Abstract

As research in smart homes and activity recognition is increasing, it is of ever increasing importance to have benchmarks systems and data upon which researchers can compare methods. While synthetic data can be useful for certain method developments, real data sets that are open and shared are equally as important. This paper presents the E-care@home system, its installation in a real home setting, and a series of data sets that were collected using the E-care@home system. Our first contribution, the E-care@home system, is a collection of software modules for data collection, labeling, and various reasoning tasks such as activity recognition, person counting, and configuration planning. It supports a heterogeneous set of sensors that can be extended easily and connects collected sensor data to higher-level Artificial Intelligence (AI) reasoning modules. Our second contribution is a series of open data sets which can be used to recognize activities of daily living. In addition to these data sets, we describe the technical infrastructure that we have developed to collect the data and the physical environment. Each data set is annotated with ground-truth information, making it relevant for researchers interested in benchmarking different algorithms for activity recognition.

Highlights

  • Ambient Assisted Living (AAL) applications are of increasing importance in ageing societies, as they help enable elderly and persons with special needs to live independently at home

  • The Internet of Things (IoT) is a paradigm in which many everyday objects are equipped with sensing and actuation components as well as processing abilities and can communicate with each other to offer a service to a user in a transparent way

  • In addition to the modules described in this paper, the GIT repository contains a set of software components used for easy visualization, evaluation, and configuration of some of the components

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Summary

Introduction

Ambient Assisted Living (AAL) applications are of increasing importance in ageing societies, as they help enable elderly and persons with special needs to live independently at home. The two contributions of this paper are as follows: first, we provide a modular and extendable architecture for an Internet of Things system (that we refer by the E-care@home system) focused on semantic interoperability. This contribution contains a “cookbook” describing the technical steps to Sensors 2020, 20, 879; doi:10.3390/s20030879 www.mdpi.com/journal/sensors. The collected data sets showcase the modularity of the system and the possibility to implement it with different focuses in mind while providing labeled and easy-to-use data for researchers interested in AAL and activity monitoring for elderly people.

Related Work
Evaluation
Contiki-NG Sensor Nodes
XBee Sensor Nodes
MQTT Module
Shimmer Wearable Sensors
Data Processing
Data Labeling
Data Visualization
SmartEnv Ontology and Activity Recognition
Person Counting
Configuration Planning
Data Sets
Data Collection at Ängen
Real Apartment Data Set
Bedroom Data Set
Person Counting Data Set
Scenario 1
Scenario 3
Conclusions and Future Work
Full Text
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