
@Article{iasc.2020.011988,
AUTHOR = {Haifeng Song, Weiwei Yang, Haiyan Yuan, Harold Bufford},
TITLE = {Deep 3D-Multiscale DenseNet for Hyperspectral Image Classification Based on Spatial-Spectral Information},
JOURNAL = {Intelligent Automation \& Soft Computing},
VOLUME = {26},
YEAR = {2020},
NUMBER = {6},
PAGES = {1441--1458},
URL = {http://www.techscience.com/iasc/v26n6/41015},
ISSN = {2326-005X},
ABSTRACT = {There are two main problems that lead to unsatisfactory classification performance for hyperspectral remote sensing images (HSIs). One issue is that the HSI data used for training in deep learning is insufficient, therefore a deeper network is unfavorable for spatial-spectral feature extraction. The other problem is that as the depth of a deep neural network increases, the network becomes more prone to overfitting. To address these problems, a dual-channel 3D-Multiscale DenseNet (3DMSS) is proposed to boost the discriminative capability for HSI classification. The proposed model has several distinct advantages. First, the model consists of dual channels that can extract both spectral and spatial features, both of which are used in HSI classification. Therefore, the classification accuracy can be improved. Second, the 3D-Multiscale DenseNet is used to extract the spectral and spatial features which make full use of the HSI cube. The discriminant features for image classification are extracted and the spectral and spatial features are fused, which can alleviate the problem of low accuracy caused by limited training samples. Third, the connections between different layers are established using a residual dense block, and the feature maps of each layer are fully utilized to further alleviate the vanishing gradient problem. Qualitative classification experiments are reported that show the effectiveness of the proposed method. Compared with existing HSI classification techniques, the proposed method is highly suitable for HSI classification, especially for datasets with fewer training samples. The best overall accuracy of 99.36%, 99.86%, and 99.99% were obtained for the Indian Pines, KSC, and SA datasets, which showed an effective improvement of the classification accuracy.},
DOI = {10.32604/iasc.2020.011988}
}



