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Hidden Markov Model-Based Acoustic Cicada Detector for Crowdsourced Smartphone Biodiversity Monitoring

机译:基于隐马尔可夫模型的声蝉检测器用于众包智能手机生物多样性监测

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Automated acoustic recognition of species aims to provide a cost-effective method for biodiversity monitoring.This is particularly appealing for detecting endangered animals with a distinctive call,such as the New Forest cicada.To this end,we pursue a crowdsourcing approach,whereby the millions of visitors to the New Forest will help to monitor the presence of this cicada by means of a smartphone app that can detect its mating call.However,current systems for acoustic insect classification are aimed at batch processing and not suited to a realtime approach as required by this system,because they are too computationally expensive and not robust to environmental noise.To address this shortcoming we propose a novel insect detection algorithm based on a hidden Markov model to which we feed as a single feature vector the ratio of two key frequencies extracted through the Goertzel algorithm.Our results show that this novel approach,compared to the state of the art for batch insect classification,is much more robust to noise while also reducing the computational cost.
机译:物种的自动声学识别旨在提供一种经济高效的生物多样性监测方法。这对于检测具有特殊特征的濒临灭绝的动物(例如“新森林蝉”)特别具有吸引力。为此,我们采用了众包方法,其中有数百万人的新森林游客将通过可检测其配对呼叫的智能手机应用程序帮助监视此蝉的存在。然而,当前的声虫分类系统仅针对批处理,不适用于所需的实时处理方法。为了解决这个缺点,我们提出了一种基于隐马尔可夫模型的新型昆虫检测算法,我们将提取的两个关键频率之比作为单个特征向量馈入该算法。我们的结果表明,与批量昆虫分类的最新技术相比,这种新颖的方法噪声更强,同时也降低了计算成本。

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