低复杂度主成分分析在遥感高光谱图像压缩中的实现

Q. Du, Wei Zhu, J. Fowler
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引用次数: 10

摘要

遥感高光谱图像数据量巨大,数据压缩是处理高光谱图像的必要步骤。光谱去相关是高光谱图像成功压缩的关键。主成分分析(PCA)以其优越的数据去相关性能而闻名,并且已经证明,使用PCA进行频谱去相关可以产生率失真和数据分析性能优于其他广泛使用的方法,如离散小波变换(DWT)。然而,PCA是一种依赖于数据的变换,其复杂的硬件实现阻碍了其在实践中的应用。本文讨论了低复杂度主成分分析的方案,包括空间降采样、使用非零均值数据和采用简单的主成分分析神经网络。系统设计问题也进行了调查。对像素值和像素光谱特征保真度的实验结果表明,所提出的方案在压缩性能和系统设计复杂性之间取得了平衡。
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Implementation of Low-Complexity Principal Component Analysis for Remotely Sensed Hyperspectral-Image Compression
Remotely sensed hyperspectral imagery has vast data volume, for which data compression is a necessary processing step. Spectral decorrelation is critical to successful hyperspectral-image compression. Principal component analysis (PCA) is well-known for its superior performance in data decorrelation, and it has been demonstrated that using PCA for spectral decorrelation can yield rate-distortion and data-analysis performance superior to other widely used approaches, such as the discrete wavelet transform (DWT). However, PCA is a data-dependent transform, and its complicated implementation in hardware hinders its use in practice. In this paper, schemes for low-complexity PCA are discussed, including spatial down-sampling, the use of non-zero mean data, and the adoption of a simple PCA neural-network. System-design issues are also investigated. Experimental results focused on the fidelity of pixel values and pixel spectral signatures demonstrate that the proposed schemes achieve a trade-off between compression performance and system-design complexity.
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