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Duplex-Hierarchy Representation Learning for Remote Sensing Image Classification

Remote sensing image classification (RSIC) is designed to assign specific semantic labels to aerial images, which is significant and fundamental in many applications. In recent years, substantial work has been conducted on RSIC with the help of deep learning models. Even though these models have gre...

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Published in:Sensors (Basel, Switzerland) Switzerland), 2024-02, Vol.24 (4), p.1130
Main Authors: Yuan, Xiaobin, Zhu, Jingping, Lei, Hao, Peng, Shengjun, Wang, Weidong, Li, Xiaobin
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Zhu, Jingping
Lei, Hao
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Li, Xiaobin
description Remote sensing image classification (RSIC) is designed to assign specific semantic labels to aerial images, which is significant and fundamental in many applications. In recent years, substantial work has been conducted on RSIC with the help of deep learning models. Even though these models have greatly enhanced the performance of RSIC, the issues of diversity in the same class and similarity between different classes in remote sensing images remain huge challenges for RSIC. To solve these problems, a duplex-hierarchy representation learning (DHRL) method is proposed. The proposed DHRL method aims to explore duplex-hierarchy spaces, including a common space and a label space, to learn discriminative representations for RSIC. The proposed DHRL method consists of three main steps: First, paired images are fed to a pretrained ResNet network for extracting the corresponding features. Second, the extracted features are further explored and mapped into a common space for reducing the intra-class scatter and enlarging the inter-class separation. Third, the obtained representations are used to predict the categories of the input images, and the discrimination loss in the label space is minimized to further promote the learning of discriminative representations. Meanwhile, a confusion score is computed and added to the classification loss for guiding the discriminative representation learning via backpropagation. The comprehensive experimental results show that the proposed method is superior to the existing state-of-the-art methods on two challenging remote sensing image scene datasets, demonstrating that the proposed method is significantly effective.
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subjects Analysis
Classification
confusion score
Datasets
Deep learning
discriminative representation
duplex hierarchy
Methods
Neural networks
Remote sensing
remote sensing image classification
Semantics
title Duplex-Hierarchy Representation Learning for Remote Sensing Image Classification
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