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首页> 外文期刊>The Journal of Artificial Intelligence Research >A Hidden Markov Model-Based Acoustic Cicada Detector for Crowdsourced Smartphone Biodiversity Monitoring
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A 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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In recent years, the field of computational sustainability has striven to apply artificial intelligence techniques to solve ecological and environmental problems. In ecology, a key issue for the safeguarding of our planet is the monitoring of biodiversity. 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, where this insect was historically found, will help to monitor its presence by means of a smartphone app that can detect its mating call. Existing research in the field of acoustic insect detection has typically focused upon the classification of recordings collected from fixed field microphones. Such approaches segment a lengthy audio recording into individual segments of insect activity, which are independently classified using cepstral coefficients extracted from the recording as features. This paper reports on a contrasting approach, whereby we use crowdsourcing to collect recordings via a smartphone app, and present an immediate feedback to the users as to whether an insect has been found. Our classification approach does not remove silent parts of the recording via segmentation, but instead uses the temporal patterns throughout each recording to classify the insects present. We show that our approach can successfully discriminate between the call of the New Forest cicada and similar insects found in the New Forest, and is robust to common types of environment noise. A large scale trial deployment of our smartphone app collected over 6000 reports of insect activity from over 1000 users. Despite the cicada not having been rediscovered in the New Forest, the effectiveness of this approach was confirmed for both the detection algorithm, which successfully identified the same cicada through the app in countries where the same species is still present, and of the crowdsourcing methodology, which collected a vast number of recordings and involved thousands of contributors.
机译:近年来,计算可持续性领域一直致力于应用人工智能技术来解决生态和环境问题。在生态学中,保护我们星球的关键问题是生物多样性的监测。物种的自动声识别旨在为生物多样性监测提供一种经济有效的方法。这对于检测具有特殊特征的濒临灭绝的动物特别有吸引力,例如“新森林蝉”。为此,我们采用了众包的方式,成千上万的访客来到新森林(该昆虫在历史上曾被发现)将通过可检测其交配电话的智能手机应用程序帮助监视其存在。声学昆虫检测领域中的现有研究通常集中在从固定场麦克风收集的录音的分类上。这种方法将冗长的音频记录分割为昆虫活动的各个部分,使用从记录中提取的倒谱系数作为特征对其进行独立分类。本文报告了一种对比方法,即我们使用众包通过智能手机应用程序收集录音,并向用户提供有关是否已发现昆虫的即时反馈。我们的分类方法不会通过分段来删除录音的无声部分,而是会在每个录音中使用时间模式对存在的昆虫进行分类。我们证明了我们的方法可以成功地区分新森林蝉的鸣叫和新森林中发现的类似昆虫,并且对常见类型的环境噪声具有鲁棒性。我们的智能手机应用程序的大规模试验部署从1000多个用户那里收集了6000多种昆虫活动报告。尽管尚未在新森林中重新发现蝉,但这种方法对于检测算法(通过仍在存在相同物种的国家/地区的应用程序成功识别同一蝉)以及众包方法的有效性都得到了证实。收集了大量的唱片,成千上万的贡献者参与其中。

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