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The Application of the Acoustic Complexity Indices (ACI) to Ecoacoustic Event Detection and Identification (EEDI) Modeling

机译:声学复杂度指标(ACI)在生态声事件检测与识别(EEDI)建模中的应用

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摘要

In programs of acoustic survey, the amount of data collected and the lack of automatic routines for their classification and interpretation can represent a serious obstacle to achieving quick results. To overcome these obstacles, we are proposing an ecosemiotic model of data mining, ecoacoustic event detection and identification (EEDI), that uses a combination of the acoustic complexity indices (ACIt(f), ACIf(t), and ACIf(te)) and automatically extracts the ecoacoustic events of interest from the sound files. These events may be indicators of environmental functioning at the scale of individual vocal species (e. g., behavior, phenology, and dynamics), the acoustic community (e. g., dawn and dusk chorus), the sound marks (e. g., the flag species of a community), or the soundscape (e. g., sonotope types). The EEDI model is represented by three procedural steps: 1) selecting acoustic data according to environmental variables, 2) detecting the events by creating an ecoacoustic event space (EES) produced by plotting ACIft and its evenness (ACIfte), 3) identifying events according to the level of correlation between the acoustic signature (ACItf) of the detected events and an ad hoc library of previously identified events. The EEDI procedure can be extensively used in basic and applied research. In particular, EEDI may be used in long-term monitoring programs to assess the effect of climate change on individual vocal species behavior (fishes, frogs, birds, mammals, and arthropods), population, and acoustic community dynamics. The EEDI model can be also used to investigate acoustic human intrusion in natural systems and the effect in urban areas.
机译:在声学调查程序中,收集的数据量以及缺乏自动进行分类和解释的例程可能会成为实现快速结果的严重障碍。为了克服这些障碍,我们提出了一种数据挖掘,生态声事件检测和识别(EEDI)的生态符号模型,该模型使用了声学复杂性指标(ACIt(f),ACIf(t)和ACIf(te)的组合)并自动从声音文件中提取感兴趣的生态声事件。这些事件可能是环境的功能指标,包括单个声音种类(例如行为,物候和动态),声学社区(例如黎明和黄昏合唱),声音标记(例如社区的标志种类)的规模)或音景(例如,音符类型)。 EEDI模型由三个程序步骤表示:1)根据环境变量选择声学数据,2)通过创建通过绘制ACIft及其均匀度(ACIfte)生成的生态声事件空间(EES)来检测事件,3)根据事件识别事件。到检测到的事件的声学特征(ACItf)与先前确定的事件的特设库之间的相关程度。 EEDI程序可广泛用于基础研究和应用研究。尤其是,EEDI可以用于长期监测计划中,以评估气候变化对个体声音物种行为(鱼类,青蛙,鸟类,鸟类,哺乳动物和节肢动物),种群和声学群落动态的影响。 EEDI模型也可用于调查自然系统中人为侵入声波的影响以及城市地区的影响。

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