This paper proposes a hierarchical Bayesian model based on spatial concepts that enables a robot to transfer the knowledge of places from experienced environments to a new environment. The transfer of knowledge based on spatial concepts is modeled as the calculation process of the posterior distribution based on the observations obtained in each environment with the parameters of spatial concepts generalized to environments as prior knowledge. We conducted experiments to evaluate the generalization performance of spatial knowledge for general places such as kitchens and the adaptive performance of spatial knowledge for unique places such as `Emma's room' in a new environment. In the experiments, the accuracies of the proposed method and conventional methods were compared in the prediction task of location names from an image and a position, and the prediction task of positions from a location name. The experimental results demonstrated that the proposed method has a higher prediction accuracy of location names and positions than the conventional method owing to the transfer of knowledge.
翻译:本文提出一个基于空间概念的贝叶斯等级模型,使机器人能够将有关地方的知识从有经验的环境转移到新的环境; 以空间概念为基础的知识转让,以基于每个环境中观测到的空间概念参数为基础,以空间概念的参数作为以前的知识,在每种环境中进行后方分布的计算过程为模型; 我们进行了实验,以评价一般地方,如厨房的空间技术一般性能,以及空间知识在新环境中“Emma'房间”等独特地方的适应性性性性能; 在实验中,在从图像和位置预测地点名称的预测任务中,比较了拟议方法和传统方法的精度,以及从地点名称预测任务中从地点名称进行的位置预测的任务; 实验结果表明,由于知识的转让,拟议方法对地点名称和位置的预测准确性高于常规方法。