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Open AccessJournal ArticleDOI

Residual Dense Network Based on Channel-Spatial Attention for the Scene Classification of a High-Resolution Remote Sensing Image

Xiaolei Zhao, +4 more
- 10 Jun 2020 - 
- Vol. 12, Iss: 11, pp 1887
TLDR
Competitive results demonstrate that the RDN based on channel-spatial attention for scene classification of a high-resolution remote sensing image can extract more effective features and is more conducive to classifying a scene.
Abstract
The scene classification of a remote sensing image has been widely used in various fields as an important task of understanding the content of a remote sensing image. Specially, a high-resolution remote sensing scene contains rich information and complex content. Considering that the scene content in a remote sensing image is very tight to the spatial relationship characteristics, how to design an effective feature extraction network directly decides the quality of classification by fully mining the spatial information in a high-resolution remote sensing image. In recent years, convolutional neural networks (CNNs) have achieved excellent performance in remote sensing image classification, especially the residual dense network (RDN) as one of the representative networks of CNN, which shows a stronger feature learning ability as it fully utilizes all the convolutional layer information. Therefore, we design an RDN based on channel-spatial attention for scene classification of a high-resolution remote sensing image. First, multi-layer convolutional features are fused with residual dense blocks. Then, a channel-spatial attention module is added to obtain more effective feature representation. Finally, softmax classifier is applied to classify the scene after adopting data augmentation strategy for meeting the training requirements of the network parameters. Five experiments are conducted on the UC Merced Land-Use Dataset (UCM) and Aerial Image Dataset (AID), and the competitive results demonstrate that our method can extract more effective features and is more conducive to classifying a scene.

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Citations
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Satellite and Scene Image Classification Based on Transfer Learning and Fine Tuning of ResNet50

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Simplified object-based deep neural network for very high resolution remote sensing image classification

TL;DR: A simplified object-based deep neural network (SO-DNN) is proposed for very high resolution remote sensing image classification that relies on fewer models and easier-to-obtain samples than traditional methods, and its stable performance makes SO- DNN more valuable for practical applications.
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Dual Path Attention Net for Remote Sensing Semantic Image Segmentation

TL;DR: A Convolutional Neural Network model called Dual Path Attention Network (DPA-Net) is proposed that has a simple modular structure and can be added to any segmentation model to enhance its ability to learn features.
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Individual Sick Fir Tree (Abies mariesii) Identification in Insect Infested Forests by Means of UAV Images and Deep Learning

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Remote Sensing Scene Image Classification Based on Self-Compensating Convolution Neural Network

TL;DR: The experimental results show that the classification performance of the proposed self-compensated convolution method is superior to some of the state-of-the-art classification methods with less parameters.
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