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Three-dimensional densely connected convolutional network for hyperspectral remote sensing image classification

机译:用于高光谱遥感图像分类的三维密度连接卷积网络

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Hyperspectral remote sensing images (HSIs) are rich in spatial and spectral information, thus they help to enhance the ability to distinguish geographic objects. In recent years, great progress have been made in image classification using deep learning (such as 2D-CNN and 3D-CNN). Compared with traditional machine learning methods, deep learning methods can automatically extract the abstract features from low to high levels and convert the images into more easily recognizable features. Most HSI classification tasks focus on spectral information but often ignore the rich spatial structures in HSIs, leading to a low classification accuracy. Moreover, most supervised learning methods use shallow structures in HSI classifications and hence exhibit weak performance in finding sparse geographic objects. We proposed to use the three-dimensional (3-D) structure to extract spectral-spatial information to build a deep neural network for HSI classifications. Based on DenseNet, the 3D densely connected convolutional network was improved to learn spectral-spatial features of HSIs. The densely connected structure can enhance feature transmission, support feature reuse, improve information flow in the network, and make deeper networks easier to train. The 3D-DenseNet has a deeper structure than 3D-CNN, thus it can learn more robust spectral-spatial features from HSIs. In fact, the deeper network structure has a regularized effect, which can effectively reduce overfitting on small sample datasets. The network uses HSIs instead of feature engineering as input data and is trained in an end-to-end manner. The experimental results of this model on the Indian Pines datasets and the Pavia University datasets show that deeper neural networks further improve the classification of complex objects, especially in the areas where geographic objects are sparse. It effectively improves the classification accuracy of HSIs. (C) 2019 Society of Photo-Optical Instrumentation Engineers (SPIE).
机译:高光谱遥感图像(HSIS)丰富的空间和光谱信息,因此有助于增强区分地理对象的能力。近年来,使用深度学习(如2D-CNN和3D-CNN),在图像分类中取得了巨大进展。与传统的机器学习方法相比,深度学习方法可以自动从低电平到高水平提取抽象特征,并将图像转换为更容易识别的功能。大多数HSI分类任务专注于光谱信息,但通常忽略HSI中的丰富空间结构,导致低分类精度。此外,最具监督的学习方法在HSI分类中使用浅层结构,因此在寻找稀疏地理对象方面表现出薄弱的性能。我们建议使用三维(3-D)结构来提取光谱空间信息,为HSI分类构建深度神经网络。基于DENSENET,改进了3D密集连接的卷积网络以了解HSIS的光谱空间特征。密集连接的结构可以增强特征传输,支持功能重用,改进网络中的信息流,并使更深的网络更容易训练。 3D-DenSenet具有比3D-CNN更深的结构,因此它可以从HSIS学习更强大的频谱空间特征。实际上,更深的网络结构具有正则化效果,可以有效地减少小型样本数据集的过度。网络使用HSIS而不是特征工程作为输入数据,并以端到端的方式训练。这一模型在印度松树数据集和帕夫亚大学数据集上的实验结果表明,更深层次的神经网络进一步改善了复杂物体的分类,尤其是在地理对象稀疏的区域中。它有效提高了HSIS的分类准确性。 (c)2019年光学仪表工程师协会(SPIE)。

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