首页> 外文会议>Human-Robot Interaction (HRI 2010), 2010 >Toward understanding natural language directions
【24h】

Toward understanding natural language directions

机译:努力理解自然语言方向

获取原文

摘要

Speaking using unconstrained natural language is an intuitive and flexible way for humans to interact with robots. Understanding this kind of linguistic input is challenging because diverse words and phrases must be mapped into structures that the robot can understand, and elements in those structures must be grounded in an uncertain environment. We present a system that follows natural language directions by extracting a sequence of spatial description clauses from the linguistic input and then infers the most probable path through the environment given only information about the environmental geometry and detected visible objects. We use a probabilistic graphical model that factors into three key components. The first component grounds landmark phrases such as ¿the computers¿ in the perceptual frame of the robot by exploiting co-occurrence statistics from a database of tagged images such as Flickr. Second, a spatial reasoning component judges how well spatial relations such as ¿past the computers¿ describe a path. Finally, verb phrases such as ¿turn right¿ are modeled according to the amount of change in orientation in the path. Our system follows 60% of the directions in our corpus to within 15 meters of the true destination, significantly outperforming other approaches.
机译:使用不受限制的自然语言进行说话是人类与机器人进行交互的一种直观而灵活的方式。理解这种语言输入具有挑战性,因为必须将各种单词和短语映射到机器人可以理解的结构中,并且这些结构中的元素必须以不确定的环境为基础。我们提出了一个遵循自然语言方向的系统,即从语言输入中提取一系列空间描述从句,然后在仅给出有关环境几何形状和检测到的可见物体的信息的情况下,推断出通过环境的最可能路径。我们使用概率图形模型,将其分为三个关键部分。第一个组件通过利用来自标记图像(例如Flickr)的数据库中的共现统计信息,在机器人的感知框架中使诸如Ã₂‚thecomputersÃÂ,,之类的地标性短语成为基础。其次,空间推理组件判断诸如ƒÂ,Â,pÂ,Â,计算机等的空间关系如何描述一条路径。最后,根据路径中方向变化的数量来建模动词短语,例如ƒƒ‚‚¿我们的系统遵循语料库中60%的指示到达真实目的地的15米以内,大大优于其他方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号