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首页> 外文期刊>Geoderma: An International Journal of Soil Science >A comparison of sensor resolution and calibration strategies for soil texture estimation from hyperspectral remote sensing.
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A comparison of sensor resolution and calibration strategies for soil texture estimation from hyperspectral remote sensing.

机译:从高光谱遥感估算土壤质地的传感器分辨率和校准策略的比较。

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Imaging spectroscopy of bare soils has been shown to have considerable potential for the estimation of properties such as soil texture. However, in order to be able to fully exploit data from forthcoming hyperspectral satellites, information on several issues related to sensor spatial and spectral resolution and range, as well as on calibration and validation issues, is still required. In the present study, images acquired over bare soil in Central Italy by airborne MIVIS (430-1270 nm; spatial resolution: 4.8 m) and space-borne CHRIS-PROBA (415-1050 nm; spatial resolution: 17 m), were used to explore methods for the quantitative estimation of soil texture. Extensive soil sampling was carried out for the determination of soil particle size fractions. Soil texture was related to the spectral signature of corresponding CHRIS or MIVIS pixels. The spectral behavior of the soil samples was also examined in the laboratory, by using a spectroradiometer in the 400-2500 nm range. Spectra were used to calibrate prediction models for the estimation of clay, silt and sand, through partial least-square regression (PLSR). The impact of several factors on the accuracy of estimation of soil texture was studied, such as spectral range and resolution, the effect of varying soil moisture and the geolocation error. The modality of setting up the calibration and validation data sets was also investigated, by employing either randomly selected or spatially separated datasets. The validity of the models was assessed from several statistics, such as bias, root mean square error of prediction (RMSEP) and ratio of performance to deviation (RPD). Results from laboratory data show the importance of SWIR bands to estimate clay, silt and sand fractions. The tests with remote sensing data show a sufficient accuracy of prediction (RPD >1.4) for clay and sand using both MIVIS and CHRIS-PROBA data, but results vary in response to the modality of setting up the calibration and validation sets. Results were found to be sensitive to the difference in support between point and pixel data and to the geometric registration error, especially for MIVIS data. When using a 3x3 window instead of a single pixel, RPD values as high as 1.85 for MIVIS and 1.75 for CHRIS were found. Despite the lack of SWIR bands and a lower spatial resolution, CHRIS did show a comparable potential to MIVIS in terms of accuracy and of prediction ability. This was probably a consequence of the conditions in which the images were acquired, in which the pattern of soil moisture in the field might have played a role in the discrimination of soil texture.Digital Object Identifier http://dx.doi.org/10.1016/j.geoderma.2012.12.016
机译:裸露的土壤的光谱学光谱已经显示出在评估诸如土壤质地等特性方面的巨大潜力。但是,为了能够充分利用即将来临的高光谱卫星的数据,仍然需要有关与传感器空间和光谱分辨率和范围有关的几个问题以及校准和验证问题的信息。在本研究中,使用了意大利中部通过机载MIVIS(430-1270 nm;空间分辨率:4.8 m)和星载CHRIS-PROBA(415-1050 nm;空间分辨率:17 m)在裸土上获得的图像探索定量评估土壤质地的方法。进行了广泛的土壤采样以测定土壤粒径分数。土壤质地与相应的CHRIS或MIVIS像素的光谱特征有关。还使用400-2500 nm范围的分光辐射计在实验室中检查了土壤样品的光谱行为。通过部分最小二乘回归(PLSR),使用光谱对用于估计粘土,粉砂和沙子的预测模型进行校准。研究了光谱范围和分辨率,土壤水分变化的影响和地理位置误差等因素对土壤质地估计准确性的影响。通过采用随机选择的或空间分隔的数据集,还研究了设置校准和验证数据集的方式。该模型的有效性是根据几种统计数据进行评估的,例如偏差,预测的均方根误差(RMSEP)和性能与偏差之比(RPD)。实验室数据的结果表明,SWIR谱带对于估算粘土,粉砂和沙含量的重要性。使用遥感数据进行的测试表明,使用MIVIS和CHRIS-PROBA数据对粘土和沙子的预测具有足够的准确性(RPD> 1.4),但是结果会因设置校准和验证集的方式而异。发现结果对点和像素数据之间的支持差异以及几何配准误差(特别是对于MIVIS数据)敏感。当使用3x3窗口而不是单个像素时,发现MIVIS的RPD值高达1.85,CHRIS的RPD值高达1.75。尽管缺少SWIR波段和较低的空间分辨率,但CHRIS在准确性和预测能力方面确实显示了与MIVIS相当的潜力。这可能是由于获取了图像的条件所致,在这种条件下,田间土壤水分的模式可能在土壤质地的判别中起作用。Digital Object Identifier http://dx.doi.org/ 10.1016 / j.geoderma.2012.12.016

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