The spectacular growth of wearable sensors has provided a key contribution to the field of human activity recognition. Due to its effective and versatile usage and application in various fields such as smart homes and medical areas, human activity recognition has always been an appealing research topic in artificial intelligence. From this perspective, there are a lot of existing works that make use of accelerometer and gyroscope sensor data for recognizing human activities. This paper presents a comparative study of ensemble learning methods for human activity recognition. The methods include random forest, adaptive boosting, gradient boosting, extreme gradient boosting, and light gradient boosting machine (LightGBM). Among the ensemble le...
Human physical activity recognition from inertial sensors is shown to be a successful approach for m...
In evolution and ubiquitous computing systems, accelerometer-based human activity recognition has hu...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
International audienceRecent years have witnessed the rapid development of human activity recognitio...
Human activity recognition is an area of growing interest facilitated by the current revolution in b...
PURPOSE To investigate whether the use of ensemble learning algorithms improve physical activity rec...
The main interest of this thesis is on computational methodologies able to reduce the degree of comp...
Deep learning methods are widely used in sensor-based activity recognition, contributing to improved...
Abstract This study introduces an ensemble-based personalized human activity recognition method rel...
The integration of Micro Electronic Mechanical Systems (MEMS) sensor technology in smartphones has g...
This paper presents a review of different classification techniques used to recognize human activiti...
The design of multiple human activity recognition applications in areas such as healthcare, sports a...
Sensor-based motion recognition integrates the emerging area of wearable sensors with novel machine ...
In recent years, people nowadays easily to contact each other by using smartphone. Most of the smart...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
Human physical activity recognition from inertial sensors is shown to be a successful approach for m...
In evolution and ubiquitous computing systems, accelerometer-based human activity recognition has hu...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
International audienceRecent years have witnessed the rapid development of human activity recognitio...
Human activity recognition is an area of growing interest facilitated by the current revolution in b...
PURPOSE To investigate whether the use of ensemble learning algorithms improve physical activity rec...
The main interest of this thesis is on computational methodologies able to reduce the degree of comp...
Deep learning methods are widely used in sensor-based activity recognition, contributing to improved...
Abstract This study introduces an ensemble-based personalized human activity recognition method rel...
The integration of Micro Electronic Mechanical Systems (MEMS) sensor technology in smartphones has g...
This paper presents a review of different classification techniques used to recognize human activiti...
The design of multiple human activity recognition applications in areas such as healthcare, sports a...
Sensor-based motion recognition integrates the emerging area of wearable sensors with novel machine ...
In recent years, people nowadays easily to contact each other by using smartphone. Most of the smart...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
Human physical activity recognition from inertial sensors is shown to be a successful approach for m...
In evolution and ubiquitous computing systems, accelerometer-based human activity recognition has hu...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...