Smart City Gnosys

Smart city article details

Title A Survey On The Use Of Machine Learning Methods In Context-Aware Middlewares For Human Activity Recognition
ID_Doc 5350
Authors Miranda L.; Viterbo J.; Bernardini F.
Year 2022
Published Artificial Intelligence Review, 55, 4
DOI http://dx.doi.org/10.1007/s10462-021-10094-0
Abstract Human activity recognition (HAR) essentially uses (past) sensor data or complex context information for inferring the activities a user performs in his daily tasks. HAR has been extensively studied using different paradigms, such as different reasoning mechanisms, including probabilistic, rule-based, statistical, logical reasoning, or the machine learning (ML) paradigm, to construct inference models to recognize or predict user activities. ML for HAR allows that activities can be recognized and even anticipated through the analysis of collected data from different sensors, with greater accuracy than the other paradigms. On the other hand, context-aware middlewares (CAMs) can efficiently integrate a large number of different devices and sensors. Moreover, they provide a programmable and auto-configurable infrastructure for streamline the design and construction of software solutions in scenarios where lots of sensors and data are their bases, such as ambient intelligence, smart cities, and e-health domains. In this way, the full integration of ML capabilities as services in CAMs can advance the development of software solutions in these domains when ML is necessary, specially for HAR, which is the basis for many scenarios in these domains. In this work, we present a survey for identifying the state-of-the-art in using ML for HAR in CAMs through a systematic literature review (SLR). In our SLR, we worked to answer four research questions: (i) what are the different types of context reasoners available in CAMs; (ii) what are the ML algorithms and methods used for generating models for context reasoning; (iii) which CAMs support data processing in real time; and (iv) what are the HAR scenarios usually tackled by the research works. In our analysis, we observed that, although ML offers viable approaches to construct inference models for HAR using different ML approaches, including batch learning, adaptive learning and data stream learning, there are yet some gaps and research challenges to be tackled, specially on the use of data stream learning considering concept drift on data, mechanisms for adapting the inference models, and further considering all of this as services in CAMs, specially for HAR. © 2021, The Author(s), under exclusive licence to Springer Nature B.V.
Author Keywords Context-aware middleware; Human activity recognition; Machine learning


Similar Articles


Id Similarity Authors Title Published
3893 View0.893Cruciani F.; Sun C.; Zhang S.; Nugent C.; Li C.; Song S.; Cheng C.; Cleland I.; McCullagh P.A Public Domain Dataset For Human Activity Recognition In Free-Living ConditionsProceedings - 2019 IEEE SmartWorld, Ubiquitous Intelligence and Computing, Advanced and Trusted Computing, Scalable Computing and Communications, Internet of People and Smart City Innovation, SmartWorld/UIC/ATC/SCALCOM/IOP/SCI 2019 (2019)
29566 View0.861Diraco G.; Rescio G.; Caroppo A.; Manni A.; Leone A.Human Action Recognition In Smart Living Services And Applications: Context Awareness, Data Availability, Personalization, And PrivacySensors, 23, 13 (2023)
1826 View0.86Turetta C.; Demrozi F.; Pravadelli G.A Freely Available System For Human Activity Recognition Based On A Low-Cost Body Area NetworkProceedings - 2022 IEEE 46th Annual Computers, Software, and Applications Conference, COMPSAC 2022 (2022)
36000 View0.86Khamesi A.R.; Shin E.; Silvestri S.Machine Learning In The Wild: The Case Of User-Centered Learning In Cyber Physical Systems2020 International Conference on COMmunication Systems and NETworkS, COMSNETS 2020 (2020)
4555 View0.858Zhou Y.; Xie C.; Sun S.; Zhang X.; Wang Y.A Self-Supervised Human Activity Recognition Approach Via Body Sensor Networks In Smart CityIEEE Sensors Journal, 24, 5 (2024)
29569 View0.853Chen L.; Nugent C.D.Human Activity Recognition And Behaviour Analysis: For Cyber-Physical Systems In Smart EnvironmentsHuman Activity Recognition and Behaviour Analysis: For Cyber-Physical Systems in Smart Environments (2019)