We present a human-centric spatiotemporal model for service robots operating in densely populated environments for long time periods. The method integrates observations of pedestrians performed by a mobile robot at different locations and times into a memory efficient model, that represents the spatial layout of natural pedestrian flows and how they change over time. To represent temporal variations of the observed flows, our method does not model the time in a linear fashion, but by several dimensions wrapped into themselves. This representation of time can capture long-term (i.e. days to weeks) periodic patterns of peoples’ routines and habits. Knowledge of these patterns allows making long-term predictions of future human presence an...
The efficiency of autonomous robots depends on how well they understand their operating environment....
The efficiency of autonomous robots depends on how well they understand their operating environment....
The thesis reports on a data-driven human trajectory prediction model to support robot navigation in...
We present a human-centric spatio-temporal model for service robots operating in densely populated e...
We present a human-centric spatio-temporal model for service robots operating in densely populated e...
We propose an efficient spatio-temporal model for mobile autonomous robots operating in human popula...
Socially compliant robot navigation is one of the key aspects for long-term acceptance of mobile rob...
In this paper we present an effective spatio-temporal model for motion planning computed using a nov...
Understanding how people are likely to behave in an environment is a key requirement for efficient a...
This work presents a non-parametric spatiotemporal model for mapping human activity by mobile autono...
Understanding how people are likely to move is key to efficient and safe robot navigation in human e...
Models of human behaviour, such as pedestrian flows, are beneficial for safe and efficient operation...
In this paper, we introduce a time-dependent probabilistic map able to model and predict future flow...
The efficiency of autonomous robots depends on how well they understand their operating environment....
We propose a novel spatio-temporal mobile-robot exploration method for dynamic, human-populated envi...
The efficiency of autonomous robots depends on how well they understand their operating environment....
The efficiency of autonomous robots depends on how well they understand their operating environment....
The thesis reports on a data-driven human trajectory prediction model to support robot navigation in...
We present a human-centric spatio-temporal model for service robots operating in densely populated e...
We present a human-centric spatio-temporal model for service robots operating in densely populated e...
We propose an efficient spatio-temporal model for mobile autonomous robots operating in human popula...
Socially compliant robot navigation is one of the key aspects for long-term acceptance of mobile rob...
In this paper we present an effective spatio-temporal model for motion planning computed using a nov...
Understanding how people are likely to behave in an environment is a key requirement for efficient a...
This work presents a non-parametric spatiotemporal model for mapping human activity by mobile autono...
Understanding how people are likely to move is key to efficient and safe robot navigation in human e...
Models of human behaviour, such as pedestrian flows, are beneficial for safe and efficient operation...
In this paper, we introduce a time-dependent probabilistic map able to model and predict future flow...
The efficiency of autonomous robots depends on how well they understand their operating environment....
We propose a novel spatio-temporal mobile-robot exploration method for dynamic, human-populated envi...
The efficiency of autonomous robots depends on how well they understand their operating environment....
The efficiency of autonomous robots depends on how well they understand their operating environment....
The thesis reports on a data-driven human trajectory prediction model to support robot navigation in...