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Novel Deep-Learning-Based Spatial-Spectral Feature Extraction For Hyperspectral Remote Sensing Applications

机译:高深度遥感应用中基于深度学习的新型空间光谱特征提取

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Hyperspectral remote sensing presents a unique Big Data research paradigm through its rich data collected as hundreds of spectral bands which embodies vital spatial and spectral information about the underlying terrains. Typical hyperspectral data analysis methods are often based on spectral information. Although there has been prior efforts in literature for incorporation of spatial, spectral, contextual and other forms of information to improve the classification performance of hyperspectral data analysis, this additional information extraction and knowledge discovery process comes at the expense of increased computation and memory requirements. Therefore, the caveats of large scale data analysis such as increased computation, transmission and memory requirements presents a major impediment to efficient automation and classification performance of hyperspectral data analysis methods. In this respect, this paper presents a novel deep learning-based hyperspectral data analysis model, which provides an efficient means for automation and extraction of the spatial and spectral information present in the hyperspectral data compared to conventional spatial-or spectral information-only based methods. In this work, the concept of Gabor filtering is used for spatial feature extraction along with sparse random projections for computationally efficient spectral feature extraction and dimensionality reduction purposes. A convolutional neural network based supervised classification is then performed to validate the performance of the proposed method with respect to conventional spatial-spectral information extraction methods. Experimental results reveal that the proposed hyperspectral data analysis model outperforms the conventional spectral-spatial feature extraction techniques compared.
机译:高光谱遥感通过其丰富的数据(以数百个光谱带的形式收集)来呈现独特的大数据研究范式,体现了有关下层地形的重要空间和光谱信息。典型的高光谱数据分析方法通常基于光谱信息。尽管文献中已经进行了先前的努力,以结合空间,光谱,上下文和其他形式的信息来改善高光谱数据分析的分类性能,但是这种额外的信息提取和知识发现过程却以增加的计算和存储需求为代价。因此,诸如增加的计算,传输和存储需求之类的大规模数据分析的注意事项严重阻碍了高光谱数据分析方法的高效自动化和分类性能。在这方面,本文提出了一种新颖的基于深度学习的高光谱数据分析模型,与传统的仅基于空间或光谱信息的方法相比,该模型提供了一种有效的手段来自动化和提取高光谱数据中存在的空间和光谱信息。在这项工作中,Gabor滤波的概念与稀疏随机投影一起用于空间特征提取,以实现计算有效的光谱特征提取和降维目的。然后执行基于卷积神经网络的监督分类,以相对于常规空间光谱信息提取方法验证所提出方法的性能。实验结果表明,所提出的高光谱数据分析模型优于传统的光谱空间特征提取技术。

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