School of Electronics and Computer Science, University of Southampton, Southampton SO17 1BJ, UK.
School of Biological Sciences, University of Southampton, Southampton SO17 1BJ, UK.
Sensors (Basel). 2019 Jan 29;19(3):553. doi: 10.3390/s19030553.
Conservation researchers require low-cost access to acoustic monitoring technology. However, affordable tools are often constrained to short-term studies due to high energy consumption and limited storage. To enable long-term monitoring, energy and space efficiency must be improved on such tools. This paper describes the development and deployment of three acoustic detection algorithms that reduce the power and storage requirements of acoustic monitoring on affordable, open-source hardware. The algorithms aim to detect bat echolocation, to search for evidence of an endangered cicada species, and also to collect evidence of poaching in a protected nature reserve. The algorithms are designed to run on AudioMoth: a low-cost, open-source acoustic monitoring device, developed by the authors and widely adopted by the conservation community. Each algorithm addresses a detection task of increasing complexity, implementing extra analytical steps to account for environmental conditions such as wind, analysing samples multiple times to prevent missed events, and incorporating a hidden Markov model for sample classification in both the time and frequency domain. For each algorithm, we report on real-world deployments carried out with partner organisations and also benchmark the hidden Markov model against a convolutional neural network, a deep-learning technique commonly used for acoustics. The deployments demonstrate how acoustic detection algorithms extend the use of low-cost, open-source hardware and facilitate a new avenue for conservation researchers to perform large-scale monitoring.
保护研究人员需要低成本的声学监测技术。然而,由于能源消耗高和存储容量有限,负担得起的工具往往只能用于短期研究。为了实现长期监测,必须提高此类工具的能源和空间效率。本文描述了三种声学检测算法的开发和部署,这些算法降低了负担得起的开源硬件进行声学监测的电力和存储需求。这些算法旨在检测蝙蝠回声定位,寻找濒危蝉种的证据,以及在自然保护区收集盗猎证据。这些算法旨在运行在 AudioMoth 上:一种低成本、开源的声学监测设备,由作者开发,并被保护界广泛采用。每个算法都针对一个复杂程度不断增加的检测任务,实现了额外的分析步骤,以考虑到环境条件(如风),对样本进行多次分析以防止错过事件,并在时间和频率域中都采用隐马尔可夫模型进行样本分类。对于每个算法,我们都报告了与合作伙伴组织一起进行的实际部署情况,并将隐马尔可夫模型与卷积神经网络(一种常用于声学的深度学习技术)进行了基准测试。这些部署展示了声学检测算法如何扩展低成本、开源硬件的使用,并为保护研究人员提供了一种进行大规模监测的新途径。