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Classification of Granite Soils and Prediction of Soil Water Content Using Hyperspectral Visible and Near-Infrared Imaging

机译:利用高光谱可见光和近红外成像对花岗岩土壤进行分类并预测土壤含水量

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摘要

Soil water content is one of the most important physical indicators of landslide hazards. Therefore, quickly and non-destructively classifying soils and determining or predicting water content are essential tasks for the detection of landslide hazards. We investigated hyperspectral information in the visible and near-infrared regions (400–1000 nm) of 162 granite soil samples collected from Seoul (Republic of Korea). First, effective wavelengths were extracted from pre-processed spectral data using the successive projection algorithm to develop a classification model. A gray-level co-occurrence matrix was employed to extract textural variables, and a support vector machine was used to establish calibration models and the prediction model. The results show that an optimal correct classification rate of 89.8% could be achieved by combining data sets of effective wavelengths and texture features for modeling. Using the developed classification model, an artificial neural network (ANN) model for the prediction of soil water content was constructed. The input parameter was composed of Munsell soil color, area of reflectance (near-infrared), and dry unit weight. The accuracy in water content prediction of the developed ANN model was verified by a coefficient of determination and mean absolute percentage error of 0.91 and 10.1%, respectively.
机译:土壤水分是滑坡灾害最重要的物理指标之一。因此,对土壤进行快速无损分类以及确定或预测含水量是检测滑坡灾害的基本任务。我们调查了从首尔(大韩民国)收集的162个花岗岩土壤样品的可见光和近红外区(400-1000 nm)中的高光谱信息。首先,使用连续投影算法从预处理的光谱数据中提取有效波长,以建立分类模型。使用灰度共现矩阵提取纹理变量,并使用支持向量机建立校准模型和预测模型。结果表明,通过结合有效波长和纹理特征的数据集进行建模,可以达到89.8%的最佳正确分类率。使用开发的分类模型,构建了用于预测土壤含水量的人工神经网络(ANN)模型。输入参数由孟塞尔的土壤颜色,反射率(近红外)和干燥单位重量组成。通过确定系数和平均绝对百分比误差分别为0.91和10.1%,验证了开发的ANN模型的含水量预测准确性。

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