Abstract In this study, the aim is to personalize inertial sensor databased human activity recognition models using incremental learning. At first, the recognition is based on user-independent model. However, when personal streaming data becomes available, the incremental learning-based recognition model can be updated, and therefore personalized, based on the data without user-interruption. The used incremental learning algorithm is Learn++ which is an ensemble method that can use any classifier as a base classifier. In fact, study compares three different base classifiers: linear discriminant analysis (LDA), quadratic discriminant analysis (QDA) and classification and regression tree (CART). Experiments are based on publicly open data se...
Human activity recognition by using wearable sensors has gained tremendous interest in recent years ...
This paper presents an unsupervised incremental learning approach for activity recognition. Activity...
Recognizing activities of daily living is an important research topic for health monitoring and elde...
Abstract In this study, importance of user inputs is studied in the context of personalizing human ...
Abstract This study introduces an ensemble-based personalized human activity recognition method rel...
Abstract This study presents incremental learning based methods to personalize human activity recog...
Abstract In this article, it is studied how well inertial sensor-based human activity recognition mo...
The recognition of day-to-day activities is a major research subject for the monitoring of health an...
Inter-subject variability in accelerometer-based activity recognition may significantly affect class...
The aim of this work is to present two different algorithmic pipelines for human activity recognitio...
The design of multiple human activity recognition applications in areas such as healthcare, sports a...
With the rapid development of the computer and sensor field, inertial sensor data have been widely u...
Today’s sensory world is all about privacy and minimal intrusion. The application of Machine Learnin...
The last 20 years have seen an ever increasing research activity in the field of human activity reco...
Mobile activity recognition is significant to the development of human-centric pervasive application...
Human activity recognition by using wearable sensors has gained tremendous interest in recent years ...
This paper presents an unsupervised incremental learning approach for activity recognition. Activity...
Recognizing activities of daily living is an important research topic for health monitoring and elde...
Abstract In this study, importance of user inputs is studied in the context of personalizing human ...
Abstract This study introduces an ensemble-based personalized human activity recognition method rel...
Abstract This study presents incremental learning based methods to personalize human activity recog...
Abstract In this article, it is studied how well inertial sensor-based human activity recognition mo...
The recognition of day-to-day activities is a major research subject for the monitoring of health an...
Inter-subject variability in accelerometer-based activity recognition may significantly affect class...
The aim of this work is to present two different algorithmic pipelines for human activity recognitio...
The design of multiple human activity recognition applications in areas such as healthcare, sports a...
With the rapid development of the computer and sensor field, inertial sensor data have been widely u...
Today’s sensory world is all about privacy and minimal intrusion. The application of Machine Learnin...
The last 20 years have seen an ever increasing research activity in the field of human activity reco...
Mobile activity recognition is significant to the development of human-centric pervasive application...
Human activity recognition by using wearable sensors has gained tremendous interest in recent years ...
This paper presents an unsupervised incremental learning approach for activity recognition. Activity...
Recognizing activities of daily living is an important research topic for health monitoring and elde...