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Multiscale local covariance based feature extraction for segmantation of hyperspectral images

机译:基于多尺度局部协方差的特征提取用于高光谱图像分割

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In this work, multiscale local covariance matrices are proposed in the feature extraction step of unsupervised segmentation of the hyperspectral images. Producing groundtruth information for hyperspectral images is very expensive and time consuming process. For this reason, segmentation without label information brings an important advantage for easier analysis of the hyperspectral images. Proposed approach integrates the multiscale principal component analysis and modified local covariance matrices methods in feature extraction phase. To take advantage of employing both spatial and spectral information together, sub-cubes are extracted with a windowed structure for each pixel in the hyperspectral scene. Positive effects of the proposed approach on the segmentation accuracies are proven with the comparative experiments.
机译:在这项工作中,在高光谱图像无监督分割的特征提取步骤中提出了多尺度局部协方差矩阵。为高光谱图像生成地面信息非常昂贵且耗时。由于这个原因,没有标签信息的分割带来了重要的优势,可以更轻松地分析高光谱图像。提出的方法在特征提取阶段将多尺度主成分分析和改进的局部协方差矩阵方法相结合。为了同时利用空间信息和光谱信息,针对高光谱场景中的每个像素使用窗口结构提取子立方体。对比实验证明了该方法对分割精度的积极影响。

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