Convolutional Neural Networks (CNN) has been extensively studied for Hyperspectral Image Classification (HSIC) more specifically, 2D and 3D CNN models have proved highly efficient in exploiting the spatial and spectral information of Hyperspectral Images. However, 2D CNN only considers the spatial information and ignores the spectral information whereas 3D CNN jointly exploits spatial-spectral information at a high computational cost. Therefore, this work proposed a lightweight CNN (3D followed by 2D-CNN) model which significantly reduces the computational cost by distributing spatial-spectral feature extraction across a lighter model alongside a preprocessing that has been carried out to improve the classification results. Five benchmark Hyperspectral datasets (i.e., SalinasA, Salinas, Indian Pines, Pavia University, Pavia Center, and Botswana) are used for experimental evaluation. The experimental results show that the proposed pipeline outperformed in terms of generalization performance, statistical significance, and computational complexity, as compared to the state-of-the-art 2D/3D CNN models except commonly used computationally expensive design choices.
翻译:在超光谱图像分类(HSIC)方面,对超光谱图像分类(CNN)进行了广泛的研究,具体来说,2D和3DCNN模型在利用超光谱图像的空间和光谱信息方面证明效率很高,但是,2DCNN只考虑空间信息,忽略光谱信息,而3DCNN以高计算成本共同利用空间光谱信息,因此,这项工作提出了轻量的CNN(3D,然后是2D-CNN)模型,通过在较轻的模型中分配空间光谱特征提取,以及为改善分类结果而进行的预处理,大大降低了计算成本。五个基准超光谱数据集(即SalinasA、Salinas、Indian Pines、Pavia大学、Pavia Center和博茨瓦纳)用于实验性评价。实验结果表明,拟议的管道在一般化性业绩、统计意义和计算复杂性方面超过了与目前使用的2D/3DCNN模型相比,但通常使用的计算费用昂贵的设计选择除外。