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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >A BOI-Preserving-Based Compression Method for Hyperspectral Images
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A BOI-Preserving-Based Compression Method for Hyperspectral Images

机译:基于BOI保留的高光谱图像压缩方法

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摘要

Hyperspectral images (HSI) regularly contain hundreds of bands, which are of different importance in the application. Most HSI compression methods usually deal with most bands in the same way, and they do not take the difference of different bands into consideration, which may cause the loss of important spectral information. In order to preserve the spectral information of interest for applications, a new band-of-interest (BOI)-preserving-based HSI compression method is proposed. The conception of BOI is proposed because some bands are significant in the specific applications, and BOI selection methods are chosen according to application requirements. BOI selection is first performed according to application measurements. Then, BOI information is fed into recursive bidirection prediction (RBP) and set partition in hierarchical trees (SPIHT) compression scheme which uses RBP for spectral decorrelation followed by SPIHT algorithm for coding the resulting decorrelated residual images. More bits are allocated to BOI to preserve BOI by two approaches, respectively. Compress BOI and non-BOI bands directly with low distortion and high distortion, respectively, and compress all bands with low distortion and perform a postcompression truncation. Experiments are implemented with different settings using AVIRIS images. Results indicate that the proposed two methods both can achieve excellent compression efficiency and reconstructed quality. In addition, they can improve the application effect in both material classification and target recognition. Compared with non-BOI compression algorithm, at the compression ratio of 80, the proposed methods improve the classification accuracy by 2% and target recognition accuracy by 9%.
机译:高光谱图像(HSI)通常包含数百个波段,这些波段在应用程序中具有不同的重要性。大多数HSI压缩方法通常以相同的方式处理大多数频带,并且它们没有考虑不同频带的差异,这可能会导致重要频谱信息的丢失。为了保留感兴趣的频谱信息以供应用,提出了一种新的基于保留利益带(BOI)的HSI压缩方法。之所以提出BOI的概念,是因为某些频段在特定应用中很重要,并且BOI选择方法是根据应用要求选择的。 BOI选择首先根据应用程序测量进行。然后,将BOI信息馈入递归双向预测(RBP)并在分层树中设置分区(SPIHT)压缩方案,该方案使用RBP进行频谱去相关,然后使用SPIHT算法对所得的去相关残差图像进行编码。分别通过两种方法将更多的位分配给BOI以保留BOI。直接分别以低失真和高失真直接压缩BOI和非BOI频段,并以低失真压缩所有频段并执行压缩后截断。使用AVIRIS图像以不同的设置实施实验。结果表明,所提出的两种方法都可以实现优异的压缩效率和重建质量。另外,它们可以提高材料分类和目标识别的应用效果。与非BOI压缩算法相比,该方法在80的压缩率下,分类精度提高了2%,目标识别精度提高了9%。

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