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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Gaussian mixture discriminant analysis and sub-pixel land cover characterization in remote sensing
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Gaussian mixture discriminant analysis and sub-pixel land cover characterization in remote sensing

机译:高斯混合判别分析和亚像素土地覆盖特征的遥感

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摘要

Mixture analysis is a necessary component for capturing sub-pixel heterogeneity in the characterization of land cover from remotely sensed images. Mixture analysis approaches in remote sensing vary from conventional linear mixture models to nonlinear neural network mixture models. Linear mixture models are fairly simple and generally result in poor mixture analysis accuracy. Neural network models can achieve much higher accuracy, but typically lack interpretability. In this paper we present a mixture discriminant analysis (MDA) model for inferring land cover fractions within forest stands from Landsat Thematic Mapper images. Specifically, individual class distributions are modeled as mixtures of subclasses of Gaussian distributions, and land cover fractions are estimated using the corresponding posterior probabilities. Compared to a benchmark study on accuracy of mixture models with Plumas National Forest data, this MDA model easily outperforms traditional linear mixture models and parallels the performance of the ARTMAP neural network mixture model. In other words, the MDA model is observed to successfully combine the performance characteristics of more complex neural network models (due to the nonlinear nature of its classification rules), with the ease of interpretation associated with linear mixture models (due to its relatively simple structure). MDA models therefore offer an attractive alternative for addressing the mixture-modeling problem in remote sensing.
机译:混合分析是捕获遥感图像中土地覆盖特征时捕获亚像素异质性的必要组件。遥感中的混合分析方法从传统的线性混合模型到非线性神经网络混合模型不等。线性混合物模型非常简单,通常导致较差的混合物分析准确性。神经网络模型可以实现更高的准确性,但是通常缺乏可解释性。在本文中,我们提出了一种混合判别分析(MDA)模型,用于从Landsat Thematic Mapper图像中推断林分中的土地覆盖率。具体来说,将各个类别的分布建模为高斯分布的子类别的混合,并使用相应的后验概率来估算土地覆盖率。与使用Plumas国家森林数据进行的混合模型准确性的基准研究相比,该MDA模型可以轻松胜过传统的线性混合模型,并具有ARTMAP神经网络混合模型的性能。换句话说,观察到MDA模型成功地结合了更复杂的神经网络模型的性能特征(由于其分类规则的非线性性质),并且易于解释与线性混合模型关联的结果(由于其相对简单的结构) )。因此,MDA模型为解决遥感中的混合模型问题提供了一种有吸引力的选择。

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