Abstract

Increase in number of elderly people who are living independently needs especial care in the form of healthcare monitoring systems. Recent advancements in depth video technologies have made human activity recognition (HAR) realizable for elderly healthcare applications. In this paper, a depth video-based novel method for HAR is presented using robust multi-features and embedded Hidden Markov Models (HMMs) to recognize daily life activities of elderly people living alone in indoor environment such as smart homes. In the proposed HAR framework, initially, depth maps are analyzed by temporal motion identification method to segment human silhouettes from noisy background and compute depth silhouette area for each activity to track human movements in a scene. Several representative features, including invariant, multi-view differentiation and spatiotemporal body joints features were fused together to explore gradient orientation change, intensity differentiation, temporal variation and local motion of specific body parts. Then, these features are processed by the dynamics of their respective class and learned, modeled, trained and recognized with specific embedded HMM having active feature values. Furthermore, we construct a new online human activity dataset by a depth sensor to evaluate the proposed features. Our experiments on three depth datasets demonstrated that the proposed multi-features are efficient and robust over the state of the art features for human action and activity recognition.

Highlights

  • MONITORING human activities of daily living is an essential way of describing the functional and health status of a human [1]

  • The aim of this study is to propose an efficient depth video-based human activity recognition (HAR) system that monitors the activities of elder people 24 hours/day and provides them an intelligent living space which comfort their life at home

  • We proposed an online depth HAR system that utilized persontracking system, multi-features and embedded Hidden Markov Models (HMMs) algorithms to solve the above mentioned problems

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Summary

Introduction

MONITORING human activities of daily living is an essential way of describing the functional and health status of a human [1]. Human activity recognition (HAR) is one of genuine components in personalized life-care and healthcare systems, especially for the elderly and disabled [2]. According to the world health organization survey, the population of older people is rapidly increasing all over the world and their healthcare needs become more complex which consume more resources (i.e., human and healthcare expenditures). Several studies support that personalized life-care and healthcare services can decrease the mortality rate especially for the elderly people. The aim of this study is to propose an efficient depth video-based HAR system that monitors the activities of elder people 24 hours/day and provides them an intelligent living space which comfort their life at home

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