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A novel method to estimate the number of endmembers in hyperspectral images based on the virtual dimensionality concept

机译:基于虚拟维数概念的高光谱图像端成员数估计新方法

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This paper presents a modification of the Harsanyi-Farrand-Chang (HFC) method to automatically estimate the number of endmembers of hyperspectral images when assuming a linear mixing model. The proposed unsupervised algorithm dynamically determines the probability of false alarm required as an input of the HFC method, with independence of the amount of noise, spatial dimensions, and/or the real number of endmembers of the hyperspectral image under processing. The Automatic HFC (A-HFC) method has been tested using synthetic and real hyperspectral images, demonstrating in all the cases an equal or superior performance than HFC in terms of precision when computing the number of endmembers. Additionally, for the real image Cuprite, the number of endmembers coincides with the number of endmembers obtained with the HFC method and it is similar to the one given by the hyperspectral subspace identification method (HySime), which definitely confirms the accuracy of the proposed method.
机译:本文提出了一种对Harsanyi-Farrand-Chang(HFC)方法的修改,以在假设线性混合模型时自动估计高光谱图像的末端成员数量。所提出的无监督算法可动态确定作为HFC方法输入所需的虚警概率,而不受噪声量,空间尺寸和/或正在处理的高光谱图像端成员的实际数量的影响。自动HFC(A-HFC)方法已使用合成和真实的高光谱图像进行了测试,在计算端构件数量时,在所有情况下均显示出与HFC相同或更好的性能。此外,对于实像铜矿,端成员数与通过HFC方法获得的端成员数一致,并且与高光谱子空间识别方法(HySime)给出的端成员数相似,这无疑证实了该方法的准确性。 。

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