Combining multimodal concept streams from heterogeneous sensors is a problem superficially explored for activity recognition. Most studies explore simple sensors in nearly perfect conditions, where temporal synchronization is guaranteed. Sophisticated fusion schemes adopt problem-specific graphical representations of events that are generally deeply linked with their training data and focused on a single sensor. This paper proposes a hybrid framework between knowledge-driven and probabilistic-driven methods for event representation and recognition. It separates semantic modeling from raw sensor data by using an intermediate semantic representation, namely concepts. It introduces an algorithm for sensor alignment that uses concept similarity...
Purpose –This paper aims to serve two main purposes. In the first instance it aims to it provide an ...
Human activity recognition has become a key research topic in a variety of applications. Modeling ac...
Recognition of activities of daily living (ADLs) is an enabling technology for several ubiquitous co...
Combining multimodal concept streams from heterogeneous sensors is a problem superficially explored ...
We herein present a hierarchical model-based framework for event recognition using multiple sensors....
Visual activity recognition plays a fundamental role in several research fields as a way to extract ...
International audienceVisual activity recognition plays a fundamental role in several research field...
The recognition of activities of daily living is an important research area of interest in recent ye...
MIRRH, held in conjunction with ACM MM 2013.International audienceWe herein present a hierarchical m...
International audienceWe herein present a hierarchical model-based framework for event detection usi...
In the last years, techniques for activity recognition have attracted increasing attention. Among ma...
Machine activity recognition aims to automatically predict human activities from a series of sensor ...
As a result of the rising older people population, the Ambient Assisted Living (AAL) branch is growi...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 2016Until recently, the areas o...
Purpose –This paper aims to serve two main purposes. In the first instance it aims to it provide an ...
Human activity recognition has become a key research topic in a variety of applications. Modeling ac...
Recognition of activities of daily living (ADLs) is an enabling technology for several ubiquitous co...
Combining multimodal concept streams from heterogeneous sensors is a problem superficially explored ...
We herein present a hierarchical model-based framework for event recognition using multiple sensors....
Visual activity recognition plays a fundamental role in several research fields as a way to extract ...
International audienceVisual activity recognition plays a fundamental role in several research field...
The recognition of activities of daily living is an important research area of interest in recent ye...
MIRRH, held in conjunction with ACM MM 2013.International audienceWe herein present a hierarchical m...
International audienceWe herein present a hierarchical model-based framework for event detection usi...
In the last years, techniques for activity recognition have attracted increasing attention. Among ma...
Machine activity recognition aims to automatically predict human activities from a series of sensor ...
As a result of the rising older people population, the Ambient Assisted Living (AAL) branch is growi...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 2016Until recently, the areas o...
Purpose –This paper aims to serve two main purposes. In the first instance it aims to it provide an ...
Human activity recognition has become a key research topic in a variety of applications. Modeling ac...
Recognition of activities of daily living (ADLs) is an enabling technology for several ubiquitous co...