基于智能手机惯性传感器数据融合的日常生活活动识别框架

Sheharyar Khan, S. M. A. Shah, Sadam Hussain Noorani, Aamir Arsalan, M. Ehatisham-ul-Haq, Aasim Raheel, Wakeel Ahmed
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引用次数: 0

摘要

近年来,使用智能传感器设备数据的人类活动识别领域取得了快速进展。在不同的领域,特别是健康和安全领域,可以找到各种各样的实际应用程序。智能手机是一种常见的设备,可以让人们随时随地完成各种日常任务。现代智能手机中的传感器和网络功能为广泛的应用提供了上下文感知。本研究主要集中在野外人类活动的识别上,为此我们选择了一个野外超感官数据集。六种人类活动,即躺着,坐着,站着,跑着,走着,骑自行车。提取时域特征并使用三种不同的机器学习分类器(即随机森林,k近邻和决策树)执行人类活动识别。提出的人类活动识别方案使用随机森林分类器,分类准确率最高,达到89.98%。我们提出的方案在野外优于最先进的人类活动识别方案。
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A Framework for Daily Living Activity Recognition using Fusion of Smartphone Inertial Sensors Data
Recent years have seen rapid advancements in the human activity recognition field using data from smart sensor devices. A wide variety of real-world applications can be found in different domains, particularly health and security. Smartphones are common devices that let people do a wide range of everyday tasks anytime, anywhere. The sensors and networking capabilities found in modern smartphones enable context awareness for a wide range of applications. This research mainly focuses on recognizing human activities in the wild for which we selected an in-the-wild extra-sensory dataset. Six human activities i.e., lying down, sitting, standing, running, walking, and bicycling are selected. Time domain features are extracted and human activity recognition is performed using three different machine learning classifiers i.e., random forest, k-nearest neighbors, and decision trees. The proposed human activity recognition scheme resulted in the highest classification accuracy of 89.98%, using the random forest classifier. Our proposed scheme outperforms the state-of-the-art human activity recognition schemes in the wild.
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