/SoilNet

A Spatio-temporal Framework for Soil Property Prediction with Digital Soil Mapping (DSM)

Primary LanguageJupyter Notebook

SoilNet

A hybrid multi-modal DL model for soil property (SOC) prediction has been presented. The training consists of two phases: 1) Self-supervised contrastive learning and 2) supervised fine-tuning via ground truth for our downstream task, which is regression.


Graohical_abstract

Ground Truth

Our model has been trained via two different datasets: