改进基于变换的HPC数据有损压缩的率失真性能研究

Jialing Zhang, Aekyeung Moon, Xiaoyan Zhuo, S. Son
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引用次数: 8

摘要

随着高性能计算(HPC)应用程序产生的数据大小和数量呈指数级增长,有效的数据缩减技术对于减轻时间和空间负担变得至关重要。有损压缩技术已广泛应用于图像和视频压缩,有望满足这种数据缩减需求。然而,由于难以量化信息丢失量和数据缩减量,在HPC数据集中很少采用。在本文中,我们通过回顾HPC数据集上离散变换的能量压缩特性来探索有损压缩策略。具体来说,我们将基于块的变换应用于HPC数据集,获得包含最大能量(或信息)压缩率的最小数量的系数,并使用分箱机制量化剩余的非主导系数,以最小化在失真度量中表示的信息损失。我们实现了所提出的方法,并使用六个真实的HPC数据集对其进行了评估。我们的实验结果表明,在我们评估的数据集上,平均只需要6.67比特来保持最佳的能量压缩率。此外,我们的膝盖检测算法在峰值信噪比方面平均改善了2.46 dB的失真。
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Towards Improving Rate-Distortion Performance of Transform-Based Lossy Compression for HPC Datasets
As the size and amount of data produced by high-performance computing (HPC) applications grow exponentially, an effective data reduction technique is becoming critical to mitigating time and space burden. Lossy compression techniques, which have been widely used in image and video compression, hold promise to fulfill such data reduction need. However, they are seldom adopted in HPC datasets because of their difficulty in quantifying the amount of information loss and data reduction. In this paper, we explore a lossy compression strategy by revisiting the energy compaction properties of discrete transforms on HPC datasets. Specifically, we apply block-based transforms to HPC datasets, obtain the minimum number of coefficients containing the maximum energy (or information) compaction rate, and quantize remaining non-dominant coefficients using a binning mechanism to minimize information loss expressed in a distortion measure. We implement the proposed approach and evaluate it using six real-world HPC datasets. Our experimental results show that, on average, only 6.67 bits are required to preserve an optimal energy compaction rate on our evaluated datasets. Moreover, our knee detection algorithm improves the distortion in terms of peak signal-to-noise ratio by 2.46 dB on average.
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