判别式
人工智能
高光谱成像
计算机科学
模式识别(心理学)
卷积神经网络
深度学习
特征提取
特征(语言学)
接头(建筑物)
空间分析
成像光谱仪
学习迁移
光谱带
上下文图像分类
遥感
分光计
图像(数学)
地质学
光学
工程类
哲学
物理
建筑工程
语言学
作者
Jingxiang Yang,Yongqiang Zhao,Jonathan Cheung-Wai Chan
标识
DOI:10.1109/tgrs.2017.2698503
摘要
Feature extraction is of significance for hyperspectral image (HSI) classification. Compared with conventional hand-crafted feature extraction, deep learning can automatically learn features with discriminative information. However, two issues exist in applying deep learning to HSIs. One issue is how to jointly extract spectral features and spatial features, and the other one is how to train the deep model when training samples are scarce. In this paper, a deep convolutional neural network with two-branch architecture is proposed to extract the joint spectral-spatial features from HSIs. The two branches of the proposed network are devoted to features from the spectral domain as well as the spatial domain. The learned spectral features and spatial features are then concatenated and fed to fully connected layers to extract the joint spectral-spatial features for classification. When the training samples are limited, we investigate the transfer learning to improve the performance. Low and mid-layers of the network are pretrained and transferred from other data sources; only top layers are trained with limited training samples extracted from the target scene. Experiments on Airborne Visible/Infrared Imaging Spectrometer and Reflective Optics System Imaging Spectrometer data demonstrate that the learned deep joint spectral-spatial features are discriminative, and competitive classification results can be achieved when compared with state-of-the-art methods. The experiments also reveal that the transferred features boost the classification performance.
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