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Sparse representations for online-learning-based hyperspectral image compression

机译:基于在线学习的高光谱图像压缩的稀疏表示

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摘要

Sparse models provide data representations in the fewest possible number of nonzero elements. This inherent characteristic enables sparse models to be utilized for data compression purposes. Hyperspectral data is large in size. In this paper, a framework for sparsity-based hyperspectral image compression methods using online learning is proposed. There are various sparse optimization models. A comparative analysis of sparse representations in terms of their hyperspectral image compression performance is presented. For this purpose, online-learning-based hyperspectral image compression methods are proposed using four different sparse representations. Results indicate that, independent of the sparsity models, online-learning-based hyperspectral data compression schemes yield the best compression performances for data rates of 0.1 and 0.3 bits per sample, compared to other state-of-the-art hyperspectral data compression techniques, in terms of image quality measured as average peak signal-to-noise ratio. (c) 2015 Optical Society of America
机译:稀疏模型以最少数量的非零元素提供数据表示。这种固有的特性使稀疏模型可以用于数据压缩。高光谱数据量很大。本文提出了一种基于稀疏性的在线学习高光谱图像压缩方法框架。有各种稀疏的优化模型。对稀疏表示的高光谱图像压缩性能进行了比较分析。为此,提出了使用四种不同的稀疏表示形式的基于在线学习的高光谱图像压缩方法。结果表明,与其他先进的高光谱数据压缩技术相比,基于稀疏模型的基于在线学习的高光谱数据压缩方案在每个样本0.1和0.3位的数据速率下可获得最佳的压缩性能,以平均峰值信噪比衡量的图像质量而言。 (c)2015年美国眼镜学会

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