Instance-based transfer learning for soil organic carbon estimation
Published 2022 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Instance-based transfer learning for soil organic carbon estimation
Authors
Keywords
-
Journal
Frontiers in Environmental Science
Volume 10, Issue -, Pages -
Publisher
Frontiers Media SA
Online
2022-09-21
DOI
10.3389/fenvs.2022.1003918
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Contemporary machine learning applications in agriculture: Quo Vadis?
- (2022) Atif Mahmood et al. CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE
- Pre-trained deep learning-based classification of jujube fruits according to their maturity level
- (2022) Atif Mahmood et al. NEURAL COMPUTING & APPLICATIONS
- Evaluation of Landsat 8 image pansharpening in estimating soil organic matter using multiple linear regression and artificial neural networks
- (2022) Abdelkrim Bouasria et al. Geo-Spatial Information Science
- Machine Learning in Agriculture: A Comprehensive Updated Review
- (2021) Lefteris Benos et al. SENSORS
- Predicting into unknown space? Estimating the area of applicability of spatial prediction models
- (2021) Hanna Meyer et al. Methods in Ecology and Evolution
- Changing soil organic carbon with land use and management practices in a thousand-year cultivation region
- (2021) Xiaoqian Niu et al. AGRICULTURE ECOSYSTEMS & ENVIRONMENT
- Machine learning techniques for acid sulfate soil mapping in southeastern Finland
- (2021) Virginia Estévez et al. GEODERMA
- Pre-Earthquake Ionospheric Perturbation Identification Using CSES Data via Transfer Learning
- (2021) Pan Xiong et al. Frontiers in Environmental Science
- Machine learning in space and time for modelling soil organic carbon change
- (2020) G. B. M. Heuvelink et al. EUROPEAN JOURNAL OF SOIL SCIENCE
- Development of pedotransfer functions by machine learning for prediction of soil electrical conductivity and organic carbon content
- (2020) K.K. Benke et al. GEODERMA
- Transfer learning to localise a continental soil vis-NIR calibration model
- (2019) J. Padarian et al. GEODERMA
- Machine Learning Approaches to Develop Pedotransfer Functions for Tropical Sri Lankan Soils
- (2019) M.H.J.P. Gunarathna et al. Water
- Transfer Learning for Soil Spectroscopy Based on Convolutional Neural Networks and Its Application in Soil Clay Content Mapping Using Hyperspectral Imagery
- (2018) Lanfa Liu et al. SENSORS
- Soil organic matter as sole indicator of soil degradation
- (2017) S.E. Obalum et al. ENVIRONMENTAL MONITORING AND ASSESSMENT
- LUCAS Soil, the largest expandable soil dataset for Europe: a review
- (2017) A. Orgiazzi et al. EUROPEAN JOURNAL OF SOIL SCIENCE
- A Soil Bulk Density Pedotransfer Function Based on Machine Learning: A Case Study with the NCSS Soil Characterization Database
- (2017) Amanda Ramcharan et al. SOIL SCIENCE SOCIETY OF AMERICA JOURNAL
- SoilGrids250m: Global gridded soil information based on machine learning
- (2017) Tomislav Hengl et al. PLoS One
- Digital mapping of soil organic carbon at multiple depths using different data mining techniques in Baneh region, Iran
- (2016) R. Taghizadeh-Mehrjardi et al. GEODERMA
- Comparing regression-based digital soil mapping and multiple-point geostatistics for the spatial extrapolation of soil data
- (2016) Brendan P. Malone et al. GEODERMA
- Computing the Two-Sided Kolmogorov-Smirnov Distribution
- (2015) Richard Simard et al. Journal of Statistical Software
- Persistence of soil organic matter as an ecosystem property
- (2011) Michael W. I. Schmidt et al. NATURE
- Soil type classification and estimation of soil properties using support vector machines
- (2009) Miloš Kovačević et al. GEODERMA
- A Survey on Transfer Learning
- (2009) Sinno Jialin Pan et al. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING
Find the ideal target journal for your manuscript
Explore over 38,000 international journals covering a vast array of academic fields.
SearchAdd your recorded webinar
Do you already have a recorded webinar? Grow your audience and get more views by easily listing your recording on Peeref.
Upload Now