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CS-Based Secured Big Data Processing on FPGA

机译:FPGA上基于CS的安全大数据处理

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摘要

The four V's in Big data sets, Volume, Velocity, Variety, and Veracity, provides challenges in many different aspects of real-time systems. Out of these areas securing big data sets, reduction in processing time and communication bandwidth are of utmost importance. In this paper we adopt Compressive Sensing (CS) based framework to address all three issues. We implement compressive Sensing using Deterministic Random Matrix (DRM) on Artix-7 FPGA, and CS reconstruction using Orthogonal Matching Pursuit (OMP) algorithm on Virtex-7 FPGA. The results show that our implementations for CS sampling and reconstruction are 183x and 2.7x respectively faster when compared to previously published work. We also perform case study of two different applications i.e. multi-channel Seizure Detection and Image processing to demonstrate the efficiency of our proposed CS-based framework. CS-based framework allows us to reduce communication transfers up to 75% while achieving satisfactory range of quality. The results show that our proposed framework is 290x faster and has 7.9x less resource utilization as compared to previously published AES based encryption.
机译:大数据集中的四个V(体积,速度,多样性和准确性)给实时系统的许多不同方面带来了挑战。在保护大数据集的这些领域中,减少处理时间和通信带宽至关重要。在本文中,我们采用基于压缩感知(CS)的框架来解决所有这三个问题。我们在Artix-7 FPGA上使用确定性随机矩阵(DRM)实现压缩感测,并在Virtex-7 FPGA上使用正交匹配追踪(OMP)算法实现CS重构。结果表明,与以前发表的工作相比,我们用于CS采样和重构的实现分别快183x和2.7x。我们还将对两种不同的应用进行案例研究,即多通道癫痫发作检测和图像处理,以证明我们提出的基于CS的框架的效率。基于CS的框架使我们能够将通信传输减少多达75%,同时达到令人满意的质量范围。结果表明,与以前发布的基于AES的加密相比,我们提出的框架速度提高了290倍,资源利用率降低了7.9倍。

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