scholarly journals Towards Rapid Multi-robot Learning from Demonstration at the RoboCup Competition

Author(s):  
David Freelan ◽  
Drew Wicke ◽  
Keith Sullivan ◽  
Sean Luke
2019 ◽  
Vol 99 (3-4) ◽  
pp. 589-608 ◽  
Author(s):  
Marco A. C. Simões ◽  
Robson Marinho da Silva ◽  
Tatiane Nogueira

Author(s):  
Hangxin Liu ◽  
Chi Zhang ◽  
Yixin Zhu ◽  
Chenfanfu Jiang ◽  
Song-Chun Zhu

This paper presents a mirroring approach, inspired by the neuroscience discovery of the mirror neurons, to transfer demonstrated manipulation actions to robots. Designed to address the different embodiments between a human (demonstrator) and a robot, this approach extends the classic robot Learning from Demonstration (LfD) in the following aspects:i) It incorporates fine-grained hand forces collected by a tactile glove in demonstration to learn robot’s fine manipulative actions; ii) Through model-free reinforcement learning and grammar induction, the demonstration is represented by a goal-oriented grammar consisting of goal states and the corresponding forces to reach the states, independent of robot embodiments; iii) A physics-based simulation engine is applied to emulate various robot actions and mirrors the actions that are functionally equivalent to the human’s in the sense of causing the same state changes by exerting similar forces. Through this approach, a robot reasons about which forces to exert and what goals to achieve to generate actions (i.e., mirroring), rather than strictly mimicking demonstration (i.e., overimitation). Thus the embodiment difference between a human and a robot is naturally overcome. In the experiment, we demonstrate the proposed approach by teaching a real Baxter robot with a complex manipulation task involving haptic feedback—opening medicine bottles.


2013 ◽  
Vol 823 ◽  
pp. 321-325
Author(s):  
Lu Jin ◽  
Yue Quan Yang ◽  
Chun Bo Ni ◽  
Zhi Qiang Cao ◽  
Yi Fei Kong

With the more robots, the information interaction of multi-robot system becomes more sophisticated and important in a community perception network environment. By exploiting and fusing the learning information of robots in a perception community, the community information sharing mechanism is proposed, as well as updating rules of the community Q-value table. Moreover, considering the existence of delays of learning information transmission, an improved Q-learning method based on homogeneous delays is presented to improve the robot learning efficiency over the community perception network. Finally, the test experiments demonstrate the effectiveness of the proposed scheme.


2014 ◽  
Vol 875-877 ◽  
pp. 1994-1999
Author(s):  
James Aaron Debono ◽  
Gu Fang

For robot application to proliferate in industry, and in unregulated environments, a simple means of programming is required. This paper describes methods for robot Learning from Demonstration (LfD). These methods used an RGB-D sensor for demonstration observation, and used finite state machines (FSMs) for policy derivation. Particularly, a method for object recognition was developed, which required only a single frame of data for training, and was able to perform real-time recognition. A planning method for object grasping was also developed. Experiments with a pick-and-place robot show that the developed methods resulted in object recognition accuracy greater than 99% in cluttered scenes, and manipulation accuracies of below 3mm in linear motion and 2° in rotation.


2014 ◽  
Vol 565 ◽  
pp. 194-197
Author(s):  
Anna Gorbenko

We consider the problem of the task-level robot learning from demonstration. In particular, we consider a model that uses the hierarchical control structure. For this model, we propose the problem of selection of action examples. We present a polynomial time algorithm for solution of this problem. Also, we consider some experimental results for task-level learning from demonstration.


Author(s):  
Abhijeet Ravankar ◽  
Ankit A. Ravankar ◽  
Yukinori Kobayashi ◽  
Takanori Emaru

2011 ◽  
Vol 31 (3) ◽  
pp. 360-375 ◽  
Author(s):  
George Konidaris ◽  
Scott Kuindersma ◽  
Roderic Grupen ◽  
Andrew Barto

Sign in / Sign up

Export Citation Format

Share Document