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HYPERSPECTRAL DATA FEATURE EXTRACTION USING DEEP BELIEF NETWORK

机译:使用深层信任网络提取高光谱数据特征

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Hyperspectral data has rich spectrum information, strong correlation between bands and high data redundancy. Feature band extraction of hyperspectral data is a prerequisite and an important basis for the subsequent study of classification and target recognition. Deep belief network is a kind of deep learning model, the paper proposed a deep belief network to realize the characteristics band extraction of hyperspectral data, and use the advantages of unsupervised and supervised learning of deep belief network, and to extract feature bands of spectral data from low level to high-level gradually. The extracted feature band has a stronger discriminant performance, so that it can better to classify hyperspectral data. Finally, the AVIRIS data is used to extract the feature band, and the SVM classifier is used to classify the data, which verifies the effectiveness of the method.
机译:高光谱数据具有丰富的频谱信息,频段之间的相关性强,数据冗余度高。高光谱数据特征带提取是后续研究分类和目标识别的前提和重要基础。深度信念网络是一种深度学习模型,本文提出了一种深度信念网络,以实现高光谱数据的特征带提取,并利用深度学习网络的无监督学习和监督学习的优势,提取光谱数据的特征带。从低级到高级提取的特征带具有较强的判别性能,因此可以更好地对高光谱数据进行分类。最后,利用AVIRIS数据提取特征带,使用SVM分类器对数据进行分类,验证了该方法的有效性。

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