Abstract—Human activity recognition is crucial for intuitive cooperation between humans and robots. We present an approach for activity recognition for applications in the context of human-robot interaction in industrial settings. The approach is based on spatial and temporal features derived from skeletal data of human workers performing assembly tasks. These features were used to train a machine learning framework, which classifies discrete time frames with Random Forests and subsequently models temporal dependencies between the resulting states with a Hidden Markov Model. We considered the following three groups of activities: Movement, Gestures, and Object handling. A dataset has been collected which is comprised of 24 record-ings of se...
Over the past years, action recognition techniques have gained significant attention in computer vis...
This paper proposes a novel framework for recognizing industrial actions, in the perspective of huma...
In this report, a vision-based framework is proposed for learning and inferring occupant activities ...
We present an approach for monitoring and interpreting hu-man activities based on a novel multimodal...
The application of human-robot-collaborations where at least one human and one robot share a workspa...
Abstract. The ability to recognize human activities is necessary to fa-cilitate natural interaction ...
© Springer International Publishing Switzerland 2015. Capabilities of domestic service robots could ...
Thesis (Ph.D.)--University of Washington, 2020With increasingly high interest in assistive robots an...
Most industrial workplaces involving robots and other apparatus operate behind the fences to remove ...
Automated human activity recognition is an essential task for Human Robot Interaction (HRI). A succe...
Until now, the robots environment was characterized for being parametrized. This means, that all tas...
This thesis investigated the problem of understanding human activities, at different levels of granu...
Action recognition has become a prerequisite approach to fluent Human-Robot Interaction (HRI) due to...
Until now, the robots environment was characterized for being parametrized. This means, that all tas...
This paper proposes a novel framework for recognizing industrial actions, in the perspective of huma...
Over the past years, action recognition techniques have gained significant attention in computer vis...
This paper proposes a novel framework for recognizing industrial actions, in the perspective of huma...
In this report, a vision-based framework is proposed for learning and inferring occupant activities ...
We present an approach for monitoring and interpreting hu-man activities based on a novel multimodal...
The application of human-robot-collaborations where at least one human and one robot share a workspa...
Abstract. The ability to recognize human activities is necessary to fa-cilitate natural interaction ...
© Springer International Publishing Switzerland 2015. Capabilities of domestic service robots could ...
Thesis (Ph.D.)--University of Washington, 2020With increasingly high interest in assistive robots an...
Most industrial workplaces involving robots and other apparatus operate behind the fences to remove ...
Automated human activity recognition is an essential task for Human Robot Interaction (HRI). A succe...
Until now, the robots environment was characterized for being parametrized. This means, that all tas...
This thesis investigated the problem of understanding human activities, at different levels of granu...
Action recognition has become a prerequisite approach to fluent Human-Robot Interaction (HRI) due to...
Until now, the robots environment was characterized for being parametrized. This means, that all tas...
This paper proposes a novel framework for recognizing industrial actions, in the perspective of huma...
Over the past years, action recognition techniques have gained significant attention in computer vis...
This paper proposes a novel framework for recognizing industrial actions, in the perspective of huma...
In this report, a vision-based framework is proposed for learning and inferring occupant activities ...