Abstract
Human activity recognition (HAR) is a classification process that is used for recognizing human motions. A comprehensive review of currently considered approaches in each stage of HAR, as well as the influence of each HAR stage on energy consumption and latency is presented in this paper. It highlights various methods for the optimization of energy consumption and latency in each stage of HAR that has been used in literature and was analyzed in order to provide direction for the implementation of HAR in health and wellbeing applications. This paper analyses if and how each stage of the HAR process affects energy consumption and latency. It shows that data collection and filtering and data segmentation and classification stand out as key stages in achieving a balance between energy consumption and latency. Since latency is only critical for real-time HAR applications, the energy consumption of sensors and devices stands out as a key challenge for HAR implementation in health and wellbeing applications. Most of the approaches in overcoming challenges related to HAR implementation take place in the data collection, filtering and classification stages, while the data segmentation stage needs further exploration. Finally, this paper recommends a balance between energy consumption and latency for HAR in health and wellbeing applications, which takes into account the context and health of the target population.
Highlights
Human Activity Recognition (HAR) is defined as a classification process utilized for human motion recognition
We proposed the grouping of health and wellbeing applications, the determination and prioritization of energy consumption and latency requirements of such application groups, leading to effective application implementation
This paper provides a comprehensive survey of current approaches used in each stage of HAR, highlighting the influence of each stage on energy consumption and latency, which are regarded as critical for real time HAR implementation in health and wellbeing applications
Summary
Human Activity Recognition (HAR) is defined as a classification process utilized for human motion recognition. HAR can be used in a broad range of applications, health and wellbeing [1,2]. Creating a healthy lifestyle that includes regular physical activity, can be supported by collecting, assessing, and examining HAR data. On the other hand, is one of the factors that precipitates a higher risk of stress occurrence, heart disease, diabetes, and repetitive motion injuries [3]. Various chronic diseases can be discovered and prevented using HAR [4]. The implementation of effective HAR applications is quite a hard and complex task as it allows the response for a specific patient, such as is the case with obese patients, diabetics, or heart disease patients [5]
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