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Quantizing Euclidean Motions via Double-Coset Decomposition

机译:通过双陪集分解量化欧几里得运动

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摘要

Concepts from mathematical crystallography and group theory are used here to quantize the group of rigid-body motions, resulting in a “motion alphabet” with which robot motion primitives are expressed. From these primitives it is possible to develop a dictionary of physical actions. Equipped with an alphabet of the sort developed here, intelligent actions of robots in the world can be approximated with finite sequences of characters, thereby forming the foundation of a language in which robot motion is articulated. In particular, we use the discrete handedness-preserving symmetries of macromolecular crystals (known in mathematical crystallography as Sohncke space groups) to form a coarse discretization of the space SE(3) of rigid-body motions. This discretization is made finer by subdividing using the concept of double-coset decomposition. More specifically, a very efficient, equivolumetric quantization of spatial motion can be defined using the group-theoretic concept of a double-coset decomposition of the form ΓSE(3)/Δ, where Γ is a Sohncke space group and Δ is a finite group of rotational symmetries such as those of the icosahedron. The resulting discrete alphabet is based on a very uniform sampling of SE(3) and is a tool for describing the continuous trajectories of robots and humans. An efficient coarse-to-fine search algorithm is presented to round off any motion sampled from the continuous group of motions to the nearest element of our alphabet. It is shown that our alphabet and this efficient rounding algorithm can be used as a geometric data structure to accelerate the performance of other sampling schemes designed for desirable dispersion or discrepancy properties. Moreover, the general “signals to symbols” problem in artificial intelligence is cast in this framework for robots moving continuously in the world.
机译:这里使用了数学晶体学和群论的概念来量化刚体运动的群,从而产生一个“运动字母”,用以表达机器人运动原语。从这些原语中,可以开发出物理动作的字典。配备了这里开发的那种字母,可以用有限的字符序列来近似世界上机器人的智能动作,从而构成了表达机器人运动的语言的基础。特别是,我们使用大分子晶体的离散保持对称性(在数学晶体学中称为Sohncke空间群)来形成刚体运动的空间SE(3)的粗糙离散化。通过使用双陪集分解的概念细分,可以使离散化更好。更具体地,可以使用形式为Γ SE(3)/Δ的双陪集分解的组理论概念来定义空间运动的非常有效的等体积量化,其中Γ是Sohncke空间群,而Δ是有限的一组旋转对称性,例如二十面体。产生的离散字母基于SE(3)的非常均匀的采样,并且是用于描述机器人和人类的连续轨迹的工具。提出了一种有效的从粗到细搜索算法,可以将从连续运动组采样到的所有运动四舍五入到字母表中最接近的元素。结果表明,我们的字母和这种有效的舍入算法可以用作几何数据结构,以加快为理想色散或差异属性设计的其他采样方案的性能。而且,人工智能的一般“信号到符号”问题是在这种框架下投放的,用于在世界上不断移动的机器人。

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