快速扫描谱图用于大数据中生物声学事件的有效识别

A. Truskinger, Mark Cottman-Fields, Daniel M. Johnson, P. Roe
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引用次数: 24

摘要

声传感是一种很有前途的动物生物多样性监测方法。对声学传感器收集的音频进行规模化分析是一个大数据问题。处理大声学数据的标准方法包括自动识别和基于人群的分析。自动方法处理速度快,但难以严格设计,而人工方法精确,但处理速度慢。特别是,声学数据分析的人工方法受到数据和分析人员之间1:1时间关系的限制。这个约束是监听音频数据的内在需求。本文演示了如何通过可视化为频谱图的音频视觉检查,将人群源声音分析的效率提高一个数量级。实验数据表明,在只显示谱图的情况下,对于合适类型的声学分析,可以获得12倍的分析加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rapid Scanning of Spectrograms for Efficient Identification of Bioacoustic Events in Big Data
Acoustic sensing is a promising approach to scaling faunal biodiversity monitoring. Scaling the analysis of audio collected by acoustic sensors is a big data problem. Standard approaches for dealing with big acoustic data include automated recognition and crowd based analysis. Automatic methods are fast at processing but hard to rigorously design, whilst manual methods are accurate but slow at processing. In particular, manual methods of acoustic data analysis are constrained by a 1:1 time relationship between the data and its analysts. This constraint is the inherent need to listen to the audio data. This paper demonstrates how the efficiency of crowd sourced sound analysis can be increased by an order of magnitude through the visual inspection of audio visualized as spectrograms. Experimental data suggests that an analysis speedup of 12× is obtainable for suitable types of acoustic analysis, given that only spectrograms are shown.
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