马的步态活动识别智能手表应用

Enrico Casella, A. R. Khamesi, S. Silvestri
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引用次数: 5

摘要

活动识别作为一种从一系列观察中检测动作的方法被引入。虽然在文献中,术语“活动识别”和“人类活动识别”大多是互换使用的,但在非人类受试者中存在一些有趣的应用。在这项工作中,我们研究了动物活动识别,特别关注马的步态识别。本文开发的身体和不引人注目的系统有几个潜在的应用,可以引起对与动物有关的财务,情感和兽医健康问题的关注。利用智能手表在活动跟踪方面的普遍使用,我们开发了一个智能手表应用程序来收集加速度计数据。该应用基于新颖的异常值检测和特征提取技术,并结合了最先进的机器学习方法。我们用两匹马进行了真实的实验来评估我们提出的系统的性能。为了达到这个目的,我们将监控设备同时放在马鞍和骑手的手腕上。结果显示,在这两种情况下都具有很高的准确性,这使得骑手可以无缝且不显眼地使用我们的可穿戴设备应用程序。此外,我们还研究了滑动窗口大小和采样频率的影响,为未来的马步态识别研究提供了有用的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smartwatch Application for Horse Gaits Activity Recognition
Activity recognition has been introduced as a means of detecting an action from a series of observations. Although in the literature, the terms "activity recognition" and "human activity recognition" are mostly used interchangeably, there exist several interesting applications for non-human subjects. In this work, we study animal activity recognition with special focus on horse gaits recognition. The on-body and unobtrusive system developed in this paper has several potential applications which can raise attention towards financial, emotional and veterinary health issues related to animals. Leveraging the pervasive use of smartwatches for activity tracking, we develop a smartwatch application to collect accelerometer data. The application is based on novel outlier detection and feature extraction techniques, in conjunction with state-of-the-art machine learning approaches. We perform real life experiments with two horses to evaluate the performances of our proposed system. To this aim, we place the monitoring device both on the horse saddle and the rider's wrist. The results show a high accuracy in both scenarios, which allows a seamless and unobtrusive use of our wearable device application by the rider. In addition, we study the effects of sliding window size and sampling frequency, providing useful insights for future research in horse gaits recognition.
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