TY - GEN
T1 - Feature Mutual Reconstruction for Semi-Supervised Few-Shot Remote Sensing Image Scene Classification
AU - Xue, Bohan
AU - Ma, Weichen
AU - Geng, Jie
N1 - Publisher Copyright:
© 2023 IEEE.
PY - 2023
Y1 - 2023
N2 - Few-shot remote sensing image scene classification (RSISC) faces the challenge of too few labeled samples. In recent years, semi-supervised few-shot learning (SSFSL) have expanded the labeling information by assigning pseudo-labels to unlabelled samples. However, obtaining high-confidence pseudo-labels with limited labeling samples also remains challenging. For this problem, this work proposes a feature mutual reconstruction method for semi-supervised few-shot RSISC. Specifically, the proposed feature mutual reconstruction module uses the similarity between unlabeled and labeled data to reconstruct labeled data, and the reconstructed labeled data classify the unlabeled data by joint representation error to obtain high-confidence pseudo-labels. In addition, the proposed prototype contrast correction module adjusts the spatial position of the prototypes by constructing a contrast learning model through pseudo-labels. Experimental results on three public datasets demonstrate that our method can effectively distinguish unlabelled data and achieve excellent classification results.
AB - Few-shot remote sensing image scene classification (RSISC) faces the challenge of too few labeled samples. In recent years, semi-supervised few-shot learning (SSFSL) have expanded the labeling information by assigning pseudo-labels to unlabelled samples. However, obtaining high-confidence pseudo-labels with limited labeling samples also remains challenging. For this problem, this work proposes a feature mutual reconstruction method for semi-supervised few-shot RSISC. Specifically, the proposed feature mutual reconstruction module uses the similarity between unlabeled and labeled data to reconstruct labeled data, and the reconstructed labeled data classify the unlabeled data by joint representation error to obtain high-confidence pseudo-labels. In addition, the proposed prototype contrast correction module adjusts the spatial position of the prototypes by constructing a contrast learning model through pseudo-labels. Experimental results on three public datasets demonstrate that our method can effectively distinguish unlabelled data and achieve excellent classification results.
KW - feature mutual reconstruction
KW - remote sensing image
KW - semi-supervised few-shot learning
UR - http://www.scopus.com/inward/record.url?scp=85180128239&partnerID=8YFLogxK
U2 - 10.1109/ICUS58632.2023.10318290
DO - 10.1109/ICUS58632.2023.10318290
M3 - 会议稿件
AN - SCOPUS:85180128239
T3 - Proceedings of 2023 IEEE International Conference on Unmanned Systems, ICUS 2023
SP - 614
EP - 618
BT - Proceedings of 2023 IEEE International Conference on Unmanned Systems, ICUS 2023
A2 - Song, Rong
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2023 IEEE International Conference on Unmanned Systems, ICUS 2023
Y2 - 13 October 2023 through 15 October 2023
ER -