Ontology based Optimized Algorithms to Communicate with a Service Robot using a User Command with Unknown Terms

U. Rajapaksha, C. Jayawardena
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引用次数: 11

Abstract

In real world applications, seamless integration of heterogeneous robots is very important to complete a task given by high level user instruction with unknown terms to all robotic devices simultaneously. In this research, we have used the technologies in Semantic Web mainly with the use of the ontology to represent the meaning of the unknown terms in the given high level instruction. If a user has given an instruction in domestic environment as “clean My Room 01 while finding my key for the car” to clean different locations with different capabilities and there can be robot who does not the meaning of the “key”. The robot can get the meaning of the unknown term by communicating with the semantic analyzer which is working with the ontology. According to our analysis we have proved that the object represented by the unknown term can be detected more accurately with compared to existing object detection algorithms since our ontology can represents more concepts related to the given object. The results indicate that if number of unknown terms in the command are increased then the time taken to process the command also be increased.
基于本体的未知项用户指令与服务机器人通信优化算法
在实际应用中,异构机器人的无缝集成对于同时完成未知术语的高级用户指令对所有机器人设备的任务非常重要。在本研究中,我们主要使用了语义网中的技术,并使用本体来表示给定高级指令中未知术语的含义。如果用户在家庭环境中给出“清洁我的房间01,同时找到我的车钥匙”的指令,那么机器人就会以不同的能力清洁不同的位置,并且可能不知道“钥匙”的含义。机器人通过与与本体一起工作的语义分析器进行通信,获取未知术语的含义。根据我们的分析,我们证明了与现有的对象检测算法相比,未知项表示的对象可以更准确地检测到,因为我们的本体可以表示与给定对象相关的更多概念。结果表明,如果命令中未知项的数量增加,则处理命令所花费的时间也会增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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