Predicting Spatial Variations in Soil Nutrients with Hyperspectral Remote Sensing at Regional Scale
暂无分享,去创建一个
Bo Li | Xin Zhao | Yue-Ming Hu | Ying-Qiang Song | Hui-Yue Su | Xue-Sen Cui | Ying-Qiang Song | Xue-Sen Cui | Yueming Hu | Hui-dong Su | Bo Li | Xin Zhao
[1] A. Walkley,et al. AN EXAMINATION OF THE DEGTJAREFF METHOD FOR DETERMINING SOIL ORGANIC MATTER, AND A PROPOSED MODIFICATION OF THE CHROMIC ACID TITRATION METHOD , 1934 .
[2] Gerard B. M. Heuvelink,et al. About regression-kriging: From equations to case studies , 2007, Comput. Geosci..
[3] William Stafford Noble,et al. Support vector machine , 2013 .
[4] A. Bouwman,et al. Human alteration of the global nitrogen and phosphorus soil balances for the period 1970–2050 , 2009 .
[5] P. Miller,et al. Validation requirements for diffuse reflectance soil characterization models with a case study of VNIR soil C prediction in Montana , 2005 .
[6] Christophe David,et al. Nutrient recycling in organic farming is related to diversity in farm types at the local level , 2015 .
[7] Lin Ma,et al. Phosphorus in China's Intensive Vegetable Production Systems: Overfertilization, Soil Enrichment, and Environmental Implications. , 2013, Journal of environmental quality.
[8] Xiang Yu,et al. Evaluation of MLSR and PLSR for estimating soil element contents using visible/near-infrared spectroscopy in apple orchards on the Jiaodong peninsula , 2016 .
[9] Nai-Yang Deng,et al. Support Vector Machines: Optimization Based Theory, Algorithms, and Extensions , 2012 .
[10] A. McBratney,et al. Further results on prediction of soil properties from terrain attributes: heterotopic cokriging and regression-kriging , 1995 .
[11] Meiling Liu,et al. Integrating spectral indices with environmental parameters for estimating heavy metal concentrations in rice using a dynamic fuzzy neural-network model , 2011, Comput. Geosci..
[12] L. Wilding,et al. Spatial variability: its documentation, accommodation and implication to soil surveys , 1985 .
[13] Hossein Asadi,et al. Spatial variability of soil organic matter using remote sensing data , 2016 .
[14] Çagdas Hakan Aladag,et al. Estimation of pressuremeter modulus and limit pressure of clayey soils by various artificial neural network models , 2012, Neural Computing and Applications.
[15] Ian J. Yule,et al. Mapping of macro and micro nutrients of mixed pastures using airborne AisaFENIX hyperspectral imagery , 2016 .
[16] Martial Bernoux,et al. Mapping organic carbon stocks in eucalyptus plantations of the central highlands of Madagascar: A multiple regression approach , 2011 .
[17] Austin M. Jensen,et al. Assessment of Surface Soil Moisture Using High-Resolution Multi-Spectral Imagery and Artificial Neural Networks , 2015, Remote. Sens..
[18] Philippe Lagacherie,et al. Continuum removal versus PLSR method for clay and calcium carbonate content estimation from laboratory and airborne hyperspectral measurements , 2008 .
[19] Alex B. McBratney,et al. A comparison of prediction methods for the creation of field-extent soil property maps , 2001 .
[20] Gabor Kereszturi,et al. Integrating Airborne Hyperspectral, Topographic, and Soil Data for Estimating Pasture Quality Using Recursive Feature Elimination with Random Forest Regression , 2018, Remote. Sens..
[21] N. Holden,et al. Determination of Soil Organic Matter and Carbon Fractions in Forest Top Soils using Spectral Data Acquired from Visible–Near Infrared Hyperspectral Images , 2012 .
[22] Shi Zhou,et al. In Situ Measurement of Some Soil Properties in Paddy Soil Using Visible and Near-Infrared Spectroscopy , 2014, PloS one.
[23] Qing-Kai Sheng,et al. Prediction of soil organic matter using artificial neural network and topographic indicators in hilly areas , 2013, Nutrient Cycling in Agroecosystems.
[24] Liangpei Zhang,et al. Adaptive Spatial Regularization Sparse Unmixing Strategy Based on Joint MAP for Hyperspectral Remote Sensing Imagery , 2016, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.
[25] Jiabao Zhang,et al. Determination of soil properties using Fourier transform mid-infrared photoacoustic spectroscopy , 2009 .
[26] H. Ramon,et al. Comparison among principal component, partial least squares and back propagation neural network analyses for accuracy of measurement of selected soil properties with visible and near infrared spectroscopy , 2010 .
