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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Using spectral Geodesic and spatial Euclidean weights of neighbourhood pixels for hyperspectral Endmember Extraction preprocessing
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Using spectral Geodesic and spatial Euclidean weights of neighbourhood pixels for hyperspectral Endmember Extraction preprocessing

机译:使用邻域像素的测地线和空间欧几里得权重进行高光谱端元提取预处理

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摘要

Spectral Mixture Analysis is one of the fundamental subjects encountered when dealing with remotely sensed hyperspectral images. Its goal is to identify constituent elements of mixed-pixels called Endmembers (EMs) and their associated abundance maps. In this paper, a novel Geodesic and Euclidean distances-based preprocessing (GEPP) is addressed which is coupled with the classical spectral-based EM Extraction algorithms (EEs). It combines both spatial and spectral information utilizing two approaches with the purpose of searching for spectrally pure and spatially homogenous pixels that may be identified as the EM candidates in subsequent EEs. GEPP reduces EE processing time by introducing a new correlation coefficient similarity function (CCSF) on the spectrally pure and spatially homogenous pixels pick up with the help of spectral weighting computations, unsupervised Fuzzy C-means (FCM) clustering algorithm and a spatial neighbourhood system using Markov Random Field (MRF) so that processing a large amount of mixed and heterogeneous pixels developed by EEs is avoided. Moreover, CCSF exploits the spatial Euclidean and novel spectral Geodesic weights to compute the final mean vector which is able to improve recognition of spatially homogenous regions that are highly spectrally correlated such that it leads to better results of unmixing accuracy. According to experimental results on three synthetic and four real hyperspectral scenes, hyperspectral unmixing outcomes are relatively improved in terms of SAD and RMSE-based error metrics and higher computation speed can be realized by our proposal in comparison with the state-of-the-art techniques.
机译:光谱混合分析是处理遥感高光谱图像时遇到的基本主题之一。它的目标是识别称为“端成员(EM)”的混合像素的组成元素及其关联的丰度图。在本文中,提出了一种新颖的基于测地和欧几里德距离的预处理(GEPP),并结合了基于经典谱的EM提取算法(EE)。它使用两种方法结合了空间信息和光谱信息,目的是搜索在以后的EE中可能被识别为EM候选者的光谱纯和空间均匀的像素。 GEPP通过借助光谱加权计算,无监督的模糊C均值(FCM)聚类算法和使用了空间邻域系统的光谱纯净和空间均质像素引入新的相关系数相似度函数(CCSF)来减少EE处理时间马尔可夫随机场(MRF),从而避免了处理由EE产生的大量混合像素和异构像素。此外,CCSF利用空间欧几里得和新颖的光谱测地线权重来计算最终的均值向量,从而能够提高对光谱上高度相关的空间均匀区域的识别,从而带来更好的解混精度结果。根据在三个合成和四个真实高光谱场景上的实验结果,就基于SAD和RMSE的误差度量而言,高光谱解混结果得到了相对改善,并且与最新技术相比,我们的建议可以实现更高的计算速度技术。

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