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Peak Finding Algorithm to Improve Syllable Segmentation for Noisy Bioacoustic Sound Signal

机译:峰值发现算法可改善嘈杂的生物声信号的音节分割

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Automated identification of animals based their acoustic sound is now preferable by biologist in assisting them to identify animal species for environmental monitoring work. This approach is gradually replacing manual techniques that claimed to be costly and time-consuming. However, it is a challenging task to execute the automated system when the environment is in noisy condition especially in the presence of non-stationary noises such as insect sounds or multiple animal sounds from different species. In this paper, a combination of enhanced start and end point detection namely short time energy (STE) and short time average zero crossing rates (STAZCR) is proposed to improve the syllable segmentation. In this approach, a novel peak finding algorithm is integrated to iteratively narrow down the numbers of local minima and maxima in order to determine the true local maximum value. In this study, the bioacoustics sound samples from frog call database, consists of six hundred and seventy-five frog call data from 15 frog species, recorded in forests located in Kulim and Baling, Malaysia are used. The experimental results demonstrate that 94.13% of performance is achieved by using the proposed method i.e. combination of STE and STAZCR compared to 81.6% of performance for the baseline method, i.e. the combination of the energy and ZCR.
机译:现在,生物学家更喜欢根据动物的声音自动识别动物,以帮助它们识别环境监测工作所需的动物物种。这种方法正在逐步取代声称昂贵且费时的手动技术。但是,当环境处于嘈杂状态时,尤其是在存在非平稳噪声(例如昆虫声或来自不同物种的多种动物声)的情况下,执行自动化系统是一项艰巨的任务。本文提出结合增强的起点和终点检测功能,即短时能量(STE)和短时平均零交叉率(STAZCR)来改善音节分割。在这种方法中,集成了一种新颖的峰值发现算法,以迭代地缩小局部最小值和最大值的数量,以便确定真正的局部最大值。在这项研究中,使用了来自蛙叫数据库的生物声学声音样本,该数据库包括来自马来西亚居林和巴陵森林中记录的来自15种蛙类的675个蛙叫数据。实验结果表明,通过使用所提出的方法(即STE和STAZCR的组合)可以实现94.13%的性能,而相比之下,基线方法(即能量和ZCR的组合)可以达到81.6%的性能。

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