Katsumata Yuki, Taniguchi Akira, Hagiwara Yoshinobu, Taniguchi Tadahiro
Department of Information Science and Engineering, Ritsumeikan University, Kyoto, Japan.
Front Robot AI. 2019 May 28;6:31. doi: 10.3389/frobt.2019.00031. eCollection 2019.
An autonomous robot performing tasks in a human environment needs to recognize semantic information about places. Semantic mapping is a task in which suitable semantic information is assigned to an environmental map so that a robot can communicate with people and appropriately perform tasks requested by its users. We propose a novel statistical semantic mapping method called SpCoMapping, which integrates probabilistic spatial concept acquisition based on multimodal sensor information and a Markov random field applied for learning the arbitrary shape of a place on a map.SpCoMapping can connect multiple words to a place in a semantic mapping process using user utterances without pre-setting the list of place names. We also develop a nonparametric Bayesian extension of SpCoMapping that can automatically estimate an adequate number of categories. In the experiment in the simulation environments, we showed that the proposed method generated better semantic maps than previous semantic mapping methods; our semantic maps have categories and shapes similar to the ground truth provided by the user. In addition, we showed that SpCoMapping could generate appropriate semantic maps in a real-world environment.
在人类环境中执行任务的自主机器人需要识别有关地点的语义信息。语义映射是一项将合适的语义信息分配给环境地图的任务,以便机器人能够与人交流并适当地执行用户要求的任务。我们提出了一种名为SpCoMapping的新型统计语义映射方法,该方法集成了基于多模态传感器信息的概率空间概念获取以及用于学习地图上任意形状地点的马尔可夫随机场。SpCoMapping可以在语义映射过程中使用用户话语将多个单词连接到一个地点,而无需预先设置地名列表。我们还开发了SpCoMapping的非参数贝叶斯扩展,它可以自动估计足够数量的类别。在模拟环境中的实验中,我们表明所提出的方法比以前的语义映射方法生成了更好的语义地图;我们的语义地图具有与用户提供的地面真值相似的类别和形状。此外,我们表明SpCoMapping可以在现实世界环境中生成合适的语义地图。