用于远程监测鸟类叫声的声学无线传感器网络

S. Aravinda, S. Gunawardene, N. Kottege
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引用次数: 5

摘要

基于声波监测的无线传感器网络(WSN)对生态学家来说非常有用,可以在不同的天气/气候条件下长期监测偏远地区的实时野生动物行为。然而,对数据处理强度和跨网络节点数据带宽的严格要求,限制了基于WSN的监控的适用性。本文提出了一种无线传感器节点的网状网络,它只需要现成的硬件、算法和方法来识别声源类型。节点是通过将三个独立模块连接到微处理器来构建的:(i)连接到USB声卡的麦克风,用于记录声学数据;(ii)用于节点间和远程服务器通信的射频(RF)收发器;(iii)用于节点间时间同步的外部实时时钟模块。该系统设计用于实时识别黑背火背鸟(BRF)的叫声,BRF是印度次大陆特有的一种啄木鸟,在斯里兰卡的部分地区发现。记录任何超过预定义强度阈值的声学信号,同时区分BRF叫声与其他两种已知的鸟类叫声。这是基于通过测量两个已知BRF调用之间的相互关系估计的阈值来实现的。该方法能够成功识别83%的测试BRF呼叫。支持向量机(SVM)是一种鲁棒性更强的识别算法,本文还确定了与支持向量机(SVM)兼容的更多频域特征。基于支持向量机的方法能够成功识别91%的测试BRF呼叫。每个节点所用硬件的总成本估计在75美元以下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An acoustic Wireless Sensor Network for remote monitoring of bird calls
Wireless Sensor Network (WSN) based acoustic monitoring is useful for ecologists for the purpose of monitoring real-time wildlife behavior across remotely located large areas, for long periods and under variable weather/climate conditions. However, stringent requirements for intense data processing and data bandwidth across network nodes makes applicability of WSN based monitoring limited. This paper presents, a mesh network of wireless sensor nodes that only requires readily available hardware, algorithms and methods for acoustic source type identification. A node was constructed by interfacing three separate modules to a microprocessor: (i) a microphone coupled to a USB sound card for recording acoustic data, (ii) a radio frequency (RF) transceiver for inter-node and remote server communication, and (iii) an external Real Time Clock module for time-synchronization between nodes. The system was designed for real-time identification of calls of Black-Rumped Flameback (BRF), a type of woodpecker endemic to the Indian sub-continent and found in parts of Sri Lanka. Any acoustic signal above a predefined intensity threshold was recorded while BRF calls were discriminated with respect to two other known bird calls. This was achieved based on a threshold estimated by measuring the cross-correlation between two known BRF calls. This method was able to successfully identify 83% of the tested BRF calls. Several more frequency domain features were also identified that are compatible with Support Vector Machines (SVM), which is a more robust identification algorithm. The SVM based was able to successfully identify 91% of the tested BRF calls. The total cost of hardware used per node was estimated to be under USD 75.
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