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Hyperspectral Image Processing Using Locally Linear Embedding

机译:使用局部线性嵌入的高光谱图像处理

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摘要

We describe a method of processing hyperspectral images of natural scenes that uses a combination of k-means clustering and locally linear embedding (LLE). The primary goal is to assist anomaly detection by preserving spectral uniqueness among the pixels. In order to reduce redundancy among the pixels, adjacent pixels which are spectrally similar are grouped using the k-means clustering algorithm. Representative pixels from each cluster are chosen and passed to the LLE algorithm, where the high dimensional spectral vectors are encoded by a low dimensional mapping. Finally, monochromatic and tri-chromatic images are constructed from the k-means cluster assignments and LLE vector mappings. The method generates images where differences in the original spectra are reflected in differences in the output vector assignments. An additional benefit of mapping to a lower dimensional space is reduced data size. When spectral irregularities are added to a patch of the hyperspectral images, again the method successfully generated color assignments that detected the changes in the spectra.
机译:我们描述了一种处理自然场景的高光谱图像的方法,该方法结合了k均值聚类和局部线性嵌入(LLE)。主要目标是通过保留像素之间的光谱唯一性来协助异常检测。为了减少像素之间的冗余,使用k均值聚类算法对光谱相似的相邻像素进行分组。选择来自每个群集的代表性像素,并将其传递给LLE算法,在该算法中,高维光谱矢量通过低维映射进行编码。最后,从k均值聚类分配和LLE向量映射构建单色和三色图像。该方法生成图像,原始图像中的差异反映在输出矢量分配中的差异中。映射到较低维空间的另一个好处是减少了数据大小。当光谱不规则性被添加到高光谱图像的斑块上时,该方法再次成功生成了可检测光谱变化的颜色分配。

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