©2006 Springer-Verlag Berlin Heidelberg. The original publication is available at www.springerlink.comDOI: 10.1007/s11263-007-0062-zSwitching Linear Dynamic System (SLDS) models are a popular technique for modeling complex nonlinear dynamic systems. An SLDS provides the possibility to describe complex temporal patterns more concisely and accurately than an HMM by using continuous hidden states. However, the use of SLDS models in practical applications is challenging for several reasons. First, exact inference in SLDS models is computationally intractable. Second, the geometric duration model induced in standard SLDSs limits their representational power. Third, standard SLDSs do not provide a systematic way to robustly interpret systema...
This paper presents a method for learning discrete robot motions from a set of demonstrations. We mo...
The problem of acquiring multiple tasks from demonstration is typi- cally divided in two sequential ...
International audienceModeling the temporal behavior of data is of primordial importance in many sci...
Switching Linear Dynamic System (SLDS) models are a popular technique for modeling complex nonlinear...
We introduce parametric switching linear dynamic systems (P-SLDS) for learning and interpretation of...
We introduce Segmental Switching Linear Dynamic Systems (S-SLDS), which improve on standard SLDSs b...
©2005. American Association for Artificial Intelligence. The original publication is available at: w...
©2006 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for al...
Many complex dynamical phenomena can be effectively modeled by a system that switches among a set of...
Many complex dynamical phenomena can be effectively modeled by a system that switches among a set of...
Many nonlinear dynamical phenomena can be effectively modeled by a system that switches among a set ...
Automated analysis of temporal data is a task of utmost importance for intelligent machines. For exa...
This paper aims to present a structured variational inference algorithm for switching linear dynamic...
How to recognise whether an observed person walks or runs? We consider a dynamic environment where o...
How to recognise whether an observed person walks or runs? We consider a dy-namic environment where ...
This paper presents a method for learning discrete robot motions from a set of demonstrations. We mo...
The problem of acquiring multiple tasks from demonstration is typi- cally divided in two sequential ...
International audienceModeling the temporal behavior of data is of primordial importance in many sci...
Switching Linear Dynamic System (SLDS) models are a popular technique for modeling complex nonlinear...
We introduce parametric switching linear dynamic systems (P-SLDS) for learning and interpretation of...
We introduce Segmental Switching Linear Dynamic Systems (S-SLDS), which improve on standard SLDSs b...
©2005. American Association for Artificial Intelligence. The original publication is available at: w...
©2006 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for al...
Many complex dynamical phenomena can be effectively modeled by a system that switches among a set of...
Many complex dynamical phenomena can be effectively modeled by a system that switches among a set of...
Many nonlinear dynamical phenomena can be effectively modeled by a system that switches among a set ...
Automated analysis of temporal data is a task of utmost importance for intelligent machines. For exa...
This paper aims to present a structured variational inference algorithm for switching linear dynamic...
How to recognise whether an observed person walks or runs? We consider a dynamic environment where o...
How to recognise whether an observed person walks or runs? We consider a dy-namic environment where ...
This paper presents a method for learning discrete robot motions from a set of demonstrations. We mo...
The problem of acquiring multiple tasks from demonstration is typi- cally divided in two sequential ...
International audienceModeling the temporal behavior of data is of primordial importance in many sci...