首页> 外文会议>2018 IEEE International Work Conference on Bioinspired Intelligence >Parallelization of a Denoising Algorithm for Tonal Bioacoustic Signals Using OpenACC Directives
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Parallelization of a Denoising Algorithm for Tonal Bioacoustic Signals Using OpenACC Directives

机译:使用OpenACC指令对音调生物声信号进行去噪算法的并行化

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摘要

Automatic segmentation and classification methods for bioacoustic signals enable real-time monitoring, population estimation, as well as other important tasks for the conservation, management, and study of wildlife. These methods normally require a filter or a denoising strategy to enhance relevant information in the input signal and avoid false positive detections. This denoising stage is usually the performance bottleneck of such methods. In this paper, we parallelize a denoising algorithm for tonal bioacoustic signals using mainly OpenACC directives. The implemented program was executed in both multicore and GPU architectures. The proposed parallelized algorithm achieves a higher speedup on GPU than CPU, leading to a 10.67 speedup compared to the original sequential algorithm in C++.
机译:生物声信号的自动分段和分类方法可实现实时监控,种群估计以及野生生物保护,管理和研究的其他重要任务。这些方法通常需要滤波器或去噪策略,以增强输入信号中的相关信息并避免误报。该降噪阶段通常是此类方法的性能瓶颈。在本文中,我们主要使用OpenACC指令并行处理音调生物声信号的去噪算法。已实现的程序在多核和GPU架构中均执行。所提出的并行算法在GPU上的加速比在CPU上更高,与C ++中的原始顺序算法相比,可提高10.67的加速。

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