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Fast wavelet-based algorithms for multiresolutional decomposition and feature extraction of hyperspectral signatures

机译:基于小波的快速算法用于高光谱特征的多分辨率分解和特征提取

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Abstract: Spectral features are often extracted from multispectral/hyperspectral data using a multiresolutional decomposition known as the spectral fingerprint. While the spectral fingerprint method has proven to be quite powerful, it has also shown several shortcomings: (1) its implementation requires multiple convolutions with Laplacian-of-Gaussian filters which are computationally expensive, (2) it requires a truncation of the filter impulse response which can cause spurious errors, and (3) it provides information about the sizes and areas of radiance features but not the shapes. It is proposed that a wavelet- based spectral fingerprint can overcome these shortcomings while maintaining the advantages of the traditional method. In this study, we investigate the use of the wavelet transform modulus-maximus method to generate a wavelet-based spectral fingerprint. The computation of the wavelet-based fingerprint is based on recent fast wavelet algorithms. The analyses consists of two parts: (1) the computational expense of the new method is compared with the computational costs of current methods, and (2) the outputs of the wavelet-based methods are compared with those of current methods to determine any practical differences in the resulting spectral fingerprints.!9
机译:摘要:通常使用称为光谱指纹的多分辨率分解从多光谱/高光谱数据中提取光谱特征。尽管频谱指纹方法已被证明是非常强大的,但它也显示出一些缺点:(1)其实现需要使用Laplacian-of-Gaussian滤波器进行多次卷积,这在计算上是昂贵的;(2)它需要截断滤波器脉冲(3)它提供有关辐射特征的大小和面积的信息,但不提供有关形状的信息。提出基于小波的频谱指纹可以克服这些缺点,同时保持传统方法的优点。在这项研究中,我们调查使用小波变换模量最大值方法来生成基于小波的光谱指纹。基于小波的指纹的计算基于最近的快速小波算法。分析包括两个部分:(1)将新方法的计算成本与当前方法的计算成本进行比较,(2)将基于小波的方法的输出与当前方法的输出进行比较,以确定是否可行光谱指纹图谱之间的差异!! 9

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