Abstract
Nowadays, wearable technology can enhance physical human life-log routines by shifting goals from merely counting steps to tackling significant healthcare challenges. Such wearable technology modules have presented opportunities to acquire important information about human activities in real-life environments. The purpose of this paper is to report on recent developments and to project future advances regarding wearable sensor systems for the sustainable monitoring and recording of human life-logs. On the basis of this survey, we propose a model that is designed to retrieve better information during physical activities in indoor and outdoor environments in order to improve the quality of life and to reduce risks. This model uses a fusion of both statistical and non-statistical features for the recognition of different activity patterns using wearable inertial sensors, i.e., triaxial accelerometers, gyroscopes and magnetometers. These features include signal magnitude, positive/negative peaks and position direction to explore signal orientation changes, position differentiation, temporal variation and optimal changes among coordinates. These features are processed by a genetic algorithm for the selection and classification of inertial signals to learn and recognize abnormal human movement. Our model was experimentally evaluated on four benchmark datasets: Intelligent Media Wearable Smart Home Activities (IM-WSHA), a self-annotated physical activities dataset, Wireless Sensor Data Mining (WISDM) with different sporting patterns from an IM-SB dataset and an SMotion dataset with different physical activities. Experimental results show that the proposed feature extraction strategy outperformed others, achieving an improved recognition accuracy of 81.92%, 95.37%, 90.17%, 94.58%, respectively, when IM-WSHA, WISDM, IM-SB and SMotion datasets were applied.
Highlights
Recent developments in the healthcare industry help patients, especially the elderly, to avoid illness, accidents and disease [1]
Our work mainly focuses on inertial measurement unit (IMU) sensors such as accelerometers, gyroscopes and magnetometers, which enable us to examine human life in different routines and postures in order to detect changes in location, body movement and rotational changes in three-dimensional space [25,26,27]
This paper mainly focuses on the optimization of healthcare physical activity recognition systems that are intended to reduce difficulties in monitoring human physical routines via IMU-based wearable sensors, which measure the movements, postures and orientations of those wearing the sensors
Summary
Recent developments in the healthcare industry help patients, especially the elderly, to avoid illness, accidents and disease [1]. Such strategies have introduced monitoring devices such as wearable, vision and marker-based sensors that secure, examine and improve human life in uncertain situations [2,3] while patients remain mobile. Sensors 2020, 20, 6670 gleaned from wearable inertial sensors to keep up-to-date with the health and wellbeing status of their clients Such data are functional for healthcare industries, where they can be used to improve the living standards of humans through remote monitoring [6,7,8,9] and by providing data for further research and development. Some limitations, such as unstable human body movements, hardware limitations and ergonomic measurements, adversely affect the precision of devices made for human life-log monitoring and recording [12]
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