Hyperspectral image classification using two-channel deep convolutional neural network
Citations Over TimeTop 10% of 2016 papers
Abstract
Performance of hyperspectral image classification depends on feature extraction. Compared with conventional hand-crafted feature extraction, deep learning can learn feature with more discriminative information. In this paper, a two-channel deep convolutional neural network (Two-CNN) is proposed to learn jointly spectral-spatial feature from hyperspectral image. The proposed model is composed of two channels of CNN, each of which learns feature from spectral domain and spatial domain respectively. The learned spectral feature and spatial feature are then concatenated and fed to fully connected layer to extract joint spectral-spatial feature for classification. When number of training samples is limited, we propose to train the deep model using transfer learning to improve the performance. Low-layer and mid-layer features of the deep model are learned and transferred from other scenes, only top-layer feature is learned using the limited training samples of the current scene. Experiment results on real data demonstrate the effectiveness of the proposed method.
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