Aboutalebi Mahyar, Torres-Rua Alfonso F, McKee Mac, Nieto Hector, Kustas William, Coopmans Calvin
Utah Water Research Laboratory, Department of Civil and Environmental Engineering, Utah State University, 8200 Old Main Hill, Logan, UT, USA.
COMPLUTIG, Complutum Tecnologas de la Informacin Geogrfica.S.L, Madrid, Spain.
Proc SPIE Int Soc Opt Eng. 2019;11008. doi: 10.1117/12.2519685. Epub 2019 May 14.
Tests of the most recent version of the two-source energy balance model have demonstrated that canopy and soil temperatures can be retrieved from high-resolution thermal imagery captured by an unmanned aerial vehicle (UAV). This work has assumed a linear relationship between vegetation indices (VIs) and radiometric temperature in a square grid (i.e., 3.6 m × 3.6 m) that is coarser than the resolution of the imagery acquired by the UAV. In this method, with visible, near infrared (VNIR), and thermal bands available at the same high-resolution, a linear fit can be obtained over the pixels located in a grid, where the x-axis is a vegetation index (VI) and the y-axis is radiometric temperature. Next, with an accurate VI threshold that separates soil and vegetation pixels from one another, the corresponding soil and vegetation temperatures can be extracted from the linear equation. Although this method is simpler than other approaches, such as TSEB with Priestly-Taylor (TSEB-PT), it could be sensitive to VIs and the parameters that affect VIs, such as shadows. Recent studies have revealed that, on average, the values of VIs, such as normalized difference vegetation index (NDVI) and leaf area index (LAI), that are located in sunlit areas are greater than those in shaded areas. This means that involving or compensating for shadows will affect the linear relationship parameters (slope and bias) between radiometric temperature and VI, as well as thresholds that separate soil and vegetation pixels. This study evaluates the impact of shadows on the retrieval of canopy and soil temperature data from four UAV images before and after applying shadow compensation techniques. The retrieved temperatures, using the TSEB-2T approach, both before and after shadow correction, are compared to the average temperature values for both soil and canopy in each grid. The imagery was acquired by the Utah State University AggieAir UAV system over a commercial vineyard located in California as part of the USDA Agricultural Research Service Grape Remote sensing Atmospheric Profile and Evapotranspiration Experiment (GRAPEX) Program during 2014 to 2016. The results of this study show when it is necessary to employ shadow compensation methods to retrieve vegetation and soil temperature directly.
对最新版本的双源能量平衡模型进行的测试表明,可以从无人机(UAV)拍摄的高分辨率热成像中获取冠层温度和土壤温度。这项工作假设植被指数(VI)与正方形网格(即3.6米×3.6米)中的辐射温度之间存在线性关系,该网格比无人机获取的图像分辨率要粗。在这种方法中,由于可见光、近红外(VNIR)和热波段具有相同的高分辨率,因此可以在位于一个网格中的像素上获得线性拟合,其中x轴是植被指数(VI),y轴是辐射温度。接下来,利用一个准确的VI阈值将土壤像素和植被像素彼此区分开,就可以从线性方程中提取相应的土壤温度和植被温度。尽管这种方法比其他方法(如带有普里斯特利 - 泰勒的双源能量平衡模型(TSEB - PT))更简单,但它可能对植被指数以及影响植被指数的参数(如阴影)敏感。最近的研究表明,平均而言,位于阳光照射区域的植被指数值,如归一化差异植被指数(NDVI)和叶面积指数(LAI),大于阴影区域的值。这意味着考虑或补偿阴影会影响辐射温度与植被指数之间的线性关系参数(斜率和偏差),以及区分土壤像素和植被像素的阈值。本研究评估了阴影对在应用阴影补偿技术前后从四张无人机图像中检索冠层和土壤温度数据的影响。使用TSEB - 2T方法在阴影校正前后检索到的温度,与每个网格中土壤和冠层的平均温度值进行比较。这些图像是由犹他州立大学的AggieAir无人机系统在2014年至2016年期间,作为美国农业部农业研究服务局葡萄遥感大气剖面和蒸散实验(GRAPEX)项目的一部分,在加利福尼亚州的一个商业葡萄园上空获取的。这项研究的结果表明了何时有必要采用阴影补偿方法来直接检索植被和土壤温度。