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Deep Residual Involution Network for Hyperspectral Image Classification
by
Liang, Miaomiao
, Meng, Zhe
, Xie, Wen
, Zhao, Feng
in
Artificial neural networks
/ Classification
/ data collection
/ Datasets
/ Deep learning
/ hyperspectral image (HSI) classification
/ hyperspectral imagery
/ Hyperspectral imaging
/ image analysis
/ Image classification
/ involution
/ Kernels
/ Learning algorithms
/ Machine learning
/ Neural networks
/ Principal components analysis
/ Receptive field
/ Remote sensing
/ residual network
2021
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Deep Residual Involution Network for Hyperspectral Image Classification
by
Liang, Miaomiao
, Meng, Zhe
, Xie, Wen
, Zhao, Feng
in
Artificial neural networks
/ Classification
/ data collection
/ Datasets
/ Deep learning
/ hyperspectral image (HSI) classification
/ hyperspectral imagery
/ Hyperspectral imaging
/ image analysis
/ Image classification
/ involution
/ Kernels
/ Learning algorithms
/ Machine learning
/ Neural networks
/ Principal components analysis
/ Receptive field
/ Remote sensing
/ residual network
2021
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Do you wish to request the book?
Deep Residual Involution Network for Hyperspectral Image Classification
by
Liang, Miaomiao
, Meng, Zhe
, Xie, Wen
, Zhao, Feng
in
Artificial neural networks
/ Classification
/ data collection
/ Datasets
/ Deep learning
/ hyperspectral image (HSI) classification
/ hyperspectral imagery
/ Hyperspectral imaging
/ image analysis
/ Image classification
/ involution
/ Kernels
/ Learning algorithms
/ Machine learning
/ Neural networks
/ Principal components analysis
/ Receptive field
/ Remote sensing
/ residual network
2021
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Deep Residual Involution Network for Hyperspectral Image Classification
Journal Article
Deep Residual Involution Network for Hyperspectral Image Classification
2021
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Overview
Convolutional neural networks (CNNs) have achieved great results in hyperspectral image (HSI) classification in recent years. However, convolution kernels are reused among different spatial locations, known as spatial-agnostic or weight-sharing kernels. Furthermore, the preference of spatial compactness in convolution (typically, 3×3 kernel size) constrains the receptive field and the ability to capture long-range spatial interactions. To mitigate the above two issues, in this article, we combine a novel operation called involution with residual learning and develop a new deep residual involution network (DRIN) for HSI classification. The proposed DRIN could model long-range spatial interactions well by adopting enlarged involution kernels and realize feature learning in a fairly lightweight manner. Moreover, the vast and dynamic involution kernels are distinct over different spatial positions, which could prioritize the informative visual patterns in the spatial domain according to the spectral information of the target pixel. The proposed DRIN achieves better classification results when compared with both traditional machine learning-based and convolution-based methods on four HSI datasets. Especially in comparison with the convolutional baseline model, i.e., deep residual network (DRN), our involution-powered DRIN model increases the overall classification accuracy by 0.5%, 1.3%, 0.4%, and 2.3% on the University of Pavia, the University of Houston, the Salinas Valley, and the recently released HyRANK HSI benchmark datasets, respectively, demonstrating the potential of involution for HSI classification.
Publisher
MDPI AG
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