Abstract

Ageing is associated with a decline in physical activity and a decrease in the ability to perform activities of daily living, affecting physical and mental health. Elderly people or patients could be supported by a human activity recognition (HAR) system that monitors their activity patterns and intervenes in case of change in behavior or a critical event has occurred. A HAR system could enable these people to have a more independent life.In our approach, we apply machine learning methods from the field of human activity recognition (HAR) to detect human activities. These algorithmic methods need a large database with structured datasets that contain human activities. Compared to existing data recording procedures for creating HAR datasets, we present a novel approach, since our target group comprises of elderly and diseased people, who do not possess the same physical condition as young and healthy persons.Since our targeted HAR system aims at supporting elderly and diseased people, we focus on daily activities, especially those to which clinical relevance in attributed, like hygiene activities, nutritional activities or lying positions. Therefore, we propose a methodology for capturing data with elderly and diseased people within a hospital under realistic conditions using wearable and ambient sensors. We describe how this approach is first tested with healthy people in a laboratory environment and then transferred to elderly people and patients in a hospital environment.We also describe the implementation of an activity recognition chain (ARC) that is commonly used to analyse human activity data by means of machine learning methods and aims to detect activity patterns. Finally, the results obtained so far are presented and discussed as well as remaining problems that should be addressed in future research.

Highlights

  • The proportion of people aged 60 and over is growing faster than any other age group worldwide

  • Since the work described in this paper aims at designing a system that supports elderly and diseased people in their daily living, the design of the human activity recognition (HAR) system focuses on daily activities, especially those to which clinical relevance in attributed

  • Data from five different healthy participants were collected in two different laboratory environments at Technical University Munich (TUM) and Schön Klinik Bad Aibling Harthausen (SKBA)

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Summary

Introduction

The proportion of people aged 60 and over is growing faster than any other age group worldwide. Billion by 2050, with 80% of them living in developing countries (WHO 2002). This increase has proved to be a major challenge to the healthcare system, since ageing is associated with a decline in physical activity, affecting physical and mental health. Strategies are needed to enable older people to continue their daily living, prevent diseases or support in rehabilitation, which is costly to individuals and the healthcare system (WHO 2002). Wearables can sense and collect physiological data and are used to provide services such as physical and mental health monitoring (Seneviratne et al 2017). The combination of advanced sensing, smart algorithms and medical benefits results in advanced healthcare services, which aim to support elderly people

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