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請用此 Handle URI 來引用此文件: http://scholars.ntou.edu.tw/handle/123456789/21530
標題: Consolidated Convolutional Neural Network for Hyperspectral Image Classification
作者: Chang, Yang-Lang
Tan, Tan-Hsu
Lee, Wei-Hong
Chang, Lena 
Chen, Ying-Nong
Fan, Kuo-Chin
Alkhaleefah, Mohammad
關鍵字: consolidated convolutional neural network;hyperspectral image classification;high performance computing;image augmentation;principal component analysis
公開日期: 1-四月-2022
出版社: MDPI
卷: 14
期: 7
來源出版物: REMOTE SENSING
摘要: 
The performance of hyperspectral image (HSI) classification is highly dependent on spatial and spectral information, and is heavily affected by factors such as data redundancy and insufficient spatial resolution. To overcome these challenges, many convolutional neural networks (CNN) especially 2D-CNN-based methods have been proposed for HSI classification. However, these methods produced insufficient results compared to 3D-CNN-based methods. On the other hand, the high computational complexity of the 3D-CNN-based methods is still a major concern that needs to be addressed. Therefore, this study introduces a consolidated convolutional neural network (C-CNN) to overcome the aforementioned issues. The proposed C-CNN is comprised of a three-dimension CNN (3D-CNN) joined with a two-dimension CNN (2D-CNN). The 3D-CNN is used to represent spatial-spectral features from the spectral bands, and the 2D-CNN is used to learn abstract spatial features. Principal component analysis (PCA) was firstly applied to the original HSIs before they are fed to the network to reduce the spectral bands redundancy. Moreover, image augmentation techniques including rotation and flipping have been used to increase the number of training samples and reduce the impact of overfitting. The proposed C-CNN that was trained using the augmented images is named C-CNN-Aug. Additionally, both Dropout and L2 regularization techniques have been used to further reduce the model complexity and prevent overfitting. The experimental results proved that the proposed model can provide the optimal trade-off between accuracy and computational time compared to other related methods using the Indian Pines, Pavia University, and Salinas Scene hyperspectral benchmark datasets.
URI: http://scholars.ntou.edu.tw/handle/123456789/21530
DOI: 10.3390/rs14071571
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