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首页> 外文期刊>Biosystems Engineering >Automatic recognition of jaw movements in free-ranging cattle, goats and sheep, using acoustic monitoring. (Special Issue: Sensing technologies for sustainable agriculture.)
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Automatic recognition of jaw movements in free-ranging cattle, goats and sheep, using acoustic monitoring. (Special Issue: Sensing technologies for sustainable agriculture.)

机译:使用声音监控功能,自动识别自由放养的牛,山羊和绵羊的颌骨运动。 (特刊:可持续农业的传感技术。)

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摘要

Sensor technologies to quantify the feeding behaviour of free-grazing domesticated herbivores are required. Acoustic monitoring is a promising method, but signal processing algorithms to automatically identify and classify sound-producing jaw movements are not well developed. We present an algorithm for jaw movement identification that is designed to be as general as possible; it requires no calibration and identifies jaw movements according to key features in the time domain that are defined in relative terms. A machine-learning approach is used to separate true jaw-movement sounds from background noise and intense spurious noises. The algorithm software performance was tested in three field studies by comparing its output with that generated by aural sequencing. For cattle grazing green pasture in a low-noise environment with a Lavalier microphone positioned on the forehead, the system achieved 94% correct identification (i.e., aural events matched by software events within a tolerance of 0.2 s) and a false positive rate (i.e., software events not similarly matched by aural events) of 7%. For goats grazing green herbage in an extremely noisy environment, and with a piezoelectric microphone positioned on the horn, the system achieved 96% correct identification and 4% false positives. For sheep grazing dry pasture in an environment characterised by frequent intense noises, and with a piezoelectric microphone positioned on the horn, the system achieved 84% correct identification and 24% false positives. Very low error rates can be obtained from the software if intense extraneous noises can be avoided.
机译:需要使用传感器技术来量化自由放牧的驯化草食动物的进食行为。声音监视是一种有前途的方法,但是用于自动识别和分类产生声音的颚运动的信号处理算法还没有得到很好的发展。我们提出了一种用于颌骨运动识别的算法,该算法设计得尽可能通用。它不需要校准,并且可以根据时域中以相对术语定义的关键特征来识别颌骨运动。机器学习方法用于将真实的颚运动声音与背景噪声和强烈的杂散噪声分开。通过将其输出与听觉测序生成的输出进行比较,在三个现场研究中测试了算法软件的性能。对于在额头上装有Lavalier麦克风的低噪声环境中放牧绿色牧场的牛,该系统获得了94%的正确识别率(即,听觉事件与在0.2 s容限内的软件事件匹配)和假阳性率(即, ,软件事件与听觉事件没有类似的匹配)为7%。对于在非常嘈杂的环境中放牧绿色牧草的山羊,并且在号角上安装了压电麦克风,该系统可实现96%的正确识别和4%的误报。对于在频繁发出强烈噪音的环境中放牧干燥牧场的绵羊,并在喇叭上安装了压电麦克风,该系统可实现84%的正确识别和24%的误报。如果可以避免强烈的外部噪声,则可以从该软件获得非常低的错误率。

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