[27] M. Cho,et al. Non-linear partial least square regression increases the estimation accuracy of grass nitrogen and phosphorus using in situ hyperspectral and environmental data , 2013 .
[28] Tarin Paz-Kagan,et al. Evaluating calibration methods for predicting soil available nutrients using hyperspectral VNIR data , 2018 .
[29] Michael Vohland,et al. Use of A Portable Camera for Proximal Soil Sensing with Hyperspectral Image Data , 2015, Remote. Sens..
[30] M. Zasada,et al. Applying geostatistics for investigations of forest ecosystems using remote sensing imagery , 2005 .
[31] Lutgarde M. C. Buydens,et al. Possibilities of visible–near-infrared spectroscopy for the assessment of soil contamination in river floodplains , 2001 .
[32] Gabriel S. Amable,et al. A Comparative Assessment of the Influences of Human Impacts on Soil Cd Concentrations Based on Stepwise Linear Regression, Classification and Regression Tree, and Random Forest Models , 2016, PloS one.
[33] J. Mohammadi,et al. Spatial Estimation of Saturated Hydraulic Conductivity from Terrain Attributes Using Regression, Kriging, and Artificial Neural Networks , 2011 .
[34] Balwant Singh,et al. Ultra-violet, visible, near-infrared, and mid-infrared diffuse reflectance spectroscopic techniques to predict several soil properties , 2005 .
[35] I. Burud,et al. Qualitative and quantitative mapping of biochar in a soil profile using hyperspectral imaging , 2016 .
[36] A-Xing Zhu,et al. Construction of Membership Functions for Soil Mapping using the Partial Dependence of Soil on Environmental Covariates Calculated by Random Forest , 2017 .
[37] R. V. Rossel,et al. Visible, near infrared, mid infrared or combined diffuse reflectance spectroscopy for simultaneous assessment of various soil properties , 2006 .
[38] G. Tóth,et al. Maps of heavy metals in the soils of the European Union and proposed priority areas for detailed assessment. , 2016, The Science of the total environment.
[39] Chih-Jen Lin,et al. LIBSVM: A library for support vector machines , 2011, TIST.
[40] Marko Wagner,et al. Geostatistics For Environmental Scientists , 2016 .
[41] Vladimir N. Vapnik,et al. The Nature of Statistical Learning Theory , 2000, Statistics for Engineering and Information Science.
[42] Vladimir Vapnik,et al. Statistical learning theory , 1998 .
[43] Samia Boukir,et al. Relevance of airborne lidar and multispectral image data for urban scene classification using Random Forests , 2011 .
[44] Erik Karltun,et al. Soil nutrient build-up, input interaction effects and plot level N and P balances under long-term addition of compost and NP fertilizer , 2016 .
[45] A. Konopka,et al. FIELD-SCALE VARIABILITY OF SOIL PROPERTIES IN CENTRAL IOWA SOILS , 1994 .
[46] Bing Li,et al. Spatial prediction of soil nutrient in a hilly area using artificial neural network model combined with kriging , 2016 .
[47] Yoel Shkolnisky,et al. Change detection of soils under small-scale laboratory conditions using imaging spectroscopy sensors , 2014 .
[48] Zhijing Yang,et al. Linear vs. Nonlinear Extreme Learning Machine for Spectral-Spatial Classification of Hyperspectral Images , 2017, Sensors.
[49] M. McKee,et al. SOIL MOISTURE PREDICTION USING SUPPORT VECTOR MACHINES 1 , 2006 .
[50] R. Pullanagari,et al. Quantification of dead vegetation fraction in mixed pastures using AisaFENIX imaging spectroscopy data , 2017, Int. J. Appl. Earth Obs. Geoinformation.
[51] Mohamad Sakizadeh,et al. Support vector machine and artificial neural network to model soil pollution: a case study in Semnan Province, Iran , 2017, Neural Computing and Applications.
[52] Qing Li,et al. Hyperspectral Imaging Analysis for the Classification of Soil Types and the Determination of Soil Total Nitrogen , 2017, Sensors.
[53] Wei Wu,et al. A comparison of support vector machines, artificial neural network and classification tree for identifying soil texture classes in southwest China , 2018, Comput. Electron. Agric..
[54] Bernd Huwe,et al. Spatial soil nutrients prediction using three supervised learning methods for assessment of land potentials in complex terrain , 2017 .
[55] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[56] Jianli Ding,et al. Estimation of soil salt content (SSC) in the Ebinur Lake Wetland National Nature Reserve (ELWNNR), Northwest China, based on a Bootstrap-BP neural network model and optimal spectral indices. , 2018, The Science of the total environment.
[57] E. Cowling,et al. The Nitrogen Cascade , 2003 .
[58] Chenghu Zhou,et al. Differentiation of soil conditions over low relief areas using feedback dynamic patterns. , 2010 .