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首页> 外文期刊>Ecology and Evolution >Development of an automated method of detecting stereotyped feeding events in multisensor data from tagged rorqual whales
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Development of an automated method of detecting stereotyped feeding events in multisensor data from tagged rorqual whales

机译:一种自动方法,用于检测来自标记的不规则鲸鱼的多传感器数据中的定型进食事件

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Abstract The introduction of animal-borne, multisensor tags has opened up many opportunities for ecological research, making previously inaccessible species and behaviors observable. The advancement of tag technology and the increasingly widespread use of bio-logging tags are leading to large volumes of sometimes extremely detailed data. With the increasing quantity and duration of tag deployments, a set of tools needs to be developed to aid in facilitating and standardizing the analysis of movement sensor data. Here, we developed an observation-based decision tree method to detect feeding events in data from multisensor movement tags attached to fin whales (Balaenoptera physalus ). Fin whales exhibit an energetically costly and kinematically complex foraging behavior called lunge feeding, an intermittent ram filtration mechanism. Using this automated system, we identified feeding lunges in 19 fin whales tagged with multisensor tags, during a total of over 100 h of continuously sampled data. Using movement sensor and hydrophone data, the automated lunge detector correctly identified an average of 92.8% of all lunges, with a false-positive rate of 9.5%. The strong performance of our automated feeding detector demonstrates an effective, straightforward method of activity identification in animal-borne movement tag data. Our method employs a detection algorithm that utilizes a hierarchy of simple thresholds based on knowledge of observed features of feeding behavior, a technique that is readily modifiable to fit a variety of species and behaviors. Using automated methods to detect behavioral events in tag records will significantly decrease data analysis time and aid in standardizing analysis methods, crucial objectives with the rapidly increasing quantity and variety of on-animal tag data. Furthermore, our results have implications for next-generation tag design, especially long-term tags that can be outfitted with on-board processing algorithms that automatically detect kinematic events and transmit ethograms via acoustic or satellite telemetry.
机译:摘要动物源的多传感器标签的引入为生态学研究打开了许多机会,使以前难以接近的物种和行为得以观察。标签技术的进步和生物记录标签的日益广泛使用导致大量有时非常详细的数据。随着标签部署的数量和持续时间的增加,需要开发一套工具来帮助简化和标准化运动传感器数据的分析。在这里,我们开发了一种基于观测的决策树方法,该方法可以检测来自附在长须鲸(Balaenoptera physalus)上的多传感器运动标签数据中的进食事件。鲸鱼表现出极高的能量和运动学上复杂的觅食行为,被称为弓箭进食,这是一种间歇性的夯实过滤机制。使用此自动化系统,我们在总共100个小时的连续采样数据中,识别了19条带有多传感器标签的长须鲸的食饵。使用运动传感器和水听器数据,自动弓箭探测器可以正确地识别出平均所有弓箭的92.8%,假阳性率为9.5%。我们的自动喂食检测器的强大性能证明了在动物传播的运动标签数据中进行活动识别的有效,直接的方法。我们的方法采用一种检测算法,该算法基于对所观察到的进食行为特征的了解,利用简单阈值的层次结构,该技术很容易修改以适合各种物种和行为。使用自动方法来检测标签记录中的行为事件,将显着减少数据分析时间,并有助于标准化分析方法,重要目标以及快速增长的动物标签数据数量和种类。此外,我们的结果对下一代标签设计具有重要意义,尤其是可以配备机载处理算法的长期标签,这些算法可以自动检测运动事件并通过声学或卫星遥测传输人声图。

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