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Data Fusion of Spectral and Visible Images for Resolution Enhancement of Fraction Maps Through Neural Network and Spatial Statistical Features

机译:通过神经网络和空间统计特征分辨率分辨率谱分辨率的频谱和可见图像的数据融合

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A new methodology is proposed for the enhancement of endmember (EMs) fractions’ maps. The new method, termed DFNeFE (data fusion through neural-network for fraction estimation), is based on the fusion of a multispectral image, with low spatial resolution (LSR) and a visible RGB image, with high spatial restitution (HSR), through a back propagation neural network (BPNN). First, the fraction maps of a set of EMs are estimated for the spectral image using an accurate unmixing method. Then spatial statistical features (SSFs) are extracted from both images and a BPNN is trained to learn the relationship between the fractions, the visible bands of the HSR image and the SSFs based on invariant points (IPs) which are assumed to have the same land cover type in both the multispectral and visible images. Using an automatic method for IP extraction, we can also apply our method to images that are not co-registered. An evaluation of the proposed method, is carried out using a real data set with two spectral images acquired by Landsat -8 and Sentine1–2 satellites, and an RGB image available in Google Earth. An experimental testing, with relativity to the sparse unmixing by variable splitting and augmented Lagrangian (SUnSAL), shows that the proposed DFNeFE method obtains fraction maps with a significantly enhanced spatial resolution (SR) and an average mean absolute error (MAE) of ~ 4%
机译:提出了一种新的方法,用于加强终点(EMS)分数的地图。这种新方法被称为DFNeFE(通过神经网络为分数估计数据融合),是基于多光谱图像的融合,具有低空间分辨率(LSR)和可见RGB图像,以高的空间归还(HSR),通过反向传播神经网络(BPNN)。首先,使用精确的解密方法估计一组EMS的分数映射。然后,从两个图像中提取空间统计特征(SSF),训练BPNN以学习分数,HSR图像的可见频带和基于不变点(IPS)的SSF之间的关系,这是假设具有同一土地的不变点(IPS)覆盖类型在多光谱和可见图像中。使用自动的IP提取方法,我们还可以将我们的方法应用于未共同注册的图像。使用具有由Landsat -8和Sentine1-2卫星获取的两个光谱图像的真实数据集进行了对所提出的方法的评估,以及在Google地球中可用的RGB图像。一种实验测试,与可变分裂和增强拉格朗日(日出的Lagrangian(Sunsal)相比,具有相对性的稀疏解密,表明所提出的DFNEFE方法以显着增强的空间分辨率(SR)获得分数图和〜4的平均平均绝对误差(MAE) %

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