Edge-Inferring Graph Neural Network With Dynamic Task-Guided Self-Diagnosis for Few-Shot Hyperspectral Image Classification
Chunyan Yu, Jiahui Huang, Meiping Song, Yulei Wang, Chein‐I Chang
Abstract
The current hyperspectral image classification (HSIC) model based on the convolutional neural network for feature extraction and softmax classifier has been prone to the barrier of label prediction with limited samples. Substituting for the enormously complicated work of terrain labeling, few-shot learning provides a popular option for HSIC with very few annotated samples. In this paper, we proposed a novel edge-inferring framework with the meta-learning paradigm for hyperspectral few-shot classification (HSFSC). In which, a graph neural network for similarity measurement is firstly presented to iteratively infer edge labels with the exploitation of instance-level similarity and the distribution-level similarity. Besides, in the meta-training stage, the pixel prediction model and patch prediction model based on edge inferring architecture are concretized jointly to improve the classification accuracy of the test samples. Expressly, at the meta-testing phase, the dynamic task-guided self-diagnosis strategy is developed for the first time to diagnose the samples separability of the current classification task, which is responsible for dynamically assigning the most reliable results based on the generated reliability grade of the sample. The extensive experimental results and analysis of three hyperspectral image datasets demonstrate the superiority of the proposed HSFSC architecture compared with other advanced methods.