In a collaborative scenario, robots working side by side with humans might rely on vision sensors to monitor the activity of the other agent. When occlusions of the human body occur, both the safety of the cooperation and the performance of the team can be penalized, since the robot could receive incorrect information about the ongoing cooperation. In this work, we propose a novel particle filter algorithm that, by merging the data acquired through a RGB-D camera and a MR headset, estimates online the human wrist position. This algorithm allows to significantly reduce the uncertainty of the human pose estimation, in case of both static and dynamic occlusions. To this purpose, the proposed particle filter is integrated with a detailed virtua...
In human-robot collaboration, perception plays a major role in enabling the robot to understand the ...
Human-Robot interaction represents a cornerstone of mobile robotics, especially within the field of ...
International audienceWe present a markerless human motion capture system that estimates the 3D posi...
In a collaborative scenario, robots working side by side with humans might rely on vision sensors to...
International audienceWe address the problem of human pose and posture estimation without any high p...
In this paper, we present a Bayesian algorithm based on particle filters to estimate the camera pose...
This paper utilizes a human-robot interface system which incorporates particle filter (PF) and adapt...
This Master’s thesis proposes a working approach to combining data from multiple Kinect depth sensor...
3D upper body pose estimation is a topic greatly studied by the computer vision society because it i...
In this paper, we present a Bayesian algorithm based on particle filters to estimate the camera pos...
Pose estimation is one of the most important tasks in mobile robotics. The problem consist in estima...
In this thesis we are interested in designing a mobile robot able to analyze the behavior and movem...
International audienceIn this paper, we present new solutions for the problem of estimating the came...
The paper deals with a system for simultaneous people tracking and posture recognition in cluttered ...
Environments, in which robots can assist humans both in production tasks as well as in everyday task...
In human-robot collaboration, perception plays a major role in enabling the robot to understand the ...
Human-Robot interaction represents a cornerstone of mobile robotics, especially within the field of ...
International audienceWe present a markerless human motion capture system that estimates the 3D posi...
In a collaborative scenario, robots working side by side with humans might rely on vision sensors to...
International audienceWe address the problem of human pose and posture estimation without any high p...
In this paper, we present a Bayesian algorithm based on particle filters to estimate the camera pose...
This paper utilizes a human-robot interface system which incorporates particle filter (PF) and adapt...
This Master’s thesis proposes a working approach to combining data from multiple Kinect depth sensor...
3D upper body pose estimation is a topic greatly studied by the computer vision society because it i...
In this paper, we present a Bayesian algorithm based on particle filters to estimate the camera pos...
Pose estimation is one of the most important tasks in mobile robotics. The problem consist in estima...
In this thesis we are interested in designing a mobile robot able to analyze the behavior and movem...
International audienceIn this paper, we present new solutions for the problem of estimating the came...
The paper deals with a system for simultaneous people tracking and posture recognition in cluttered ...
Environments, in which robots can assist humans both in production tasks as well as in everyday task...
In human-robot collaboration, perception plays a major role in enabling the robot to understand the ...
Human-Robot interaction represents a cornerstone of mobile robotics, especially within the field of ...
International audienceWe present a markerless human motion capture system that estimates the 3D posi...