EI / SCOPUS / CSCD 收录

中文核心期刊

赵翌博, 乔钢, 刘凇佐, 青昕, 李磊. 突发脉冲干扰下的白鲸哨声端点检测方法[J]. 声学学报, 2024, 49(3): 550-559. DOI: 10.12395/0371-0025.2022192
引用本文: 赵翌博, 乔钢, 刘凇佐, 青昕, 李磊. 突发脉冲干扰下的白鲸哨声端点检测方法[J]. 声学学报, 2024, 49(3): 550-559. DOI: 10.12395/0371-0025.2022192
ZHAO Yibo, QIAO Gang, LIU Songzuo, QING Xin, LI Lei. An end-point detection method for beluga whistle signals under burst pulse interferences[J]. ACTA ACUSTICA, 2024, 49(3): 550-559. DOI: 10.12395/0371-0025.2022192
Citation: ZHAO Yibo, QIAO Gang, LIU Songzuo, QING Xin, LI Lei. An end-point detection method for beluga whistle signals under burst pulse interferences[J]. ACTA ACUSTICA, 2024, 49(3): 550-559. DOI: 10.12395/0371-0025.2022192

突发脉冲干扰下的白鲸哨声端点检测方法

An end-point detection method for beluga whistle signals under burst pulse interferences

  • 摘要: 针对圈养条件下大量突发脉冲干扰影响白鲸哨声检测的问题, 提出了一种可调Q因子小波变换(TQWT)结合自适应谱聚类的无监督哨声信号检测方法。对原始信号做高Q因子的小波分解, 并以平均小波系数作为检验统计量完成哨声端点粗检测, 排除静默时间段与低强度脉冲干扰; 在此基础上使用局部密度自适应谱聚类进一步区分哨声与强脉冲干扰, 完成白鲸哨声检测。使用实采的白鲸信号测试该检测器性能并计算其F1分数。该检测器在两段测试信号下分别获得了0.9487和0.9429的F1分数, 且在大数据量情况下明显优于由k-means聚类或传统谱聚类构成的检测器, 具有更高的鲁棒性。

     

    Abstract: Aiming at the problem that the detection accuracy of the beluga whistle is reduced due to a large number of burst pulse interferences under captive conditions, an unsupervised whistle detection method based on the tunable Q-factor wavelet transform (TQWT) and adaptive spectral clustering is proposed. To eliminate the interference of silent time and low intensity pulses, the high Q-factor wavelet decomposition is used to decompose each original signal frame, and the average wavelet coefficient is used as the test statistics of the whistle rough detection. On this basis, local density adaptive spectral clustering is designed for the remaining frames to further distinguish whistles and strong pulse interference for complete beluga whistle detection. The performance of the detector is tested with real signals of beluga whales, and its F1-score is calculated. The results show that the detector achieves F1-score of 0.9487 and 0.9429 under two test signals, which is obviously higher than the detector composed of k-means clustering or traditional spectral clustering in the case of large data, and has higher robustness.

     

/

返回文章
返回