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A hidden Markov model with selective time domain feature extraction to detect inshore Bryde's whale short pulse calls

机译:具有选择性时域特征提取的隐马尔可夫模型,以检测inshore Bryde的鲸鱼短脉冲呼叫

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摘要

An Increase in the study of cetaceans' sounds has motivated the development of different automated sound detection and classification techniques. Passive acoustic monitoring (PAM) is extensively used to study these cetaceans' sounds over a period to understand their daily activities within their ecosystem. Using PAM, the gathered sound datasets are usually large and impractical to manually analyse and detect. Thus, hidden Markov models (HMM) is one of the popular tools used to automatically detect and classify these cetaceans' sounds. Nonetheless, HMM rely heavily on the employed feature extraction method such as Mel-scale frequency cepstral coefficients (MFCC) and linear predictive coding (LPC). In most cases, the more reliable the extracted feature vector from the known sound label, the higher the sensitivity of the HMM. Although these aforementioned feature extraction methods are widely used, their design is based on filters and requires windowing, fast Fourier transforms (FFT), and logarithm operations. Consequently, this increases the computational time complexity of the HMM. Here, we describe a selective time domain feature extraction method that can be easily adapted with the HMM. This proposed feature extraction method uses a combination of some simple but robust parameters such as the mean, relative amplitude and relative power/energy (MAP), which are selected based on empirical observations of the call to be detected. The performance of this proposed MAP-HMM was verified using the acoustic dataset of continuous recordings of an inshore Bryde's whale (Balaenoptera) short pulse calls collected in a single site in False bay, South-West of South Africa. Aside from exhibiting a low computational complexity, the proposed MAP-HMM offers superior sensitivity and false discovery rate performances in comparison to the LPCHMM and MFCC-HMM.
机译:鲸类的声音研究的增加有动力发展不同的自动化声音检测和分类技术。被动声学监测(PAM)广泛用于研究这些鲸类的声音,以了解其生态系统内的日常活动。使用PAM,收集的声音数据集通常大而不切实际,无法手动分析和检测。因此,隐藏的马尔可夫模型(HMM)是用于自动检测和分类这些鲸类的声音的流行工具之一。尽管如此,HMM严重依赖于所采用的特征提取方法,例如MEL-级谱系谱系数(MFCC)和线性预测编码(LPC)。在大多数情况下,从已知的声音标签中提取的特征向量越可靠,HMM的灵敏度越高。尽管这些上述特征提取方法被广泛使用,但它们的设计基于过滤器,需要窗口,快速傅里叶变换(FFT)和对数操作。因此,这增加了HMM的计算时间复杂性。这里,我们描述了一种选择性时域特征提取方法,其可以容易地适应嗯。该提出的特征提取方法使用一些简单但坚固的参数的组合,例如基于要检测的呼叫的经验观察选择的平均值,相对幅度和相对功率/能量(MAP)。使用南非南部南部的单个站点中收集的inshore Bryde鲸鱼(Balaenoptera)短脉冲呼叫的连续记录的声学数据集进行了验证了这一提出的地图-HMM的性能。除了表现出低计算复杂性之外,拟议的地图 - HMM与LPCHMM和MFCC-HMM相比,提供了卓越的敏感性和假发现率性能。

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