Multiscale windowed denoising and segmentation of hyperspectral images

G. Bilgin, S. Erturk, T. Yıldırım
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引用次数: 3

Abstract

This paper presents the effects of multiscale windowed denoising of spectral signatures before segmentation of hyperspectral images. In the proposed denoising approach it is intended to exploit both spectral and spatial information of the hyperspectral images by using wavelets and principal component analysis. The windowed structure incorporated for this method exploits spatial information by making use of possibly highly correlated pixels. In addition to the proposed method, the segmented PCA is also investigated and compared in the experimental results with a proper modification. In the segmentation process, the K-means and fuzzy-ART algorithms are used. Especially fuzzy-ART is a fast learning network and can be used in high dimensional and high volume data such as hyperspectral images. In the experiments it has been shown that multiscale windowed principal component denoising has positive effects on the segmentation/clustering level.
高光谱图像的多尺度加窗去噪与分割
研究了高光谱图像分割前对光谱特征进行多尺度加窗去噪的效果。在该方法中,利用小波和主成分分析方法同时利用高光谱图像的光谱和空间信息。该方法采用的窗口结构通过利用可能高度相关的像素来利用空间信息。除了本文提出的方法外,本文还对经过适当修正的主成分分析进行了研究,并对实验结果进行了比较。在分割过程中,使用了K-means和fuzzy-ART算法。特别是fuzzy-ART是一种快速学习网络,可用于高维、高光谱图像等大容量数据。实验表明,多尺度加窗主成分去噪对分割/聚类水平有积极的影响。
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