Resumen
This study explores an approach involving the adaptation of data sampling techniques within the hidden feature space of deep neural networks. By modifying traditional prototype selection and cleaning methods, our methodology eliminates noisy samples and condenses the data into representative points, thereby enhancing class separation and improving generalisation. A nearest-neighbours search in the hidden space enables more refined sample selection. Comprehensive experiments on four
multi-class imbalanced hyperspectral datasets (Indian Pines, Salinas, PaviaU, and Pavia) demonstrated that combining oversampling in the spectral space with editing in the hidden feature space outperforms conventional sampling methods.