Quantifying moisture and roughness with Support Vector Machines improves spectroscopic soil organic carbon prediction
暂无分享,去创建一个
Lutz Plümer | Jan Behmann | Christoph Römer | Stefan Pätzold | L. Plümer | J. Behmann | A. Rodionov | G. Welp | Christoph Römer | S. Pätzold | Gerhard Welp | Andrei Rodionov
[1] L. Plümer,et al. Robust fitting of fluorescence spectra for pre-symptomatic wheat leaf rust detection with Support Vector Machines , 2011 .
[2] Bo Stenberg,et al. Diffuse Reflectance Spectroscopy for High-Resolution Soil Sensing , 2010 .
[3] A. Gholizadeh,et al. Visible, Near-Infrared, and Mid-Infrared Spectroscopy Applications for Soil Assessment with Emphasis on Soil Organic Matter Content and Quality: State-of-the-Art and Key Issues , 2013, Applied spectroscopy.
[4] B. Wesemael,et al. Prediction of soil organic carbon for different levels of soil moisture using Vis-NIR spectroscopy , 2013 .
[5] Isabelle Guyon,et al. An Introduction to Variable and Feature Selection , 2003, J. Mach. Learn. Res..
[6] Philippe C. Baveye,et al. Accounting for surface roughness effects in the near-infrared reflectance sensing of soils , 2009 .
[7] W. Amelung,et al. Sensing of Soil Organic Carbon Using Visible and Near‐Infrared Spectroscopy at Variable Moisture and Surface Roughness , 2014 .