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A Fast 3D CNN for Hyperspectral Image Classification

About

Hyperspectral imaging (HSI) has been extensively utilized for a number of real-world applications. HSI classification (HSIC) is a challenging task due to high inter-class similarity, high intra-class variability, overlapping, and nested regions. A 2D Convolutional Neural Network (CNN) is a viable approach whereby HSIC highly depends on both Spectral-Spatial information, therefore, 3D CNN can be an alternative but highly computational complex due to the volume and spectral dimensions. Furthermore, these models do not extract quality feature maps and may underperform over the regions having similar textures. Therefore, this work proposed a 3D CNN model that utilizes both spatial-spectral feature maps to attain good performance. In order to achieve the said performance, the HSI cube is first divided into small overlapping 3D patches. Later these patches are processed to generate 3D feature maps using a 3D kernel function over multiple contiguous bands that persevere the spectral information as well. Benchmark HSI datasets (Pavia University, Salinas and Indian Pines) are considered to validate the performance of our proposed method. The results are further compared with several state-of-the-art methods.

Muhammad Ahmad• 2020

Related benchmarks

TaskDatasetResultRank
Hyperspectral Image ClassificationIndian Pines 10% (train)
Overall Accuracy82.62
7
Hyperspectral Image ClassificationSalinas Scene (10% train)
OA95.93
7
Hyperspectral Image ClassificationUniversity of Pavia 10% (train)
Overall Accuracy (OA)90.23
7
Hyperspectral Image ClassificationIndian Pines 30% (train)
Overall Accuracy96.34
7
Hyperspectral Image ClassificationSalinas Scene 30% (train)
OA95.67
7
Hyperspectral Image ClassificationUniversity of Pavia 30% (train)
Overall Accuracy (OA)96
7
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