How to recognise whether an observed person walks or runs? We consider a dynamic environment where observations (e.g. the posture of a person) are caused by different dynamic processes (walking or running) which are active one at a time and which may transition from one to another at any time. For this setup, switching dynamic models have been suggested previously, mostly, for linear and nonlinear dynamics in discrete time. Motivated by basic principles of computations in the brain (dynamic, internal models) we suggest a model for switching nonlinear differential equations. The switching process in the model is implemented by a Hopfield network and we use parametric dynamic movement primitives to represent arbitrary rhythmic motions. The mo...
<div><p>Tracking moving objects, including one’s own body, is a fundamental ability of higher organi...
Attempts to understand human movement systems from the perspective of nonlinear dynamics have increa...
Integrating dynamic systems modeling and machine learning generates an exploratory nonlinear solutio...
How to recognise whether an observed person walks or runs? We consider a dy-namic environment where ...
We introduce parametric switching linear dynamic systems (P-SLDS) for learning and interpretation of...
Switching Linear Dynamic System (SLDS) models are a popular technique for modeling complex nonlinear...
Models of perceptual decision making, which are based on dynamic stimuli such as random dot motion, ...
The complexity of human movement arises from the management of redundant (bio)mechanical degrees of ...
© 1991-2012 IEEE. In this paper, we propose a non-parametric method for state estimation of high-dim...
Human activities are characterised by the spatio-temporal structure of their motion patterns. Such s...
The empirical observation of human locomotion has found considerable utility in the diagnosis of num...
Nonlinear analyses investigate the dynamics of observed time-ordered data. Such dynamics, for this t...
Abstract!With the advent of low cost high powered computing, cameras need not just be used to record...
We analyse the dynamics of human gait with simple nonlinear time series analysis methods that are ap...
We present an approach to learn a model to estimate the dynamical states at continuous and discrete ...
<div><p>Tracking moving objects, including one’s own body, is a fundamental ability of higher organi...
Attempts to understand human movement systems from the perspective of nonlinear dynamics have increa...
Integrating dynamic systems modeling and machine learning generates an exploratory nonlinear solutio...
How to recognise whether an observed person walks or runs? We consider a dy-namic environment where ...
We introduce parametric switching linear dynamic systems (P-SLDS) for learning and interpretation of...
Switching Linear Dynamic System (SLDS) models are a popular technique for modeling complex nonlinear...
Models of perceptual decision making, which are based on dynamic stimuli such as random dot motion, ...
The complexity of human movement arises from the management of redundant (bio)mechanical degrees of ...
© 1991-2012 IEEE. In this paper, we propose a non-parametric method for state estimation of high-dim...
Human activities are characterised by the spatio-temporal structure of their motion patterns. Such s...
The empirical observation of human locomotion has found considerable utility in the diagnosis of num...
Nonlinear analyses investigate the dynamics of observed time-ordered data. Such dynamics, for this t...
Abstract!With the advent of low cost high powered computing, cameras need not just be used to record...
We analyse the dynamics of human gait with simple nonlinear time series analysis methods that are ap...
We present an approach to learn a model to estimate the dynamical states at continuous and discrete ...
<div><p>Tracking moving objects, including one’s own body, is a fundamental ability of higher organi...
Attempts to understand human movement systems from the perspective of nonlinear dynamics have increa...
Integrating dynamic systems modeling and machine learning generates an exploratory nonlinear solutio...