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首页> 外文期刊>Journal of Economic Entomology >Towards an Automated Acoustic Detection Algorithm for Wood-Boring Beetle Larvae (Coleoptera: Cerambycidae and Buprestidae)
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Towards an Automated Acoustic Detection Algorithm for Wood-Boring Beetle Larvae (Coleoptera: Cerambycidae and Buprestidae)

机译:朝向木材无聊甲虫幼虫的自动声学检测算法(COLEOPTERA:CERAMBYCIDAE和BUPRESTIDAE)

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The development of acoustic systems for detection of wood-boring larvae requires knowledge of the features of signals produced both by insects and background noise. This paper presents analysis of acoustic/vibrational signals recorded in tests using tree bolts infested with Anoplophora glabripennis (Motschulsky) (Coleoptera: Cerambycidae) (Asian longhorn beetle) and Agrilus planipennis Fairmaire (Coleoptera: Buprestidae) (emerald ash borer) larvae. Based on features found, an algorithm for automated insect signal detection was developed. The algorithm automatically detects pulses with parameters typical for the larva-induced signals and rejects noninsect signals caused by ambient noise. The decision that a wood sample is infested is made when the mean rate of detected insect pulses per minute exceeds a predefined threshold. The proposed automatic detection algorithm demonstrated the following performance: 12 out of 15 intact samples were correctly classified as intact, 23 out of 25 infested samples were correctly classified as infested, and five samples out of the total 40 were classified as 'unknown.' This means that a successful wood-sample classification of 87.5% was achieved, with the remaining 12.5% classified as 'unknown,' requiring a repeat of the test in a less noisy environment, or manual inspection.
机译:用于检测木材镗虫幼虫的声学系统的开发需要了解昆虫和背景噪声产生的信号的特征。本文介绍了使用肌肌科菌(MOTSCHULSKY)(MOTSCHULSKY)(COREOPTERKY)(COREOPERA)(亚洲Longhorn Beetle)和Agrilus Planipennis Fairmaire(Coleoptera:Buprestidae)(翡翠灰螟)幼虫(翡翠灰螟)幼虫的血管螺栓中记录的声学/振动信号分析。基于发现的特征,开发了一种自动昆虫信号检测算法。该算法自动检测具有典型的参数的脉冲,用于幼虫诱导的信号,并拒绝由环境噪声引起的非关像反应信号。当检测到每分钟的检测到昆虫脉冲的平均速率超过预定阈值时,使木样品被侵染的决定。所提出的自动检测算法表现出以下性能:15种完整样品中的15个完整的样品被正确分类为完整,23个侵扰样品中的23个被正确归类为侵染,共有40个中的五个样本被归类为“未知”。这意味着实现了87.5%的成功木样分类,其余12.5%归类为“未知”,要求在较少嘈杂的环境中重复测试,或手动检查。

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