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Hyperspectral imagery classification based on semi-supervised 3-D deep neural network and adaptive band selection

机译:基于半监督3-D深度神经网络和自适应谱带选择的高光谱图像分类

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摘要

This paper proposes a novel approach based on adaptive dimensionality reduction (ADR) and a semi supervised 3-D convolutional neural network (3-D CNN) for the spectro-spatial classification of hyper spectral images (HSIs). It tackles the problem of curse of dimensionality and the limited number of training samples by selecting the most relevant spectral bands. The selected bands should be informative, discriminative and distinctive. They are fed into a semi-supervised 3-D CNN feature extractor, then a linear regression classifier to produce the classification map. In fact, the proposed semi-supervised 3-D CNN model seeks to extract the deep spectral and spatial features based on convolutional encoder-decoder to enhance the HSI classification. It uses several 3-D convolution and max-pooling layers to extract these features from the selected relevant bands. The main advantage of the proposed approach is to reduce the high dimensionality of HSI, preserve the relevant spectro-spatial information and enhance the classification using few labeled training samples. Experimental studies are carried out on three real HSI data sets: Indian Pines, Pavia University, and Salinas. The obtained results show that the proposed approach performs better than other deep learning-based methods including CNN-based methods, and significantly improves the classification accuracy of HSIs. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文提出了一种基于自适应降维(ADR)和半监督3-D卷积神经网络(3-D CNN)的新颖方法,用于高光谱图像(HSI)的光谱空间分类。它通过选择最相关的光谱带来解决维数诅咒和训练样本数量有限的问题。所选乐队应具有丰富的信息,区分性和独特性。将它们输入半监督的3-D CNN特征提取器,然后输入线性回归分类器以生成分类图。实际上,所提出的半监督3-D CNN模型试图基于卷积编码器/解码器提取深度频谱和空间特征,以增强HSI分类。它使用几个3D卷积和最大池化层从选定的相关频带中提取这些特征。所提出的方法的主要优点是减少了HSI的高维性,保留了相关的光谱空间信息并使用很少的标记训练样本来增强分类。对三个真实的HSI数据集进行了实验研究:Indian Pines,Pavia University和Salinas。所得结果表明,该方法的性能优于其他基于深度学习的方法,包括基于CNN的方法,并显着提高了HSI的分类准确性。 (C)2019 Elsevier Ltd.保留所有权利。

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