Improving Diagnostic Performance on Small and Imbalanced Datasets Using Class-Based Input Image Composition
PositiveArtificial Intelligence
Improving Diagnostic Performance on Small and Imbalanced Datasets Using Class-Based Input Image Composition
A recent paper introduces an innovative approach called Class-Based Image Composition, which aims to tackle the challenges posed by small and imbalanced datasets in deep learning. By creating Composite Input Images that combine multiple images of the same class, this method enhances the quality of training inputs, ultimately reducing false prediction rates. This advancement is significant as it could lead to more accurate models in various applications, making it easier for researchers and practitioners to work with limited data.
— via World Pulse Now AI Editorial System
