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Creating a behavioural classification module for acceleration data: using a captive surrogate for difficult to observe species

机译:创建用于加速度数据的行为分类模块:使用圈养替代品来观察物种

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Distinguishing specific behavioural modes from data collected by animal-borne tri-axial accelerometers can be a time-consuming and subjective process. Data synthesis can be further inhibited when the tri-axial acceleration data cannot be paired with the corresponding behavioural mode through direct observation. Here, we explored the use of a tame surrogate (domestic dog) to build a behavioural classification module, and then used that module to accurately identify and quantify behavioural modes within acceleration collected from other individuals/species. Tri-axial acceleration data were recorded from a domestic dog whilst it was commanded to walk, run, sit, stand and lie-down. Through video synchronisation, each tri-axial acceleration sample was annotated with its associated behavioural mode; the feature vectors were extracted and used to build the classification module through the application of support vector machines (SVMs). This behavioural classification module was then used to identify and quantify the same behavioural modes in acceleration collected from a range of other species (alligator, badger, cheetah, dingo, echidna, kangaroo and wombat). Evaluation of the module performance, using a binary classification system, showed there was a high capacity (>90%) for behaviour recognition between individuals of the same species. Furthermore, a positive correlation existed between SVM capacity and the similarity of the individual's spinal length-to-height above the ground ratio (SL:SH) to that of the surrogate. The study describes how to build a behavioural classification module and highlights the value of using a surrogate for studying cryptic, rare or endangered species.
机译:从动物传播的三轴加速度计收集的数据中区分特定的行为模式可能是一个耗时且主观的过程。当三轴加速度数据无法通过直接观察与相应的行为模式配对时,可以进一步禁止数据合成。在这里,我们探索了使用驯服代用品(家犬)建立行为分类模块的方法,然后使用该模块在从其他个人/物种收集的加速度范围内准确地识别和量化行为模式。从一条家养的狗记录了三轴加速度数据,同时命令它走路,奔跑,坐着,站立和躺下。通过视频同步,每个三轴加速度样本都带有其相关的行为模式。提取特征向量,并通过支持向量机(SVM)的应用来构建分类模块。然后,该行为分类模块用于识别和量化从其他物种(alligator,badge,猎豹,dingo,针,袋鼠和袋熊)收集的加速度中的相同行为模式。使用二进制分类系统对模块性能进行评估,结果表明,同一物种的个体之间具有较高的行为识别能力(> 90%)。此外,在支持向量机容量与个体的地面比(SL:SH)上方的脊柱长高与替代体的相似性之间存在正相关。该研究描述了如何建立行为分类模块,并强调了使用替代物研究隐性,稀有或濒危物种的价值。

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