Human Activity Recognition (HAR) is an important part of ambient intelligence systems since it can provide user-context information, thus allowing a greater personalization of services. One of the problems with HAR systems is that the labeling process for the training data is costly, which has hindered its practical application. A common approach is to train a general model with the aggregated data from all users. The problem is that for a new target user, this model can perform poorly because it is biased towards the majority type of users and does not take into account the particular characteristics of the target user. To overcome this limitation, a user-dependent model can be trained with data only from the target user that will be optim...
Since people perform activities differently, to avoid overfitting, creating a general model with act...
The distinction between subject-dependent and subject-independent performance is ubiquitous in the H...
Human activity recognition using wearable devices is an active area of research in pervasive computi...
Abstract This study presents incremental learning based methods to personalize human activity recog...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
In Human Activity Recognition (HAR) supervised and semi-supervised training are important tools for ...
Abstract—In Human Activity Recognition (HAR) supervised and semi-supervised training are important t...
One of the major challenges in Human Activity Recognition (HAR) based on machine learning is the sca...
Data annotation is a time-consuming process posing major limitations to the development of Human Act...
Human Activity Recognition (HAR) is a core component of clinical decision support systems that rely ...
HAR (Human Activity Recognition) system becomes complex, inefficient and less accurate as we keep on...
Human Activity Recognition (HAR) is a time series classification task that involves predicting the m...
Activity recognition allows ubiquitous mobile devices like smartphones to be context-aware and also ...
The aim of activity recognition is to determine the physical action being performed by one or more u...
Human Activity Recognition (HAR) is typically modelled as a classification task where sensor data as...
Since people perform activities differently, to avoid overfitting, creating a general model with act...
The distinction between subject-dependent and subject-independent performance is ubiquitous in the H...
Human activity recognition using wearable devices is an active area of research in pervasive computi...
Abstract This study presents incremental learning based methods to personalize human activity recog...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
In Human Activity Recognition (HAR) supervised and semi-supervised training are important tools for ...
Abstract—In Human Activity Recognition (HAR) supervised and semi-supervised training are important t...
One of the major challenges in Human Activity Recognition (HAR) based on machine learning is the sca...
Data annotation is a time-consuming process posing major limitations to the development of Human Act...
Human Activity Recognition (HAR) is a core component of clinical decision support systems that rely ...
HAR (Human Activity Recognition) system becomes complex, inefficient and less accurate as we keep on...
Human Activity Recognition (HAR) is a time series classification task that involves predicting the m...
Activity recognition allows ubiquitous mobile devices like smartphones to be context-aware and also ...
The aim of activity recognition is to determine the physical action being performed by one or more u...
Human Activity Recognition (HAR) is typically modelled as a classification task where sensor data as...
Since people perform activities differently, to avoid overfitting, creating a general model with act...
The distinction between subject-dependent and subject-independent performance is ubiquitous in the H...
Human activity recognition using wearable devices is an active area of research in pervasive computi...