论文标题
通过贝叶斯生成模型的概率推断,基于空间概念的导航通过人类语音说明进行说明
Spatial Concept-Based Navigation with Human Speech Instructions via Probabilistic Inference on Bayesian Generative Model
论文作者
论文摘要
机器人不仅需要自主学习空间概念,而且还需要在家庭环境中使用此类知识。空间概念代表了从机器人的空间体验中获得的多模式类别,包括视觉,语音语言和自我位置。这项研究的目的是使移动机器人通过使用空间概念对贝叶斯生成模型的概率推断,使用人类语音说明(例如“去厨房”)执行导航任务。具体而言,基于Control-As-As-Chimenterwork的概率分布的最大化,将路径规划正式化为在语音指导下的路径环境上的最大化。此外,我们描述了基于贝叶斯生成模型和控制问题在内的概率推断之间的关系,包括增强学习。我们使用获得的空间概念来证明基于人类教学的路径规划,以验证拟议方法在模拟器和实际环境中的有用性。在实验上,用户语音命令指示的位置显示出很高的概率值,并且正确估计了针对目标位置的轨迹。我们的方法基于关于决策的概率推论,可以进一步改善机器人自主权。
Robots are required to not only learn spatial concepts autonomously but also utilize such knowledge for various tasks in a domestic environment. Spatial concept represents a multimodal place category acquired from the robot's spatial experience including vision, speech-language, and self-position. The aim of this study is to enable a mobile robot to perform navigational tasks with human speech instructions, such as `Go to the kitchen', via probabilistic inference on a Bayesian generative model using spatial concepts. Specifically, path planning was formalized as the maximization of probabilistic distribution on the path-trajectory under speech instruction, based on a control-as-inference framework. Furthermore, we described the relationship between probabilistic inference based on the Bayesian generative model and control problem including reinforcement learning. We demonstrated path planning based on human instruction using acquired spatial concepts to verify the usefulness of the proposed approach in the simulator and in real environments. Experimentally, places instructed by the user's speech commands showed high probability values, and the trajectory toward the target place was correctly estimated. Our approach, based on probabilistic inference concerning decision-making, can lead to further improvement in robot autonomy.