Performance evaluation of remote sensing data with machine learning technique to determine soil color

Q3 Earth and Planetary Sciences
L. Parviz
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引用次数: 1

Abstract

The aim of the present research is the determination of soil color by spectral bands and indices obtained from MODIS images. For this purpose, soil samples were collected from East Azerbaijan Province (Iran) and their color and texture were investigated through Munsell color system and hydrometer method, respectively. Stepwise regression, principle component analysis and sensitivity function methods were employed to find the dominant indices and bands using artificial neural network (ANN) as one of the machine learning techniques. The improved indices as the model input had better performance, for example, the calculation of correlation coefficient between indices and hue showed 51.48% increase of correlation coefficient with comparison of the normalized difference vegetation index (NDVI) to modified soil adjustment vegetation index (MSAVI) and 54.54% correlation enhancement of soil adjustment vegetation index (SAVI) compared to MSAVI. Stepwise regression method along with error criteria decline may enhance the performance of soil color model. In comparison with multivariate regression, ANN model exhibited better performance (with a 12.61% mean absolute error [MAE] decline). Temporal variation of modified perpendicular drought index (MPDI) as well as band 31 could justify the Munsell soil color components variations specifically chroma and hue. MPDI and thermal bands could be employed as a precise indicator in soil color analysis. Thus, remote sensing data combined with machine learning technique can clarify the procedure potential for soil color determination.
利用机器学习技术对遥感数据进行土壤颜色测定的性能评价
本研究的目的是利用MODIS图像的光谱带和指数来确定土壤颜色。为此,采集了伊朗东阿塞拜疆省的土壤样品,分别用孟塞尔颜色系统和比重计法对其颜色和质地进行了研究。利用人工神经网络(ANN)作为机器学习技术之一,采用逐步回归、主成分分析和灵敏度函数方法寻找优势指标和频带。改进后的指数作为模型输入具有更好的性能,如指数与色相的相关系数计算结果表明,归一化植被指数(NDVI)与改进后的土壤调整植被指数(MSAVI)相比,相关系数提高了51.48%,土壤调整植被指数(SAVI)与MSAVI相比,相关系数提高了54.54%。随着误差准则的下降,逐步回归方法可以提高土壤颜色模型的性能。与多元回归模型相比,ANN模型表现出更好的性能(平均绝对误差[MAE]下降12.61%)。修正垂直干旱指数(MPDI)和波段31的时间变化可以证明孟塞尔土壤颜色成分的变化,特别是色度和色相。MPDI和热谱带可以作为土壤颜色分析的精确指标。因此,遥感数据与机器学习技术相结合可以阐明土壤颜色测定的程序潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Polish Journal of Soil Science
Polish Journal of Soil Science Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
1.00
自引率
0.00%
发文量
5
期刊介绍: The Journal focuses mainly on all issues of soil sciences, agricultural chemistry, soil technology and protection and soil environmental functions. Papers concerning various aspects of functioning of the environment (including geochemistry, geomophology, geoecology etc.) as well as new techniques of surveing, especially remote sensing, are also published.
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