混合像素的效果,该方法既不限于诸如伪检测引起的错误,也不是由于由粗略空间分辨率引起的混合像素的效果而导致的错误。因此,它能够比现有方法更稳健地的几何评估。选择NOAA-17,MEDOP-A和METOP-B卫星的数据以测试地理编码精度。这三个卫星主要在跨轨道方向上呈现西班位,平均值?1.69,?1.9,?2.56公里和1.32,1.1,2.19公里的NOAA-17,Metop-A和Metop-B 2.19公里, 分别。大的偏移和不确定性部分地由较大的卫星天顶角(SATZS)诱导,部分原因是由于与萨特的地形效果有关,并且在大型萨特的情况下变得显而易见。因此,在应用中,应优选具有小于40°小于40°的GAC数据。与跨轨道方向相比,沿轨道的地理定位精度明显改善,平均换档?0.7,?0.02和0.96公里,为NOAA-17,MetoP-A和Metop的标准偏差和0.96公里和标准偏差。 b分别。可以从https://doi.org/10.5676/dwd/aesa_cloud_cci/avhrr-am/v002访问数据(Stengel等,2017)和https://doi.org/10.5067/modis/mod13a1.006(迪坦,2015)。

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