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Constant coefficients linear prediction for lossless compression of ultraspectral sounder data using a graphics processing unit

机译:使用图形处理单元对超光谱测深仪数据进行无损压缩的恒定系数线性预测

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摘要

The amount of data generated by ultraspectral sounders is so large that considerable savings in data storage and transmission bandwidth can be achieved using data compression. Due to this large amount of data, the data compression time is of utmost importance. Increasing the programmability of the commodity Graphics Processing Units (GPUs) offer potential for considerable increases in computation speeds in applications that are data parallel. In our experiments, we implemented a spectral image data compression method called Linear Prediction with Constant Coefficients (LP-CC) using NVIDIA's CUDA parallel computing architecture. LP-CC compression method represents a current state-of-the-art technique in lossless compression of ultraspectral sounder data. The method showed an average compression ratio of 3.39 when applied to publicly available NASA AIRS data. We achieved a speed-up of 86 compared to a single threaded CPU version. Thus, the commodity GPU was able to significantly decrease the computational time of a compression algorithm based on a constant coefficient linear prediction.
机译:超光谱测深仪生成的数据量如此之大,以至于使用数据压缩可以节省大量的数据存储和传输带宽。由于数据量很大,因此数据压缩时间至关重要。商用图形处理单元(GPU)的可编程性的提高为数据并行应用程序中的计算速度的显着提高提供了潜力。在我们的实验中,我们使用NVIDIA的CUDA并行计算架构实现了一种光谱图像数据压缩方法,称为具有常数系数的线性预测(LP-CC)。 LP-CC压缩方法代表了超光谱测深仪数据的无损压缩的最新技术。当应用于可公开获得的NASA AIRS数据时,该方法的平均压缩率为3.39。与单线程CPU版本相比,我们的速度提高了86。因此,商用GPU能够显着减少基于恒定系数线性预测的压缩算法的计算时间。

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