Hyperspectral image data are characterized by high dimensionality, sparse data, and rich spatial and spectral information. In spatial-spectral joint classification models, convolution operations for hyperspectral images can lead to computational spatial redundancy when processing large regions of pixels of the same category. Furthermore, the 3D convolution fails to sufficiently extract the deep spatial texture features, and the serial attention mechanism cannot fully account for spatial-spectral correlations. This study proposed an improved 3D Octave convolution-based model for hyperspectral image classification. First, the input hyperspectral images were divided into high- and low-frequency feature maps using an improved 3D Octave convolution module to reduce spatial redundancy information and extract multi-scale spatial-spectral features. Concurrently, a cross-layer fusion strategy was introduced to enhance the extraction of shallow spatial texture features and spectral features. Subsequently, 2D convolution was used to extract deep spatial texture features and perform spectral feature fusion. Finally, a 3D attention mechanism was used to focus on and activate effective features through interactions across latitudes, thereby enhancing the performance and robustness of the network model. The results indicate that, due to the adequate extraction of effective spatial-spectral joint features, the overall accuracy (OA), Kappa coefficient, and average accuracy (AA) were 99.32%, 99.13%, and 99.15%, respectively in the case where the Indian Pines (IP) dataset accounted for 10% in the training set and were 99.61%, 99.44%, and 99.08%, respectively when the Pavia University (PU) dataset represented for 3% of the training set. Compared to five mainstream classification models, the proposed method exhibits higher classification accuracy.
Chen G W, Zhao S Y, Ni C Y. Hyperspectral monitoring of soil contaminated by heavy metals[J]. Journal of University of Chinese Academy of Sciences, 2019, 36(4):560-566.
doi: 10.7523/j.issn.2095-6134.2019.04.016
Hong X, Jiang H, Yu S Q. Application of hyper-spectral remote sensing in production of precision agriculture[J]. Journal of Anhui Agricultural Sciences, 2010, 38(1):529-531,540.
[3]
Ma L, Crawford M M, Tian J. Local manifold learning-based k-nearest-neighbor for hyperspectral image classification[J]. IEEE Transactions on Geoscience and Remote Sensing, 2010, 48(11):4099-4109.
[4]
Delalieux S, Somers B, Haest B, et al. Heathland conservation status mapping through integration of hyperspectral mixture analysis and decision tree classifiers[J]. Remote Sensing of Environment, 2012, 126:222-231.
[5]
Ding S, Chen L. Classification of hyperspectral remote sensing images with support vector machines and particle swarm optimization[C]// 2009 International Conference on Information Engineering and Computer Science.Wuhan,China.IEEE, 2009:1-5.
[6]
Kang X, Xiang X, Li S, et al. PCA-based edge-preserving features for hyperspectral image classification[J]. IEEE Transactions on Geoscience and Remote Sensing, 2017, 55(12):7140-7151.
[7]
Wang J, Chang C I. Independent component analysis-based dimensionality reduction with applications in hyperspectral image analysis[J]. IEEE Transactions on Geoscience and Remote Sensing, 2006, 44(6):1586-1600.
[8]
Bandos T V, Bruzzone L, Camps-Valls G. Classification of hyperspectral images with regularized linear discriminant analysis[J]. IEEE Transactions on Geoscience and Remote Sensing, 2009, 47(3):862-873.
[9]
Cui B, Cui J, Lu Y, et al. A sparse representation-based sample pseudo-labeling method for hyperspectral image classification[J]. Remote Sensing, 2020, 12(4):664.
[10]
Cao X, Xu Z, Meng D. Spectral-spatial hyperspectral image classification via robust low-rank feature extraction and Markov random field[J]. Remote Sensing, 2019, 11(13):1565.
[11]
Kang X, Li S, Benediktsson J A. Spectral-spatial hyperspectral image classification with edge-preserving filtering[J]. IEEE Transactions on Geoscience and Remote Sensing, 2014, 52(5):2666-2677.
[12]
Chen Y, Zhao X, Jia X. Spectral-spatial classification of hyperspectral data based on deep belief network[J]. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 2015, 8(6):2381-2392.
[13]
Madani H, McIsaac K. Distance transform-based spectral-spatial feature vector for hyperspectral image classification with stacked autoencoder[J]. Remote Sensing, 2021, 13(9):1732.
[14]
Zhao W, Du S. Spectral-spatial feature extraction for hyperspectral image classification:A dimension reduction and deep learning approach[J]. IEEE Transactions on Geoscience and Remote Sensing, 2016, 54(8):4544-4554.
[15]
Lee H, Eum S, Kwon H. Cross-domain CNN for hyperspectral image classification[C]// IGARSS 2018-2018 IEEE International Geoscience and Remote Sensing Symposium.Valencia,Spain.IEEE, 2018:3627-3630.
[16]
Chen Y, Jiang H, Li C, et al. Deep feature extraction and classification of hyperspectral images based on convolutional neural networks[J]. IEEE Transactions on Geoscience and Remote Sensing, 2016, 54(10):6232-6251.
[17]
Zhong Z, Li J, Luo Z, et al. Spectral-spatial residual network for hyperspectral image classification:A 3-D deep learning framework[J]. IEEE Transactions on Geoscience and Remote Sensing, 2018, 56(2):847-858.
[18]
Roy S K, Krishna G, Dubey S R, et al. HybridSN:Exploring 3-D-2-D CNN feature hierarchy for hyperspectral image classification[J]. IEEE Geoscience and Remote Sensing Letters, 2020, 17(2):277-281.
[19]
Li R, Zheng S, Duan C, et al. Classification of hyperspectral image based on double-branch dual-attention mechanism network[J]. Remote Sensing, 2020, 12(3):582.
[20]
Zhang C, Wang J, Yao K. Global random graph convolution network for hyperspectral image classification[J]. Remote Sensing, 2021, 13(12):2285.
[21]
Mou L, Ghamisi P, Zhu X X. Deep recurrent neural networks for hyperspectral image classification[J]. IEEE Transactions on Geoscience and Remote Sensing, 2017, 55(7):3639-3655.
[22]
Chen Y, Fan H, Xu B, et al. Drop an octave:Reducing spatial redundancy in convolutional neural networks with octave convolution[C]// 2019 IEEE/CVF International Conference on Computer Vision (ICCV).Seoul,Korea (South).IEEE, 2019:3434-3443.
[23]
Woo S, Park J, Lee J Y, et al. CBAM:convolutional block attention module[C]// European Conference on Computer Vision.Cham:Springer, 2018:3-19.