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A Practical Split-Window Algorithm for Estimating Land Surface Temperature from Landsat 8 Data

机译:从Landsat 8数据估算地表温度的实用分窗算法

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This paper developed a practical split-window (SW) algorithm to estimate land surface temperature (LST) from Thermal Infrared Sensor (TIRS) aboard Landsat 8. The coefficients of the SW algorithm were determined based on atmospheric water vapor sub-ranges, which were obtained through a modified split-window covariance–variance ratio method. The channel emissivities were acquired from newly released global land cover products at 30 m and from a fraction of the vegetation cover calculated from visible and near-infrared images aboard Landsat 8. Simulation results showed that the new algorithm can obtain LST with an accuracy of better than 1.0 K. The model consistency to the noise of the brightness temperature, emissivity and water vapor was conducted, which indicated the robustness of the new algorithm in LST retrieval. Furthermore, based on comparisons, the new algorithm performed better than the existing algorithms in retrieving LST from TIRS data. Finally, the SW algorithm was proven to be reliable through application in different regions. To further confirm the credibility of the SW algorithm, the LST will be validated in the future.
机译:本文开发了一种实用的分割窗口(SW)算法,以从Landsat 8上的热红外传感器(TIRS)估算地表温度(LST)。SW算法的系数是根据大气水蒸气子范围确定的,分别为通过改进的分割窗口协方差-方差比方法获得。通道发射率是从30 m处新发布的全球陆地覆盖产品中获取的,以及从Landsat 8上的可见和近红外图像中计算出的植被覆盖率的一部分中获得的。仿真结果表明,该新算法可以获得LST的精度更高小于1.0K。进行了模型对亮度温度,发射率和水蒸气噪声的一致性研究,表明该算法在LST检索中的鲁棒性。此外,基于比较,从TIRS数据中检索LST时,新算法的性能要优于现有算法。最后,通过在不同地区的应用,SW算法被证明是可靠的。为了进一步确认SW算法的可信度,将来会验证LST。

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