Abstract

Action recognition is important for various applications, such as, ambient intelligence, smart devices, and healthcare. Automatic recognition of human actions in daily living environments, mainly using wearable sensors, is still an open research problem of the field of pervasive computing. This research focuses on extracting a set of features related to human motion, in particular the motion of the upper and lower limbs, in order to recognize actions in daily living environments, using time-series of joint orientation. Ten actions were performed by five test subjects in their homes: cooking, doing housework, eating, grooming, mouth care, ascending stairs, descending stairs, sitting, standing, and walking. The joint angles of the right upper limb and the left lower limb were estimated using information from five wearable inertial sensors placed on the back, right upper arm, right forearm, left thigh and left leg. The set features were used to build classifiers using three inference algorithms: Naive Bayes, K-Nearest Neighbours, and AdaBoost. The F- m e a s u r e average of classifying the ten actions of the three classifiers built by using the proposed set of features was 0.806 ( σ = 0.163).

Highlights

  • Action recognition is important for various applications, such as, ambient intelligence, smart devices, and healthcare [1,2]

  • Action recognition aims at providing information about behavior and intentions of users that enable computing systems to assist users proactively with their tasks [6]

  • In order to compare the set of proposed features, two other types of signal-based features were extracted from the orientation signals of the performed experiment. This set of features is subdivided into temporal-domain and frequency-domain features

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Summary

Introduction

Action recognition is important for various applications, such as, ambient intelligence, smart devices, and healthcare [1,2]. There is a growing demand and a sustained interest for developing technology able to tackle real-world application needs in such fields as ambient assisted living [3], security surveillance [4] and rehabilitation [5]. Action recognition aims at providing information about behavior and intentions of users that enable computing systems to assist users proactively with their tasks [6]. Automatic recognition of human actions in daily living environments, mainly using wearable sensors, is still an open research problem of the field of pervasive computing [4]. There are number of reasons why human action recognition is a very challenging problem. Human body can perform infinite variations for every basic movement

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