基于多尺度融合的少拍遥感场景分类

Zichen Wang, Jianzhong Qiao
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引用次数: 0

摘要

少拍遥感场景分类是计算机视觉和少拍学习领域的研究课题之一,旨在通过少量的训练样本对遥感场景进行分类。目前的少拍遥感场景分类方法采用单一度量,无法有效提取特征,影响了分类精度。为此,我们提出了多度量融合网络(MMFN),通过组合特征映射多编码器(FMME)和关系关注网络(RAN)来有效地提取特征,提高分类精度。FMME对嵌入阶段提取的特征映射进行进一步编码,得到不同的有意义的特征。RAN的目的是基于图像注意机制,通过融合多种方法的结果来计算特征之间的相似度。在三个遥感数据集上的实验结果表明,多度量融合方法可以提取有意义的特征,有效提高了少拍遥感场景的分类性能。
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Few-Shot Remote Sensing Scene Classification with Multi-Metric Fusion
Few-shot remote sensing scene classification is one of the research topics in the field of computer vision and few-shot learning, aiming to classify remote sensing scene through few training samples. The current methods of few-shot remote sensing scene classification use single metric, thus the classification accuracy is affected for the features cannot be effectively extracted. Therefore, we propose multi-metric fusion networks (MMFN) to address the problem via assembling a feature map multi encoder (FMME) and relation attention networks (RAN) to extract the features effectively and improve the classification accuracy. The FMME is designed to further encode the feature map which is extracted in the embedding phase to get different meaningful features. The RAN is aiming to calculate the similarity between features via fusing results of multiple methods based on image attention mechanism. Experimental results on three remote sensing data sets show that the multi-metric fusion method can extract meaningful features and effectively improve the classification performance of few-shot remote sensing scene.
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