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Unsupervised classification-based hyperspectral data processing: lossy compression

机译:基于无监督分类的高光谱数据处理:有损压缩

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摘要

The existing lossy compression algorithms play an important role in reducing the cost of storage equipment and bandwidth for hyperspectral (HS) application. However, none of the lossy compression algorithms considers the real-time classification of HS data. In this paper, we present a new lossy compression method for HS data that aims to optimally compress in both spatial and spectral domains and simultaneously maximize classification performance. For this target, Harsanyi-Farrand-Chang (HFC) and k-means++algorithms are applied to achieve a spectral library and an index matrix for HS image. Spectral angle mapping and Euclidean distance are used to update the spectral library and the index matrix. The experiment results indicate that the proposed method has a good classification performance. The results also reveal that the proposed method works well in real-time classification and compression of HS data with a large volume and achieves a high compression ratio. It is noteworthy to mention that the superiority of our method in compression becomes more apparent as the volume of HS data grows. Consequently, the proposed method has a strong advantage in HS applications that require both compression and classification.
机译:现有的有损压缩算法在降低存储设备成本和高光谱(HS)应用带宽方面起着重要作用。但是,有损压缩算法都没有考虑HS数据的实时分类。在本文中,我们提出了一种用于HS数据的新有损压缩方法,旨在在空间和频谱域中进行最佳压缩,同时最大化分类性能。对于此目标,应用Harsanyi-Farrand-Chang(HFC)和k-means ++算法来获得用于HS图像的光谱库和索引矩阵。光谱角度映射和欧几里得距离用于更新光谱库和索引矩阵。实验结果表明,该方法具有良好的分类性能。结果还表明,该方法在大数据量HS数据的实时分类和压缩中效果很好,并且压缩率较高。值得一提的是,随着HS数据量的增加,我们的压缩方法的优势变得更加明显。因此,提出的方法在需要压缩和分类的HS应用中具有强大的优势。

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