The AI4EO Hyperview challenge seeks machine learning methods that predict agriculturally relevant soil parameters (K, Mg, P 2 O 5 , pH) from airborne hyperspectral images. We present a hybrid model fusing Random Forest and K-nearest neighbor regressors that exploit the average spectral reflectance, as well as derived features such as gradients, wavelet coefficients, and Fourier transforms. The solution is computationally lightweight and improves upon the challenge baseline by 21.9%, with the first place on the public leaderboard. In addition, we discuss neural network architectures and potential future improvements
We developed machine learning models to retrieve surface soil moisture (0-4 cm) from high resolution...
Remote sensing of land surface mostly obtains a mixture of spectral information of soil and vegetati...
In order to improve the signal-to-noise ratio of the hyperspectral sensors and exploit the potential...
The AI4EO Hyperview challenge seeks machine learning methods that predict agriculturally relevant so...
Soil moisture, soil organic carbon, and nitrogen content prediction are considered significant field...
The spatial heterogeneity of soil properties has a significant impact on crop growth, making it diff...
An unsupervised machine-learning workflow is proposed for estimating fractional landscape soils and ...
Saturated soil hydraulic conductivity (Ksat) is a key component in hydrogeology and water management...
It has been widely certified that hyperspectral images can be effectively used to monitor soil organ...
Soil visible and near-infrared spectroscopy provides a non-destructive, rapid and low-cost approach ...
Creating accurate digital maps of the agrochemical properties of soils on a field scale with a limit...
The determination of soil texture and organic carbon across agricultural areas provides important in...
Visible and near-infrared spectroscopy (Vis–NIR, 350–1100 nm) has great potential for predicting soi...
Estimating various properties of soil, including moisture, carbon, and nitrogen, is crucial for stud...
Effective soil spectral band selection and modeling methods can improve modeling accuracy. To establ...
We developed machine learning models to retrieve surface soil moisture (0-4 cm) from high resolution...
Remote sensing of land surface mostly obtains a mixture of spectral information of soil and vegetati...
In order to improve the signal-to-noise ratio of the hyperspectral sensors and exploit the potential...
The AI4EO Hyperview challenge seeks machine learning methods that predict agriculturally relevant so...
Soil moisture, soil organic carbon, and nitrogen content prediction are considered significant field...
The spatial heterogeneity of soil properties has a significant impact on crop growth, making it diff...
An unsupervised machine-learning workflow is proposed for estimating fractional landscape soils and ...
Saturated soil hydraulic conductivity (Ksat) is a key component in hydrogeology and water management...
It has been widely certified that hyperspectral images can be effectively used to monitor soil organ...
Soil visible and near-infrared spectroscopy provides a non-destructive, rapid and low-cost approach ...
Creating accurate digital maps of the agrochemical properties of soils on a field scale with a limit...
The determination of soil texture and organic carbon across agricultural areas provides important in...
Visible and near-infrared spectroscopy (Vis–NIR, 350–1100 nm) has great potential for predicting soi...
Estimating various properties of soil, including moisture, carbon, and nitrogen, is crucial for stud...
Effective soil spectral band selection and modeling methods can improve modeling accuracy. To establ...
We developed machine learning models to retrieve surface soil moisture (0-4 cm) from high resolution...
Remote sensing of land surface mostly obtains a mixture of spectral information of soil and vegetati...
In order to improve the signal-to-noise ratio of the hyperspectral sensors and exploit the potential...