Learning with less: label-efficient land cover classification at very high spatial resolution using self-supervised deep learning
PositiveArtificial Intelligence
Learning with less: label-efficient land cover classification at very high spatial resolution using self-supervised deep learning
A recent study introduces a groundbreaking method for land cover classification using deep learning, achieving impressive results with minimal training data. This approach addresses the common challenge of needing large datasets for accurate mapping, making it easier to adopt these advanced models for environmental monitoring. By utilizing only 1,000 labeled samples, this research could significantly enhance our ability to map land cover at a high resolution, which is crucial for effective resource management and environmental protection.
— via World Pulse Now AI Editorial System
