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Simultaneous spectral/spatial detection of edges for hyperspectral imagery: the HySPADE algorithm revisited

机译:高光谱图像边缘的同时谱/空间检测:重新审视HYSPADE算法

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The hyperspectral/spatial detection of edges (HySPADE) algorithm, originally published in 2004 [1], has been modified and applied to a wider diversity of hyperspectral imagery (HSI) data. As originally described in [1], HySPADE operates by converting the naturally two-dimensional edge detection process based on traditional image analysis methods into a series of one-dimensional edge detections based on spectral angle. The HySPADE algorithm: i) utilizes spectral signature information to identify edges; ii) requires only the spectral information of the HSI scene data and does not require a spectral library nor spectral matching against a library; iii) facilitates simultaneous use of all spectral information; iv) does not require endmember or training data selection; v) generates multiple, independent data points for statistical analysis of detected edges; vi) is robust in the presence of noise; and vii) may be applied to radiance, reflectance, and emissivity data--though it is applied to radiance and reflectance spectra (and their principal components transformation) in this report. HySPADE has recently been modified to use Euclidean distance values as an alternative to spectral angle. It has also been modified to use an N x N-pixel sliding window in contrast to the 2004 version which operated only on spatial subset image chips. HySPADE results are compared to those obtained using traditional (Roberts and Sobel) edge-detection methods. Spectral angle and Euclidean distance HySPADE results are superior to those obtained using the traditional edge detection methods; the best results are obtained by applying HySPADE to the first few, information-containing bands of principal components transformed data (both radiance and reflectance). However, in practice, both the Euclidean distance and spectral angle versions of HySPADE should be applied and their results compared. HySPADE results are shown; extensions of the HySPADE concept are discussed as are applications for HySPADE in HSI analysis and exploitation.
机译:已经修改并应用于2004 [1]的边缘(HYSPADE)算法的高光谱/空间检测,并应用于高光谱图像(HSI)数据的更广泛的多样性。如[1]中最初描述的,Hyspade通过基于传统图像分析方法转换为基于光谱角的一系列一维边缘检测来通过转换自然二维边缘检测处理来操作。 HYSPADE算法:i)利用光谱特征信息来识别边缘; ii)仅需要HSI场景数据的光谱信息,并且不需要对库的光谱库也不需要光谱匹配; III)促进同时使用所有光谱信息; iv)不需要终止或培训数据选择; v)为检测到的边缘产生多个独立的数据点以进行统计分析; VI)在存在噪音的情况下是强大的;和VII)可以应用于辐射,反射率和发射率数据 - 尽管它应用于本报告中的辐射和反射光谱(及其主要成分转换)。最近被修改为使用欧几里德距离值作为频谱角度的替代方案。它还被修改为使用N X N像素滑动窗口,其与仅在空间子集图像芯片上操作的2004版本。将Hyspade结果与使用传统(Roberts和Sobel)边缘检测方法进行比较。光谱角度和欧几里德距离Hyspade结果优于使用传统边缘检测方法获得的结果;通过将HYSPADE应用于第一个少数几个主件组件的主组件(辐射和反射率)来获得最佳结果。然而,在实践中,应该应用Hyspade的欧几里德距离和光谱角度版本,并且它们的结果比较。显示Hyspade结果; HYSPADE概念的扩展是HYSPADE在HSI分析和开发中的应用。

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