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Randomized methods in lossless compression of hyperspectral data

机译:高光谱数据无损压缩的随机方法

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摘要

We evaluate recently developed randomized matrix decomposition methods for fast lossless compression and reconstruction of hyperspectral imaging (HSI) data. The simple random projection methods have been shown to be effective for lossy compression without severely affecting the performance of object identification and classification. We build upon these methods to develop a new double-random projection method that may enable security in data transmission of compressed data. For HSI data, the distribution of elements in the resulting residual matrix, i.e., the original data subtracted by its low-rank representation, exhibits a low entropy relative to the original data that favors high-compression ratio. We show both theoretically and empirically that randomized methods combined with residual-coding algorithms can lead to effective lossless compression of HSI data. We conduct numerical tests on real large-scale HSI data that shows promise in this case. In addition, we show that randomized techniques can be applicable for encoding on resource-constrained on-board sensor systems, where the core matrix-vector multiplications can be easily implemented on computing platforms such as graphic processing units or field-programmable gate arrays.
机译:我们评估了最近开发的用于快速无损压缩和重建高光谱成像(HSI)数据的随机矩阵分解方法。简单的随机投影方法已显示出对有损压缩有效,而不会严重影响对象识别和分类的性能。我们基于这些方法来开发一种新的双随机投影方法,该方法可以确保压缩数据的数据传输的安全性。对于HSI数据,元素在所得残差矩阵中的分布,即原始数据减去其低秩表示,相对于有利于高压缩率的原始数据表现出较低的熵。我们在理论和经验上都表明,随机方法与残差编码算法相结合可以有效地对HSI数据进行无损压缩。我们对真实的大规模HSI数据进行了数值测试,在这种情况下显示了希望。此外,我们证明了随机化技术可适用于资源受限的车载传感器系统上的编码,其中核心矩阵矢量乘法可在诸如图形处理单元或现场可编程门阵列之类的计算平台上轻松实现。

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