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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Thermal unmixing based downscaling for fine resolution diurnal land surface temperature analysis
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Thermal unmixing based downscaling for fine resolution diurnal land surface temperature analysis

机译:基于热分解的降尺度,用于精细分辨率的昼夜地表温度分析

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Due to the limitation in the availability of airborne imagery data that are high in both spatial and temporal resolution, land surface temperature (LST) dense in both space and time can only be obtained through downscaling of frequently acquired LST with coarse resolution. Many conventional downscaling techniques are only feasible in an ideal situation, where land surface factors as LST predictors are continuously available for downscaling the LST. These techniques are also applied only at large scales ignoring sub-regional variations. Based upon unmixing based approaches, this study presents an LST downscaling workflow, where only the coarse resolution of 1 km LST image at the prediction time is required. The conceptual backbone of the study is assuming that the LST patterns are governed by thermal behaviors of a fixed set of temperature sensitive land surface components. In operation, the study focuses on central Netherlands covering an area of 90 x 90 km. The MODIS and Landsat imagery acquired simultaneously are used as a coarse-fine resolution pair to derive downscaling mechanism which is then applied to coarse imagery at a time with missing fine resolution imagery. First, an optimal number of thermal components are extracted at fine resolution through the application of the non-negative matrix factorization (NMF). These components are assumed to possess unique temperature change patterns caused by combined effects of land cover change, radiance change, or both. Given the LST change and thermal components at coarse resolution, the LST change load of each component can then be obtained at the coarse resolution by solving a system of linear equations encoding thermal component-LST relationship. Such LST change load of thermal components is further unmixed to fine resolution and linearly weighted by the component distribution at fine resolution to obtain the fine resolution LST change. During the process, the coarse LST data is used directly without any resampling practice as shown in previous studies. Thus the technique is less time consuming even with a large downscaling factor of 30. The downscaled fine resolution LST represents an R-squared of over 0.7 outperforming classic downscaling techniques. The downscaled LST differentiates temperature over major land types and captures both seasonal and diurnal LST dynamics.
机译:由于空间和时间分辨率都很高的机载图像数据的可用性受到限制,因此只能通过按比例缩小具有粗分辨率的频繁获取的LST的比例,才能获得在空间和时间上都密集的地表温度(LST)。许多常规的降尺度技术仅在理想情况下才可行,在理想情况下,陆面因素作为LST预测因子可连续用于LST降尺度。这些技术也仅在大规模应用时忽略了子区域的变化。基于基于混合的方法,本研究提出了一种LST缩小工作流程,其中仅需要在预测时1 km LST图像的粗分辨率。该研究的概念主干假设LST模式受一组固定的温度敏感陆表成分的热行为支配。在运行中,该研究的重点是荷兰中部,面积为90 x 90 km。同时获取的MODIS和Landsat图像用作粗高分辨率分辨率对,以得出缩小比例的机制,然后将该机制应用于缺少精细分辨率图像的一次粗略图像。首先,通过应用非负矩阵分解(NMF)以最佳分辨率提取最佳数量的热分量。假定这些组件具有独特的温度变化模式,这些模式是由土地覆盖变化,辐射率变化或两者的综合作用引起的。给定LST变化和热成分处于较粗的分辨率,然后可以通过求解编码热成分-LST关系的线性方程组,以较粗分辨率获得每个成分的LST变化负载。热组件的这种LST变化负载进一步不混合到精细分辨率,并通过在精细分辨率下的组件分布进行线性加权以获得精细分辨率LST变化。在此过程中,粗略的LST数据可直接使用,而无需任何先前的研究中所示的重新采样实践。因此,即使缩小比例因子为30,该技术的耗时也更少。缩小比例的精细分辨率LST的R平方超过传统的缩小比例技术,超过0.7。缩减的LST可以区分主要土地类型的温度,并可以捕获季节性和昼夜LST动态。

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