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Adaptive estimation of component proportion in a pixel of a multispectral image

机译:多光谱图像像素中组分比例的自适应估计

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Spectral unmixing is a method by which to estimate the proportion of each component in a pixel using multispectral data. In conventional analysis of remotely sensed images, each pixel is classified into a single object category. However, the actual land surface corresponding to a pixel does not necessarily consist of only one category of objects. Therefore, estimating the proportion of components that exist in a pixel is often useful. The most commonly used method of spectral unmixing assumes that the component spectra are determined from training data. However, available training data do not always correctly represent the spectral characteristics of the categories within the objective area. In such cases, large errors may appear in the results of unmixing. We propose herein the adaptive spectral unmixing method, which estimates suitable component spectra from the actual observed data and thus requires no training data. By adaptively estimating the component spectra from the set of observed data in the objective area, we can correctly estimate the proportion of components even if the spectral characteristics change with the location of objective area. In the proposed method, the spectral reflectance of pixels is expressed by vectors in multidimensional space, which can be written as linear combinations of component spectra weighted according to component proportion. We determine the component spectra by finding the minimum volume of simplex containing all of the reflectance vectors, where the vertexes of the simplex correspond to the component spectra. We estimated the degree of errors by numerical simulation and compared the performance of the proposed adaptive method and that of the conventional method. We confirmed that the proposed method of adaptive unmixing provides better results than the conventional method when the spectral characteristics change with the location of the objective area.
机译:光谱解密是一种方法,用于估计使用多光谱数据在像素中的每个组件的比例。在传统的远程感测图像分析中,每个像素被分类为单个对象类别。然而,对应于像素的实际陆地表面不一定由一个类别组成。因此,估计像素中存在的组分的比例通常是有用的。最常用的光谱解密方法假设从训练数据确定分量谱。但是,可用的培训数据并不总是正确代表客观区域内的类别的光谱特性。在这种情况下,解密的结果可能出现大错误。我们提出了自适应光谱解密方法,其估计来自实际观察数据的合适的组分谱,因此不需要培训数据。通过自适应地从目标区域中观察到的数据集中估计分量谱,即使光谱特性随目标区域的位置而改变,我们也可以正确估计部件的比例。在所提出的方法中,像素的光谱反射率由多维空间中的载体表示,该载体可以被写入根据组分比例加权的组分谱的线性组合。我们通过找到包含所有反射率向量的最小单位的最小音量来确定组件光谱,其中单位的顶点对应于组件谱。我们通过数值模拟估计了误差程度,并比较了所提出的自适应方法的性能和传统方法的性能。我们证实,当光谱特性随目标区域的位置时,所提出的自适应解密方法提供比传统方法更好的结果。

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