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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Sharpening Thermal Imageries: A Generalized Theoretical Framework From an Assimilation Perspective
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Sharpening Thermal Imageries: A Generalized Theoretical Framework From an Assimilation Perspective

机译:锐化热成像:从同化的角度出发的广义理论框架

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摘要

Land surface temperature (LST) plays an important role in many fields. However, thermal bands in prevailing sensors that are onboard satellites have limited spatial resolutions, which seriously impede their potential applications. Many approaches that aim to downscale thermal imageries to finer spatial resolution levels have been developed in recent years. This paper managed to construct a Generalized Theoretical Framework from an Assimilation Perspective for them with semiempirical regression and modulation integration techniques. Based on three hierarchical sharpening levels, which include digital number, radiance, and surface temperature, many of them can be brought into such a unified framework as derivatives. Two typical land cover patterns were chosen as case study areas to evaluate the capabilities of various kernels to represent the LST distribution. The results demonstrate that there are great discrepancies among those kernels. The single-band kernels are dependent on different land cover types, while the band-derivative kernels perform better in most circumstances when portraying the LST variations. In addition, the simulated imageries that were resampled by scaling up the original thermal bands with an aggregation technique were utilized to validate a localization approach of temperature vegetation dryness index (TVDI). The results indicate that the TVDI has satisfactory effects when depicting slight LST variations due to soil anomalies. More intercomparisons between the approach presented here and other different methods, including artificial neural network and Gram–Schmidt techniques, were made thoroughly, coupling with the Moderate Resolution Imaging Spectroradiometer and Advanced Spaceborne Thermal Emission Reflection Radiometer data. Consequently, the generalized framework opens up the foreground for sharpening thermal images with high efficiency over a solid theoretical foundation.
机译:地表温度(LST)在许多领域都扮演着重要角色。但是,卫星上占主导地位的传感器中的热带具有有限的空间分辨率,这严重阻碍了其潜在的应用。近年来,已经开发了许多旨在将热图像缩小到更精细的空间分辨率级别的方法。本文利用半经验回归和调制积分技术从同化角度为他们构建了一个广义理论框架。基于三个级别的锐化级别,包括数字数量,辐射度和表面温度,可以将其中的许多锐化级别引入派生类这样的统一框架中。选择了两种典型的土地覆盖模式作为案例研究区域,以评估各种内核代表LST分布的能力。结果表明,这些内核之间存在很大差异。单波段内核取决于不同的土地覆被类型,而在描述LST变化时,带导数内核在大多数情况下表现更好。此外,利用聚集技术按比例放大原始热带进行重新采样的模拟图像被用于验证温度植被干燥指数(TVDI)的定位方法。结果表明,TVDI在描述由于土壤异常引起的轻微LST变化时具有令人满意的效果。结合中等分辨率成像光谱仪和先进的星载热发射反射辐射仪数据,对本文介绍的方法与其他方法(包括人工神经网络和Gram–Schmidt技术)进行了更多的比对。因此,通用框架为在坚实的理论基础上以高效率锐化热图像打开了前景。

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