论文标题
基于多尺度残差网络的高光谱图像分类
Hyperspectral Images Classification Based on Multi-scale Residual Network
论文作者
论文摘要
因为高光谱遥感图像包含许多冗余信息,并且数据结构是高度非线性的,导致传统机器学习方法的分类准确性低。最新研究表明,基于深卷积神经网络的高光谱图像分类具有很高的精度。但是,当使用少量数据进行培训时,深度学习方法的分类精度大大降低了。为了解决在高光谱图像的小样本上现有算法的低分类精度的问题,提出了多尺度的残留网络。空间和光谱特征的多尺度提取和融合可以通过将分支结构添加到残留块中并使用分支中不同大小的卷积内核来实现。高光谱图像中包含的空间和光谱信息已充分利用来提高分类精度。此外,为了提高速度并防止过度拟合,该模型使用动态学习率,BN和辍学策略。实验结果表明,在印度松树和帕维亚大学的数据集中,该方法的总体分类精度分别为99.07%和99.96%,这比其他算法要好。
Because hyperspectral remote sensing images contain a lot of redundant information and the data structure is highly non-linear, leading to low classification accuracy of traditional machine learning methods. The latest research shows that hyperspectral image classification based on deep convolutional neural network has high accuracy. However, when a small amount of data is used for training, the classification accuracy of deep learning methods is greatly reduced. In order to solve the problem of low classification accuracy of existing algorithms on small samples of hyperspectral images, a multi-scale residual network is proposed. The multi-scale extraction and fusion of spatial and spectral features is realized by adding a branch structure into the residual block and using convolution kernels of different sizes in the branch. The spatial and spectral information contained in hyperspectral images are fully utilized to improve the classification accuracy. In addition, in order to improve the speed and prevent overfitting, the model uses dynamic learning rate, BN and Dropout strategies. The experimental results show that the overall classification accuracy of this method is 99.07% and 99.96% respectively in the data set of Indian Pines and Pavia University, which is better than other algorithms.