Publication | Open Access
SSDC-DenseNet: A Cost-Effective End-to-End Spectral-Spatial Dual-Channel Dense Network for Hyperspectral Image Classification
23
Citations
31
References
2019
Year
Geometric LearningConvolutional Neural NetworkEngineeringMachine LearningComputational ComplexityImage ClassificationImage AnalysisData ScienceIndian Pines DatasetPattern RecognitionHyperspectral ImageFeature LearningImaging SpectroscopySpectral ImagingDeep LearningComputer VisionHyperspectral ImagingRemote SensingSpectral SearchingHyperspectral Image Classification
In recent years, various deep learning-based methods have been applied in hyperspectral image (HSI) classification. Among them, spectral-spatial approaches have demonstrated their power to yield high accuracies. However, these methods tend to be computationally expensive. Specifically, two classic ways to develop spectral-spatial approaches both suffer from significant limitations in cost reduction: multi-channel networks need a large parameter scale, and 3-D filters are inherent of computational complexity. To establish a cost-effective architecture for both training cost and parameter scale, while maintaining the high accuracy of spectral-spatial techniques, an end-to-end spectral-spatial dual-channel dense network (SSDC-DenseNet) is proposed. To explore high-level features, the densely connected structure is introduced to enable deeper network. Furthermore, a 2-D deep dual channel network is applied to replace the expensive 3-D filters to reduce the model scale. The experiments were conducted on three popular datasets: the Indian Pines dataset, University of Pavia dataset, and Salinas dataset. The results demonstrate the competitive performance of the proposed SSDC-DenseNet with respect to classification performance and computational cost compared with other state-of-the-art DL-based methods while obtaining a remarkable reduction of computational cost.
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