This paper proposes a data-driven method for constructing materials to be used in a probabilistic knowledge base for human activity recognition. The utilized dataset, challenge subset of Opportunity, is a publicly available dataset. It consists of a set of daily activities, which has been manually labeled as modes of locomotion and gestures. We applied several methods to extract proper features from sensors on bodies of subjects, then, chosen features are fed into two different classifiers. Finally, predicted labels for modes of locomotion and hand gestures are calculated. To evaluate the method, the recognition rates are bench marked against the results of the competitors who have participated in Opportunity challenge as well as the baseli...
Data driven approaches for human activity recognition learn from pre-existent large-scale datasets t...
Several research studies have investigated the human activity recognition (HAR) domain to detect and...
The last 20 years have seen an ever increasing research activity in the field of human activity reco...
The OPPORTUNITY Dataset for Human Activity Recognition from Wearable, Object, and Ambient Sensors (h...
Human activity recognition is a thriving research field. There are lots of studies in different sub-...
The development of activity recognition techniques relies on the availability of datasets of gesture...
This paper proposes a probabilistic, time efficient, data-driven method for human low and medium lev...
Abstract In this article, it is studied how well inertial sensor-based human activity recognition mo...
Human activity recognition algorithms based on information obtained from wearable sensors are succes...
Human activity recognition algorithms based on information obtained from wearable sensors are succes...
The design of multiple human activity recognition applications in areas such as healthcare, sports a...
Evaluating human activity recognition systems usually implies following expensive and time-consuming...
In the last few decades, life expectancy has been increasing. This has resulted in a higher proporti...
International audienceA lot of research has been done for human activity recognition. But most of it...
Human activity recognition algorithms based on information obtained from wearable sensors are succes...
Data driven approaches for human activity recognition learn from pre-existent large-scale datasets t...
Several research studies have investigated the human activity recognition (HAR) domain to detect and...
The last 20 years have seen an ever increasing research activity in the field of human activity reco...
The OPPORTUNITY Dataset for Human Activity Recognition from Wearable, Object, and Ambient Sensors (h...
Human activity recognition is a thriving research field. There are lots of studies in different sub-...
The development of activity recognition techniques relies on the availability of datasets of gesture...
This paper proposes a probabilistic, time efficient, data-driven method for human low and medium lev...
Abstract In this article, it is studied how well inertial sensor-based human activity recognition mo...
Human activity recognition algorithms based on information obtained from wearable sensors are succes...
Human activity recognition algorithms based on information obtained from wearable sensors are succes...
The design of multiple human activity recognition applications in areas such as healthcare, sports a...
Evaluating human activity recognition systems usually implies following expensive and time-consuming...
In the last few decades, life expectancy has been increasing. This has resulted in a higher proporti...
International audienceA lot of research has been done for human activity recognition. But most of it...
Human activity recognition algorithms based on information obtained from wearable sensors are succes...
Data driven approaches for human activity recognition learn from pre-existent large-scale datasets t...
Several research studies have investigated the human activity recognition (HAR) domain to detect and...
The last 20 years have seen an ever increasing research activity in the field of human activity reco...