What Can This Robot Do? Learning from Appearance and Experiments.

arXiv: Artificial Intelligence(2017)

引用 23|浏览36
暂无评分
摘要
When presented with an unknown robot (subject) how can an autonomous agent (learner) figure out what this new robot can do? The subjectu0027s appearance can provide cues to its physical as well as cognitive capabilities. Seeing a humanoid can make one wonder if it can kick balls, climb stairs or recognize faces. What if the learner can request the subject to perform these tasks? We present an approach to make the learner build a model of the subject at a task based on the latteru0027s appearance and refine it by experimentation. Apart from the subjectu0027s inherent capabilities, certain extrinsic factors may affect its performance at a task. Based on the subjectu0027s appearance and prior knowledge about the task a learner can identify a set of potential factors, a subset of which we assume are controllable. Our approach picks values of controllable factors to generate the most informative experiments to test the subject at. Additionally, we present a metric to determine if a factor should be incorporated in the model. We present results of our approach on modeling a humanoid robot at the task of kicking a ball. Firstly, we show that actively picking values for controllable factors, even in noisy experiments, leads to faster learning of the subjectu0027s model for the task. Secondly, starting from a minimal set of factors our metric identifies the set of relevant factors to incorporate in the model. Lastly, we show that the refined model better represents the subjectu0027s performance at the task.
更多
查看译文
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要