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Bayesian-based subpixel brightness temperature estimation from multichannel infrared GOES radiometer data

机译:基于多通道红外GOES辐射计数据的基于贝叶斯的亚像素亮度温度估计

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摘要

In this paper, a new image reconstruction scheme is devised for estimating a high-resolution temperature map of the top of the Earth's atmosphere using the Geostationary Operational Environmental Satellite (GOES) imager infrared channels 4 and 5. By simultaneously interpolating the image while estimating temperature, the proposed algorithm achieves a more accurate estimate of the subpixel temperatures than could be obtained by performing these operations independently of one another. The proposed algorithm differs from other Bayesian-based image interpolation schemes in that it estimates brightness temperature as opposed to image intensity and incorporates a detailed optical model of the GOES multichannel imaging system. In order to test the effectiveness of the proposed technique, high-resolution estimates of cloudtop temperatures using GOES channels 4 and 5 are compared to temperature estimates obtained from the Advanced Very High Resolution Radiometer (AVHRR). This test is achieved by examining sets of infrared data taken simultaneously by the GOES and AVHRR systems over the same geographic area. The AVHRR system collects longwave infrared data with a spatial resolution of 1 km, which is higher than the 4-km spatial resolution the GOES system achieves. In some cases, The estimated temperature differences between these systems are as high as 11.5 K. It is shown in this paper that the proposed algorithm improves the consistency between the cloudtop temperatures estimated with the GOES and AVHRR systems by allowing the GOES system to achieve substantially higher spatial resolution.
机译:在本文中,设计了一种新的图像重建方案,用于使用对地静止作战环境卫星(GOES)成像仪红外通道4和5估算地球大气层的高分辨率温度图。通过在估算温度的同时插值图像与通过相互独立执行这些操作所获得的结果相比,该算法可实现对子像素温度更准确的估算。所提出的算法与其他基于贝叶斯的图像插值方案的不同之处在于,它估计与图像强度相反的亮度温度,并结合了GOES多通道成像系统的详细光学模型。为了测试所提出技术的有效性,将使用GOES通道4和5的云顶温度的高分辨率估算值与从超高分辨率高分辨率辐射计(AVHRR)获得的温度估算值进行了比较。通过检查由GOES和AVHRR系统在同一地理区域上同时采集的红外数据集来完成此测试。 AVHRR系统以1 km的空间分辨率收集长波红外数据,该分辨率高于GOES系统实现的4 km的空间分辨率。在某些情况下,这些系统之间的估计温差高达11.5K。本文表明,所提出的算法通过使GOES系统获得显着提高,从而提高了用GOES和AVHRR系统估计的云顶温度之间的一致性。更高的空间分辨率。

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