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A comparison of different regression models for downscaling Landsat and MODIS land surface temperature images over heterogeneous landscape

机译:异质景观尺度下Landsat和MODIS地表温度图像降尺度的不同回归模型比较

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摘要

Remotely sensed high spatial resolution thermal images are required for various applications in natural resource management. At present, availability of high spatial resolution (<200 m) thermal images are limited. The temporal resolution of such images is also low. Whereas, coarser spatial resolution (~1000 m) thermal images with high revisiting capability (~1 day) are freely available. To bridge this gap, present study attempts to downscale coarser spatial resolution thermal image to finer spatial resolution using relationships between land surface temperature (LST) and vegetation indices over a heterogeneous landscape of India. Five regression based models namely (ⅰ) Disaggregation of Radiometric Temperature (DisTrad), (ⅱ) Temperature Sharpening (TsHARP), (ⅲ) TsHARP with local variant, (ⅳ) Least median square regression downscaling (LMS_(DS)) and (ⅴ) Pace regression downscaling (PR_(DS)) are applied to downscale LST of Landsat Thematic Mapper (TM) and Terra MODIS (Moderate Resolution Imaging Spectroradiometer) images. All the five models are first evaluated on Landsat image aggregated to 960 m resolution and downscaled to 480 m and 240 m resolution. The down-scale accuracy is achieved using LMS_(DS) and PR_(DS) models at 240 m resolution at 0.61 ℃ and 0.75 ℃ respectively. MODIS data down-scaled from 1000 m to 250 m spatial resolution results root mean square error (RMSE) of 1.43 ℃ and 1.62 ℃ for LMS_(DS) and PR_(DS) models, respectively. The LMS_(DS) model is less sensitive to outliers in heterogeneous landscape and provides higher accuracy when compared to other models. Downscaling model is found to be suitable for agricultural and vegetated landscapes up to a spatial resolution of 250 m but not applicable to water bodies, dry river bed sand sandy open areas.
机译:对于自然资源管理中的各种应用,需要遥感的高空间分辨率热图像。当前,高空间分辨率(<200 m)热图像的可用性受到限制。这样的图像的时间分辨率也很低。而免费提供具有较高重访能力(约1天)的较粗的空间分辨率(约1000 m)的热图像。为了弥合这一差距,目前的研究试图利用印度异质景观上的地表温度(LST)和植被指数之间的关系,将较粗糙的空间分辨率热图像缩小为更精细的空间分辨率。五个基于回归的模型,即(ⅰ)辐射温度分解(DisTrad),(ⅱ)温度锐化(TsHARP),(ⅲ)具有局部变量的TsHARP,(ⅳ)最小中方回归缩小(LMS_(DS))和(ⅴ )将Pace回归缩减(PR_(DS))应用于Landsat Thematic Mapper(TM)和Terra MODIS(中等分辨率成像光谱仪)图像的缩减LST。首先在Landsat影像上评估所有这五个模型,这些影像的总分辨率为960 m,然后缩小为480 m和240 m分辨率。使用LMS_(DS)和PR_(DS)模型分别在0.61℃和0.75℃的240 m分辨率下实现了降尺度精度。 MODIS数据从1000 m缩小到250 m空间分辨率,对于LMS_(DS)和PR_(DS)模型,均方根误差(RMSE)分别为1.43℃和1.62℃。与其他模型相比,LMS_(DS)模型对异构景观中的异常值较不敏感,并提供更高的准确性。发现缩小模型适用于空间分辨率达250 m的农业和植被景观,但不适用于水体,河床干燥,沙质的空旷地区。

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