Sugar-Beet Stress Detection using Satellite Image Time Series
By: Bhumika Laxman Sadbhave , Philipp Vaeth , Denise Dejon and more
Potential Business Impact:
Finds sick sugar-beet plants from space.
Satellite Image Time Series (SITS) data has proven effective for agricultural tasks due to its rich spectral and temporal nature. In this study, we tackle the task of stress detection in sugar-beet fields using a fully unsupervised approach. We propose a 3D convolutional autoencoder model to extract meaningful features from Sentinel-2 image sequences, combined with acquisition-date-specific temporal encodings to better capture the growth dynamics of sugar-beets. The learned representations are used in a downstream clustering task to separate stressed from healthy fields. The resulting stress detection system can be directly applied to data from different years, offering a practical and accessible tool for stress detection in sugar-beets.
Similar Papers
A Joint Learning Framework with Feature Reconstruction and Prediction for Incomplete Satellite Image Time Series in Agricultural Semantic Segmentation
CV and Pattern Recognition
Helps farmers track crops even with cloudy skies.
TEA: Temporal Adaptive Satellite Image Semantic Segmentation
CV and Pattern Recognition
Helps farmers know exactly where crops are.
Leveraging Satellite Image Time Series for Accurate Extreme Event Detection
CV and Pattern Recognition
Spots disasters early using many satellite pictures.