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Bioacoustic approaches to biodiversity monitoring and conservation in Kenya

机译:肯尼亚生物多样性监测和保护的生物声学方法

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摘要

Kenya's rich biodiversity faces a number of threats including human encroachment, poaching and climate change. Since Kenya is a developing country, there is need to manage the sometimes competing interests of development, such as infrastructure development, and conservation. To achieve this, tools to effectively monitor the state of Kenya's various ecosystems are essential. In this paper we propose a biodiversity monitoring software tool that integrates acoustic indices of biodiversity, recognition of species of interest based on their vocalizations and acoustic census. This tool can be used by non-experts to determine the current state of their ecosystems by monitoring the state of bird species that serve as indicator taxa and whose abundance is related to the abundance of other terrestrial vertebrates including the “big five”. The tool we propose exploits state-of-the art advances in signal processing and machine learning to perform biodiversity monitoring, bird species detection and census in a joint framework. Using publicly available data we demonstrate how current acoustic indices of biodiversity can be improved by incorporating machine learning based audio segmentation algorithms. We also show how open source toolkits can be used to build bird species recognition systems. Code to reproduce the experiments in this paper is available on Github at https://github.com/ciiram/BirdPy.
机译:肯尼亚丰富的生物多样性面临着许多威胁,包括人类入侵,偷猎和气候变化。由于肯尼亚是发展中国家,因此有必要管理有时相互竞争的发展利益,例如基础设施建设和保护。为了实现这一目标,必须有有效监测肯尼亚各种生态系统状况的工具。在本文中,我们提出了一种生物多样性监测软件工具,该工具集成了生物多样性的声学指标,基于其发声和声学普查对感兴趣物种的识别。非专家可以使用此工具通过监视用作指示类群并且其丰度与其他陆生脊椎动物(包括“大五头”)的丰度相关的鸟类物种的状态来确定其生态系统的当前状态。我们提出的工具利用信号处理和机器学习的最新技术,以在一个联合框架中执行生物多样性监测,鸟类检测和人口普查。使用公开可用的数据,我们演示了如何通过结合基于机器学习的音频分割算法来改善当前生物多样性的声学指标。我们还将展示如何使用开源工具包来构建鸟类识别系统。可以在Github上的https://github.com/ciiram/BirdPy上获得用于重现本文实验的代码。

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