Behavior recognition based on machine learning algorithms for a wireless canine machine interface

R. Brugarolas, R. Loftin, Pu Yang, D. Roberts, B. Sherman, A. Bozkurt
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引用次数: 42

Abstract

Training and handling working dogs is a costly process and requires specialized skills and techniques. Less subjective and lower-cost training techniques would not only improve our partnership with these dogs but also enable us to benefit from their skills more efficiently. To facilitate this, we are developing a canine body-area-network (cBAN) to combine sensing technologies and computational modeling to provide handlers with a more accurate interpretation for dog training. As the first step of this, we used inertial measurement units (IMU) to remotely detect the behavioral activity of canines. Decision tree classifiers and Hidden Markov Models were used to detect static postures (sitting, standing, lying down, standing on two legs and eating off the ground) and dynamic activities (walking, climbing stairs and walking down a ramp) based on the heuristic features of the accelerometer and gyroscope data provided by the wireless sensing system deployed on a canine vest. Data was collected from 6 Labrador Retrievers and a Kai Ken. The analysis of IMU location and orientation helped to achieve high classification accuracies for static and dynamic activity recognition.
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基于机器学习算法的犬类无线机器接口行为识别
训练和处理工作犬是一个昂贵的过程,需要专门的技能和技术。较少主观和低成本的训练技术不仅可以改善我们与这些狗的伙伴关系,还可以使我们更有效地从它们的技能中受益。为了促进这一点,我们正在开发犬体区域网络(cBAN),将传感技术和计算建模相结合,为训犬师提供更准确的解释。作为第一步,我们使用惯性测量单元(IMU)远程检测犬的行为活动。基于部署在犬背心上的无线传感系统提供的加速度计和陀螺仪数据的启式特征,使用决策树分类器和隐马尔可夫模型检测静态姿势(坐、站、躺、两条腿站立和离地进食)和动态活动(行走、爬楼梯和走斜坡)。数据收集自6只拉布拉多猎犬和一只凯肯犬。IMU的位置和方向分析有助于在静态和动态活动识别中实现较高的分类精度。
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