This letter presents a framework for recognition and prediction of ongoing human motions. The predictions generated by this framework could be used in a controller for a robotic device, enabling the emergence of intuitive and predictable interactions between humans and a robotic collaborator. The framework includes motion onset detection, phase speed estimation, intent estimation and conditioning. For recognition and prediction of a motion, the framework makes use of a motion model database. This database contains several motion models learned using the probabilistic Principal Component Analysis (PPCA) method. The proposed framework is evaluated with joint angle trajectories of eight subjects performing squatting, stooping and lifting tasks...
With growing numbers of intelligent autonomous systems in human environments, the ability of such sy...
Cette thèse se situe à l’intersection de l’apprentissage automatique et de la robotique humanoïde, d...
The capacity of a system to automatically analyze and predict the performance of a human in a partic...
Abstract This paper proposes an interaction learning method suited for semi-autonomous robots that w...
This paper proposes a method to achieve fast and fluid human–robot interaction by estimating the pro...
International audienceWhen a human is interacting physically with a robot to accomplish a task, his/...
Thesis: Ph. D. in Autonomous Systems, Massachusetts Institute of Technology, Department of Aeronauti...
Abstract—This paper proposes a probabilistic framework based on movement primitives for robots that ...
The ability to accurately predict human motion is imperative for any human-robot interaction applica...
Physical human-robot interaction is receiving a growing attention from the scientific community. One...
Abstract—The task of physically assisting humans requires from robots the ability to adapt in many d...
Robots are becoming integral parts of our environments, from factory floors to hospitals, and all th...
Collaboration between humans and robots is becoming an increasingly commonoccurrence in both industr...
Human-robot collaboration has gained a notable prominence in Industry 4.0, as the use of collaborati...
International audienceIndustry 4.0 transforms classical industrial systems into more human-centric a...
With growing numbers of intelligent autonomous systems in human environments, the ability of such sy...
Cette thèse se situe à l’intersection de l’apprentissage automatique et de la robotique humanoïde, d...
The capacity of a system to automatically analyze and predict the performance of a human in a partic...
Abstract This paper proposes an interaction learning method suited for semi-autonomous robots that w...
This paper proposes a method to achieve fast and fluid human–robot interaction by estimating the pro...
International audienceWhen a human is interacting physically with a robot to accomplish a task, his/...
Thesis: Ph. D. in Autonomous Systems, Massachusetts Institute of Technology, Department of Aeronauti...
Abstract—This paper proposes a probabilistic framework based on movement primitives for robots that ...
The ability to accurately predict human motion is imperative for any human-robot interaction applica...
Physical human-robot interaction is receiving a growing attention from the scientific community. One...
Abstract—The task of physically assisting humans requires from robots the ability to adapt in many d...
Robots are becoming integral parts of our environments, from factory floors to hospitals, and all th...
Collaboration between humans and robots is becoming an increasingly commonoccurrence in both industr...
Human-robot collaboration has gained a notable prominence in Industry 4.0, as the use of collaborati...
International audienceIndustry 4.0 transforms classical industrial systems into more human-centric a...
With growing numbers of intelligent autonomous systems in human environments, the ability of such sy...
Cette thèse se situe à l’intersection de l’apprentissage automatique et de la robotique humanoïde, d...
The capacity of a system to automatically analyze and predict the performance of a human in a partic...