An activity recognition system essentially processes raw sensor data and maps them into latent activity classes. Most of the previous systems are built with supervised learning techniques and pre-defined data sources, and result in static models. However, in realistic and dynamic environments, original data sources may fail and new data sources become available, a robust activity recognition system should be able to perform evolution automatically with dynamic sensor availability in dynamic environments. In this paper, we propose methods that automatically incorporate dynamically available data sources to adapt and refine the recognition system at run-time. The system is built upon ensemble classifiers which can automatically choose the fea...
Activity recognition is fundamental to many applications envisaged in pervasive computing, especiall...
Research on sensor-based activity recognition has, recently, made significant progress and is attrac...
In this article, we study activity recognition in the context of sensor-rich environments. In these ...
An activity recognition system essentially processes raw sensor data and maps them into latent activ...
Numerous methods have been proposed to address different aspects of human activity recognition. Howe...
Abstract—Advances in sensing, portable computing devices, and wireless communication has lead to an ...
Abstract. Sensor-based human activity recognition aims to automati-cally identify human activities f...
Activity recognition from an on-body sensor network enables context-aware applications in wearable c...
Abstract-Approaches and algorithms for activity recognition have recently made substantial progress ...
Mobile activity recognition focuses on inferring current user activities by leveraging sensory data ...
Mobile activity recognition focuses on inferring current user activities by leveraging sensory data ...
Segmenting sensor events for activity recognition has many key challenges due to its unsupervised na...
Mobile activity recognition focuses on inferring current user activities by leveraging sensory data ...
Segmenting sensor events for activity recognition has many key challenges due to its unsupervised na...
Segmenting sensor events for activity recognition has many key challenges due to its unsupervised na...
Activity recognition is fundamental to many applications envisaged in pervasive computing, especiall...
Research on sensor-based activity recognition has, recently, made significant progress and is attrac...
In this article, we study activity recognition in the context of sensor-rich environments. In these ...
An activity recognition system essentially processes raw sensor data and maps them into latent activ...
Numerous methods have been proposed to address different aspects of human activity recognition. Howe...
Abstract—Advances in sensing, portable computing devices, and wireless communication has lead to an ...
Abstract. Sensor-based human activity recognition aims to automati-cally identify human activities f...
Activity recognition from an on-body sensor network enables context-aware applications in wearable c...
Abstract-Approaches and algorithms for activity recognition have recently made substantial progress ...
Mobile activity recognition focuses on inferring current user activities by leveraging sensory data ...
Mobile activity recognition focuses on inferring current user activities by leveraging sensory data ...
Segmenting sensor events for activity recognition has many key challenges due to its unsupervised na...
Mobile activity recognition focuses on inferring current user activities by leveraging sensory data ...
Segmenting sensor events for activity recognition has many key challenges due to its unsupervised na...
Segmenting sensor events for activity recognition has many key challenges due to its unsupervised na...
Activity recognition is fundamental to many applications envisaged in pervasive computing, especiall...
Research on sensor-based activity recognition has, recently, made significant progress and is attrac...
In this article, we study activity recognition in the context of sensor-rich environments. In these ...