基于CUDA的数字滤波器组实现及信号分类

D. Klionskiy, D. Kaplun, A. S. Voznesenskiy, V. V. Gulvanskiy, M. Kupriyanov
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引用次数: 1

摘要

本文讨论了无线电监测任务及其使用dft调制滤波器组的解决方案。在中央处理器(CPU)和计算统一设备架构(CUDA)的基础上,利用图形处理器(GPU)研究了滤波器组的软硬件实现。实验结果表明,CUDA技术在处理大型数据集方面是有效的,并且优于CPU上的计算结果。本文还考虑了使用二叉树和迭代AdaBoost技术对不同信噪比的信号进行实时分类。实验表明,对于无线电监测任务中处理的信号,可以达到10%的总分类误差。
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Digital filter bank implementation and signal classification on the basis of CUDA
The present paper discusses radio monitoring tasks and their solution using DFT-modulated filter banks. Filter bank software-hardware implementations are studied on the basis of Central Processing Unit (CPU) and Compute Unified Device Architecture (CUDA) with the use of Graphics Processing Unit (GPU). It is shown that CUDA technology is efficient for processing large datasets and outperforms computational results on CPU. The paper also considers signal classification in real time for different signal-to-noise ratios using a binary tree together with the iterative AdaBoost technique. Experiments show that it is possible to reach the total classification error of 10% for signals handled in radio monitoring tasks.
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