Abstract. We interpret biological motion trajectories as being com-posed of sequences of sub-blocks or motion primitives. Such primitives, together with the information, when they occur during an observed tra-jectory, provide a compact representation of movement in terms of events that is invariant to temporal shifts. Based on this representation, we present a model for the generation of motion trajectories that consists of two layers. In the lower layer, a trajectory is generated by activat-ing a number of motion primitives from a learned dictionary, according to a given set of activation times and amplitudes. In the upper layer, the process generating the activation times is modeled by a group of Integrate-and-Fire neurons that emits spik...
We present a novel framework for the automatic discovery and recognition of human motion primitives...
Efficient codes have been used effectively in both computer science and neuroscience to better under...
Action representation is a key issue in imitation learning forhumanoids. With the recent finding of ...
Abstract. We interpret biological motion trajectories as composed of sequences of sub-blocks or moti...
We propose a new representation of human body motion which encodes a full motion in a sequence of la...
A central problem in the analysis of motion capture (Mo-Cap) data is how to decompose motion sequenc...
We present an implicit neural representation to learn the spatio-temporal space of kinematic motions...
Abstract. We propose motion manifold learning and motion primitive segmentation framework for human ...
International audienceThis paper addresses the problem of synthesizing in real time the m...
We investigate a novel approach for representation of kinematic trajectories in complex movement sys...
We propose a non-linear generative model for human motion data that uses an undirected model with bi...
Using tools from dynamical systems and systems identification we develop a framework for the study o...
We present a novel method for learning human motion models from unsegmented videos. We propose a uni...
Using tools from dynamical systems and systems identification, we develop a framework for the study ...
Abstract The use of action primitives plays an important role in modeling human and robot actions. A...
We present a novel framework for the automatic discovery and recognition of human motion primitives...
Efficient codes have been used effectively in both computer science and neuroscience to better under...
Action representation is a key issue in imitation learning forhumanoids. With the recent finding of ...
Abstract. We interpret biological motion trajectories as composed of sequences of sub-blocks or moti...
We propose a new representation of human body motion which encodes a full motion in a sequence of la...
A central problem in the analysis of motion capture (Mo-Cap) data is how to decompose motion sequenc...
We present an implicit neural representation to learn the spatio-temporal space of kinematic motions...
Abstract. We propose motion manifold learning and motion primitive segmentation framework for human ...
International audienceThis paper addresses the problem of synthesizing in real time the m...
We investigate a novel approach for representation of kinematic trajectories in complex movement sys...
We propose a non-linear generative model for human motion data that uses an undirected model with bi...
Using tools from dynamical systems and systems identification we develop a framework for the study o...
We present a novel method for learning human motion models from unsegmented videos. We propose a uni...
Using tools from dynamical systems and systems identification, we develop a framework for the study ...
Abstract The use of action primitives plays an important role in modeling human and robot actions. A...
We present a novel framework for the automatic discovery and recognition of human motion primitives...
Efficient codes have been used effectively in both computer science and neuroscience to better under...
Action representation is a key issue in imitation learning forhumanoids. With the recent finding of ...