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Dimensionality reduction using deep belief network in big data case study: Hyperspectral image classification

机译:在大数据中使用深度信念网络进行降维的案例研究:高光谱图像分类

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The high dimensionality in big data need a heavy computation when the analysis needed. This research proposed a dimensionality reduction using deep belief network (DBN). We used hyperspectral images as case study. The hyperspectral image is a high dimensional image. Some researched have been proposed to reduce hyperspectral image dimension such as using LDA and PCA in spectral-spatial hyperspectral image classification. This paper proposed a dimensionality reduction using deep belief network (DBN) for hyperspectral image classification. In proposed framework, we use two DBNs. First DBN used to reduce the dimension of spectral bands and the second DBN used to extract spectral-spatial feature and as classifier. We used Indian Pines data set that consist of 16 classes and we compared DBN and PCA performance. The result indicates that by using DBN as dimensionality reduction method performed better than PCA in hyperspectral image classification.
机译:当需要分析时,大数据中的高维需要大量的计算。这项研究提出了使用深度置信网络(DBN)进行降维。我们使用高光谱图像作为案例研究。高光谱图像是高维图像。已经提出了一些减少高光谱图像尺寸的研究,例如在光谱空间高光谱图像分类中使用LDA和PCA。本文提出了一种使用深度信念网络(DBN)进行降维的高光谱图像分类方法。在提出的框架中,我们使用两个DBN。第一个DBN用于减小光谱带的尺寸,第二个DBN用于提取光谱空间特征并用作分类器。我们使用了包含16个类的Indian Pines数据集,并比较了DBN和PCA的性能。结果表明,通过使用DBN作为降维方法,在高光谱图像分类中,其效果优于PCA。

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