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Stacked Denoise Autoencoder Based Feature Extraction and Classification for Hyperspectral Images

机译:基于堆叠式降噪自动编码器的高光谱图像特征提取与分类

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Deep learning methods have been successfully applied to learn feature representations for high-dimensional data, where the learned features are able to reveal the nonlinear properties exhibited in the data. In this paper, deep learning method is exploited for feature extraction of hyperspectral data, and the extracted features can provide good discriminability for classification task. Training a deep network for feature extraction and classification includes unsupervised pretraining and supervised fine-tuning. We utilized stacked denoise autoencoder (SDAE) method to pretrain the network, which is robust to noise. In the top layer of the network, logistic regression (LR) approach is utilized to perform supervised fine-tuning and classification. Since sparsity of features might improve the separation capability, we utilized rectified linear unit (ReLU) as activation function in SDAE to extract high level and sparse features. Experimental results using Hyperion, AVIRIS, and ROSIS hyperspectral data demonstrated that the SDAE pretraining in conjunction with the LR fine-tuning and classification (SDAE_LR) can achieve higher accuracies than the popular support vector machine (SVM) classifier.
机译:深度学习方法已成功应用于学习高维数据的特征表示,其中学习的特征能够揭示数据中表现出的非线性特性。本文利用深度学习方法对高光谱数据进行特征提取,提取出的特征可以为分类任务提供良好的判别能力。训练用于特征提取和分类的深层网络包括无监督的预训练和有监督的微调。我们利用堆叠式降噪自动编码器(SDAE)方法对网络进行预训练,该网络对噪声具有鲁棒性。在网络的顶层,逻辑回归(LR)方法用于执行监督的微调和分类。由于稀疏特征可能会提高分离能力,因此我们在SDAE中利用整流线性单元(ReLU)作为激活函数来提取高水平和稀疏特征。使用Hyperion,AVIRIS和ROSIS高光谱数据进行的实验结果表明,与流行的支持向量机(SVM)分类器相比,SDAE预训练与LR微调和分类(SDAE_LR)结合可以实现更高的精度。

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