Dog activity classification with movement sensor placed on the collar

P. Kumpulainen, Anna Valldeoriola Cardó, Sanni Somppi, Heini Törnqvist, H. Väätäjä, P. Majaranta, Veikko Surakka, O. Vainio, M. Kujala, Y. Gizatdinova, A. Vehkaoja
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引用次数: 13

Abstract

Dog owners are highly motivated in understanding behavior and physiology of their pets and monitoring their wellbeing. Monitoring with a commercially available activity trackers reveals levels of daily activity and rest but recognizing the behavior of the dog would provide additional information, especially when the dog is not under supervision. In this study, a performance of a 3D accelerometer movement sensor placed on the dog collar was evaluated in classifying seven activities during semi-controlled test situation with 24 dogs. Various features were extracted from the acceleration time series signals. The performance of two classifiers was evaluated with two feature scenarios: using all computed features and the ones given by forward selection algorithm. The highest overall classification accuracy for the seven behaviors was 76%. The results are promising pro improving classification of specific behaviors by relatively simple algorithms.
狗的活动分类与运动传感器放置在项圈上
狗主人非常积极地了解他们宠物的行为和生理,并监测它们的健康状况。用市售的活动追踪器监测可以显示狗的日常活动和休息水平,但识别狗的行为会提供额外的信息,尤其是当狗没有被监督的时候。在这项研究中,在24只狗的半控制测试情况下,对放置在狗项圈上的3D加速度计运动传感器的性能进行了评估,并对七种活动进行了分类。从加速度时间序列信号中提取各种特征。在两种特征场景下对两种分类器的性能进行了评估:使用所有计算的特征和使用前向选择算法给出的特征。7种行为的最高总体分类准确率为76%。通过相对简单的算法来改进特定行为的分类,结果是有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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