We present an approach to make planning adaptive in order to enable context-aware mobile robot navigation. We integrate a model-based planner with a distributed learning system based on reservoir computing, to yield personalized planning and resource allocations that account for user preferences and environmental changes. We demonstrate our approach in a real robot ecology, and show that the learning system can effectively exploit historical data about navigation performance to modify the models in the planner, without any prior information oncerning the phenomenon being modeled. The plans produced by the adapted CL fail more rarely than the ones generated by a non-adaptive planner. The distributed learning system handles the new learning t...
'Context-awareness' could be one of the most desired fundamental abilities that a robot should have ...
Motion planning is essential for mobile robot successful navigation. There are many algorithms for m...
Most of existing robot learning methods have con-sidered the environment where their robots work un-...
For a mobile robot that performs online model learning, the learning rate is a function of the robot...
In order to create mobile robots that can autonomously navigate real-world environments, we need gen...
Real world robot tasks are so complex that it is hard to hand-tune all of the domain knowledge, espe...
International audienceThe idea of integrating robots and smart environments is becoming more popular...
Adaptable navigation is critical to extend the range of applications for mobile robots in daily life...
In robotics, path planning refers to finding a short. collision-free path from an initial robot conf...
The problem of adapting mobile robot navigation to changes in the environment is usually approached ...
Smart robotic environments combine traditional (ambient) sensing devices and mobile robots. This com...
Abstract—This work proposes a general Reservoir Computing (RC) learning framework which can be used ...
© 2019 IEEE. Last-mile delivery systems commonly propose the use of autonomous robotic vehicles to i...
The need for improving the robustness, as well as the ability to adapt to different operational cond...
International audienceAs more robots are being deployed into human environments, a human-aware navig...
'Context-awareness' could be one of the most desired fundamental abilities that a robot should have ...
Motion planning is essential for mobile robot successful navigation. There are many algorithms for m...
Most of existing robot learning methods have con-sidered the environment where their robots work un-...
For a mobile robot that performs online model learning, the learning rate is a function of the robot...
In order to create mobile robots that can autonomously navigate real-world environments, we need gen...
Real world robot tasks are so complex that it is hard to hand-tune all of the domain knowledge, espe...
International audienceThe idea of integrating robots and smart environments is becoming more popular...
Adaptable navigation is critical to extend the range of applications for mobile robots in daily life...
In robotics, path planning refers to finding a short. collision-free path from an initial robot conf...
The problem of adapting mobile robot navigation to changes in the environment is usually approached ...
Smart robotic environments combine traditional (ambient) sensing devices and mobile robots. This com...
Abstract—This work proposes a general Reservoir Computing (RC) learning framework which can be used ...
© 2019 IEEE. Last-mile delivery systems commonly propose the use of autonomous robotic vehicles to i...
The need for improving the robustness, as well as the ability to adapt to different operational cond...
International audienceAs more robots are being deployed into human environments, a human-aware navig...
'Context-awareness' could be one of the most desired fundamental abilities that a robot should have ...
Motion planning is essential for mobile robot successful navigation. There are many algorithms for m...
Most of existing robot learning methods have con-sidered the environment where their robots work un-...