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HARKBird: Exploring Acoustic Interactions in Bird Communities Using a Microphone Array

机译:Harkbird:使用麦克风阵列探索鸟群中的声学互动

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Understanding auditory scenes is important when deploying intelligent robots and systems in real-world environments. We believe that robot audition can better recognize acoustic events in the field as compared to conventional methods such as human observation or recording using single-channel microphone array. We are particularly interested in acoustic interactions among songbirds. Birds do not always vocalize at random, for example, but may instead divide a sound-scape so that they avoid overlapping their songs with those of other birds. To understand such complex interaction processes, we must collect much spatiotemporal data in which multiple individuals and species are singing simultaneously. However, it is costly and difficult to annotate many or long recorded tracks manually to detect their interactions. In order to solve this problem, we are developing HARKBird, an easily-available and portable system consisting of a laptop PC with open-source software for robot audition HARK (Honda Research Institute Japan Audition for Robots with Kyoto University) together with a low-cost and commercially available microphone array. HARKBird enables us to extract the songs of multiple individuals from recordings automatically. In this paper, we introduce the current status of our project and report preliminary results of recording experiments in two different types of forests - one in the USA and the other in Japan - using this system to automatically estimate the direction of arrival of the songs of multiple birds, and separate them from the recordings. We also discuss asymmetries among species in terms of their tendency to partition temporal resources.
机译:在现实环境中部署智能机器人和系统时,理解听觉场景非常重要。我们相信,与传统的方法(如使用单通道麦克风阵列进行人类观察或录音)相比,机器人听觉能够更好地识别现场的声学事件。我们对鸣禽之间的声学相互作用特别感兴趣。例如,鸟类并不总是随机发声,而是可以划分声音场景,以避免与其他鸟类的歌声重叠。为了理解这种复杂的相互作用过程,我们必须收集大量时空数据,其中多个个体和物种同时歌唱。然而,手动注释许多或长时间录制的曲目以检测它们之间的相互作用既昂贵又困难。为了解决这个问题,我们正在开发HARKBird,这是一个易于使用的便携式系统,由一台笔记本电脑和一个低成本的商用麦克风阵列组成,该笔记本电脑带有用于机器人试听的开源软件HARK(本田研究所日本京都大学机器人试听)。HARKBird使我们能够从录音中自动提取多个人的歌曲。在本文中,我们介绍了我们项目的现状,并报告了在两种不同类型的森林(一种在美国,另一种在日本)进行记录实验的初步结果,使用该系统自动估计多种鸟类鸣叫的到达方向,并将其与记录分离。我们还讨论了物种之间的不对称性,它们倾向于划分时间资源。

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