Human activity recognition algorithms have been increasingly sought due to their broad application, in areas such as healthcare, safety and sports. Current works focusing on human activity recognition are based majorly on Supervised Learning algorithms and have achieved promising results. However, high performance is achieved at the cost of a large amount of labelled data required to train and learn the model parameters, where a high volume of data will increase the algorithm’s performance and the classifier’s ability to generalise correctly into new, and previously unseen data. Commonly, the labelling process of ground truth data, which is required for supervised algorithms, must be done manually by the user, being tedious, time-consumi...
With the proliferation of social media, gathering data has became cheaper and easier than before. Ho...
Built-in sensors in most modern smartphones open multipleopportunities for novel context-aware appli...
To filter noise or detect features within physiological signals, it is often effective to encode exp...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
In recent years research on human activity recognition using wearable sensors has enabled to achieve...
Abstract—In Human Activity Recognition (HAR) supervised and semi-supervised training are important t...
In Human Activity Recognition (HAR) supervised and semi-supervised training are important tools for ...
Recognizing human activities from wearable sensor data is an important problem, particularly for hea...
Automated activity recognition systems that use probabilistic models require labeled data sets in tr...
Human activity recognition (HAR) is highly relevant to many real-world domains like safety, security...
Human activity recognition (HAR) is highly relevant to many real-world do- mains like safety, securi...
PhD ThesisIn Human Activity Recognition (HAR), supervised and semi-supervised training are importan...
The most effective data-driven methods for human activities recognition (HAR) are based on supervise...
Within the Artificial Intelligence field, and, more specifically, in the context of Machine Learnin...
Crowdsourcing has become an popular approach for annotating the large quantities of data required to...
With the proliferation of social media, gathering data has became cheaper and easier than before. Ho...
Built-in sensors in most modern smartphones open multipleopportunities for novel context-aware appli...
To filter noise or detect features within physiological signals, it is often effective to encode exp...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
In recent years research on human activity recognition using wearable sensors has enabled to achieve...
Abstract—In Human Activity Recognition (HAR) supervised and semi-supervised training are important t...
In Human Activity Recognition (HAR) supervised and semi-supervised training are important tools for ...
Recognizing human activities from wearable sensor data is an important problem, particularly for hea...
Automated activity recognition systems that use probabilistic models require labeled data sets in tr...
Human activity recognition (HAR) is highly relevant to many real-world domains like safety, security...
Human activity recognition (HAR) is highly relevant to many real-world do- mains like safety, securi...
PhD ThesisIn Human Activity Recognition (HAR), supervised and semi-supervised training are importan...
The most effective data-driven methods for human activities recognition (HAR) are based on supervise...
Within the Artificial Intelligence field, and, more specifically, in the context of Machine Learnin...
Crowdsourcing has become an popular approach for annotating the large quantities of data required to...
With the proliferation of social media, gathering data has became cheaper and easier than before. Ho...
Built-in sensors in most modern smartphones open multipleopportunities for novel context-aware appli...
To filter noise or detect features within physiological signals, it is often effective to encode exp...