Multi-level Relation Learning for Cross-domain Few-shot Hyperspectral
Image Classification
- URL: http://arxiv.org/abs/2311.01212v2
- Date: Mon, 25 Dec 2023 05:43:43 GMT
- Title: Multi-level Relation Learning for Cross-domain Few-shot Hyperspectral
Image Classification
- Authors: Chun Liu, Longwei Yang, Zheng Li, Wei Yang, Zhigang Han, Jianzhong
Guo, Junyong Yu
- Abstract summary: Cross-domain few-shot hyperspectral image classification focuses on learning prior knowledge from a large number of labeled samples from source domains.
This paper proposes to learn sample relations on different levels and take them into the model learning process.
- Score: 8.78907921615878
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Cross-domain few-shot hyperspectral image classification focuses on learning
prior knowledge from a large number of labeled samples from source domains and
then transferring the knowledge to the tasks which contain few labeled samples
in target domains. Following the metric-based manner, many current methods
first extract the features of the query and support samples, and then directly
predict the classes of query samples according to their distance to the support
samples or prototypes. The relations between samples have not been fully
explored and utilized. Different from current works, this paper proposes to
learn sample relations on different levels and take them into the model
learning process, to improve the cross-domain few-shot hyperspectral image
classification. Building on current method of "Deep Cross-Domain Few-Shot
Learning for Hyperspectral Image Classification" which adopts a domain
discriminator to deal with domain-level distribution difference, the proposed
method applies contrastive learning to learn the class-level sample relations
to obtain more discriminable sample features. In addition, it adopts a
transformer based cross-attention learning module to learn the set-level sample
relations and acquire the attention from query samples to support samples. Our
experimental results have demonstrated the contribution of the multi-level
relation learning mechanism for few-shot hyperspectral image classification
when compared with the state of the art methods.
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