Supervised learning methods have been widely applied to activity recognition. The prevalent success of existing methods, however, has two crucial prerequisites: proper feature extraction and sufficient labeled training data. The former is important to differentiate activities, while the latter is crucial to build a precise learning model. These two prerequisites have become bottlenecks to make existing methods more practical. Most existing feature extraction methods highly depend on domain knowledge, while labeled data requires intensive human annotation effort. Therefore, in this paper, we propose a novel method, named Distribution-based Semi-Supervised Learning, to tackle the aforementioned limitations. The proposed method is capable of a...
Semi-supervised learning is crucial for alleviating la-belling burdens in people-centric sensing. Ho...
In recent years research on human activity recognition using wearable sensors has enabled to achieve...
Semi-supervised learning is crucial for alleviating labelling burdens in people-centric sensing. How...
Supervised learning methods have been widely applied to activity recognition. The prevalent success ...
Supervised learning methods have been widely applied to activity recognition. The prevalent success ...
Sensor-based activity recognition aims to predict users' activities from multi-dimensional streams o...
Wearable-sensor-based activity recognition aims to predict users' activities from multi-dimensional ...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Abstract. Sensor-based human activity recognition aims to automati-cally identify human activities f...
Activity recognition is central to many motion analysis applications ranging from health assessment ...
Despite the active research into, and the development of, human activity recognition over the decade...
On-body sensing has enabled scalable and unobtrusive activity recognition for context-aware wearable...
Despite the active research into, and the development of, human activity recognition over the decade...
Semi-supervised learning is crucial for alleviating la-belling burdens in people-centric sensing. Ho...
Semi-supervised learning is crucial for alleviating la-belling burdens in people-centric sensing. Ho...
In recent years research on human activity recognition using wearable sensors has enabled to achieve...
Semi-supervised learning is crucial for alleviating labelling burdens in people-centric sensing. How...
Supervised learning methods have been widely applied to activity recognition. The prevalent success ...
Supervised learning methods have been widely applied to activity recognition. The prevalent success ...
Sensor-based activity recognition aims to predict users' activities from multi-dimensional streams o...
Wearable-sensor-based activity recognition aims to predict users' activities from multi-dimensional ...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Abstract. Sensor-based human activity recognition aims to automati-cally identify human activities f...
Activity recognition is central to many motion analysis applications ranging from health assessment ...
Despite the active research into, and the development of, human activity recognition over the decade...
On-body sensing has enabled scalable and unobtrusive activity recognition for context-aware wearable...
Despite the active research into, and the development of, human activity recognition over the decade...
Semi-supervised learning is crucial for alleviating la-belling burdens in people-centric sensing. Ho...
Semi-supervised learning is crucial for alleviating la-belling burdens in people-centric sensing. Ho...
In recent years research on human activity recognition using wearable sensors has enabled to achieve...
Semi-supervised learning is crucial for alleviating labelling burdens in people-centric sensing. How...