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A multi-layer perceptron based non-linear mixture model to estimate class abundance from mixed pixels

机译:基于多层感知器的非线性混合模型,可从混合像素估计类别丰度

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Sub-pixel classification is essential for the successful description of many land cover (LC) features with spatial resolution less than the size of the image pixels. A commonly used approach for sub-pixel classification is linear mixture models (LMM). Even though, LMM have shown acceptable results, pragmatically, linear mixtures do not exist. A non-linear mixture model, therefore, may better describe the resultant mixture spectra for endmember (pure pixel) distribution. In this paper, we propose a new methodology for inferring LC fractions by a process called automatic linear-nonlinear mixture model (AL-NLMM). AL-NLMM is a three step process where the endmembers are first derived from an automated algorithm. These endmembers are used by the LMM in the second step that provides abundance estimation in a linear fashion. Finally, the abundance values along with the training samples representing the actual proportions are fed to multi-layer perceptron (MLP) architecture as input to train the neurons which further refines the abundance estimates to account for the non-linear nature of the mixing classes of interest. AL-NLMM is validated on computer simulated hyperspectral data of 200 bands. Validation of the output showed overall RMSE of 0.0089±0.0022 with LMM and 0.0030±0.0001 with the MLP based AL-NLMM, when compared to actual class proportions indicating that individual class abundances obtained from AL-NLMM are very close to the real observations.
机译:子像素分类对于成功描述许多空间分辨率小于图像像素大小的陆地覆盖(LC)功能至关重要。子像素分类的常用方法是线性混合模型(LMM)。即使LMM已显示出可接受的结果,但实际上,线性混合物并不存在。因此,非线性混合模型可以更好地描述最终成员(纯像素)分布的混合光谱。在本文中,我们提出了一种通过称为自动线性-非线性混合模型(AL-NLMM)的过程来推断LC分数的新方法。 AL-NLMM是一个三步过程,其中端成员首先从自动化算法中得出。 LMM在第二步中使用这些端成员,第二步以线性方式提供丰度估计。最后,将丰度值与代表实际比例的训练样本一起输入到多层感知器(MLP)体系结构中,以作为训练神经元的输入,这进一步完善了丰度估计值,以说明混合类的非线性性质。兴趣。 AL-NLMM在200个波段的计算机模拟高光谱数据上得到了验证。输出结果的验证表明,与实际等级比例相比,LMM的总体RMSE为0.0089±0.0022,而基于MLP的AL-NLMM的总体RMSE为0.0030±0.0001,这表明从AL-NLMM获得的个别等级丰度非常接近实际观察值。

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