Mobile and wearable devices now have a greater capability of sensing human activity ubiquitously and unobtrusively through advancements in miniaturization and sensing abilities. However, outstanding issues remain around the energy restrictions of these devices when processing large sets of data. This paper presents our approach that uses feature selection to refine the clustering of accelerometer data to detect physical activity. This also has a positive effect on the computational burden that is associated with processing large sets of data, as energy efficiency and resource use is decreased because less data is processed by the clustering algorithms. Raw accelerometer data, obtained from smartphones and smartwatches, have been preprocesse...
Human activity recognition (HAR), using wearable sensors, is a growing area with the potential to pr...
As smartphones are equipped with various sensors, there have been many studies focused on using thes...
Obesity is a global health issue that affects 2.1 billion people worldwide and has an economic impac...
Mobile and wearable devices now have a greater capability of sensing human activity ubiquitously and...
BackgroundIdentifying clusters of physical activity (PA) from accelerometer data is important to ide...
The explosion of smaller and more powerful wearable sensing devices has allowed us to continually re...
Wearable sensor technology is evolving in parallel with the demand for human activity monitoring app...
Data driven approaches for human activity recognition learn from pre-existent large-scale datasets t...
Mobile sensor-based activity recognition is a growing research field with important applications are...
Abstract — Automatic recognition of activities using time se-ries data collected from exercise can f...
In this paper, we perform physical motion recognition using mobile phones with built-in acceleromete...
Sensor-based motion recognition integrates the emerging area of wearable sensors with novel machine ...
Obesity is a global health issue that affects 2.1 billion people worldwide and has an economic impac...
This paper presents an approach to activity recognition using wearable accelerometers. The focus of ...
Wearable human activity recognition (HAR) is a widely application system for our daily life. It hasb...
Human activity recognition (HAR), using wearable sensors, is a growing area with the potential to pr...
As smartphones are equipped with various sensors, there have been many studies focused on using thes...
Obesity is a global health issue that affects 2.1 billion people worldwide and has an economic impac...
Mobile and wearable devices now have a greater capability of sensing human activity ubiquitously and...
BackgroundIdentifying clusters of physical activity (PA) from accelerometer data is important to ide...
The explosion of smaller and more powerful wearable sensing devices has allowed us to continually re...
Wearable sensor technology is evolving in parallel with the demand for human activity monitoring app...
Data driven approaches for human activity recognition learn from pre-existent large-scale datasets t...
Mobile sensor-based activity recognition is a growing research field with important applications are...
Abstract — Automatic recognition of activities using time se-ries data collected from exercise can f...
In this paper, we perform physical motion recognition using mobile phones with built-in acceleromete...
Sensor-based motion recognition integrates the emerging area of wearable sensors with novel machine ...
Obesity is a global health issue that affects 2.1 billion people worldwide and has an economic impac...
This paper presents an approach to activity recognition using wearable accelerometers. The focus of ...
Wearable human activity recognition (HAR) is a widely application system for our daily life. It hasb...
Human activity recognition (HAR), using wearable sensors, is a growing area with the potential to pr...
As smartphones are equipped with various sensors, there have been many studies focused on using thes...
Obesity is a global health issue that affects 2.1 billion people worldwide and has an economic impac...