Title :
Unstructured robot perception through Internet semantic concept learning
Author :
Fengchao Wang ; Dongdong Chen ; Peijiang Yuan
Author_Institution :
Commercial Aircraft Corp. of China Ltd., Shanghai, China
Abstract :
Intelligent robot is one of the most important ongoing technologies both in industry and social life. Smart perception is the key technology for intelligent robots. Lack of training data, there has been many barriers for intelligent robot to learn the unstructured environment. In this paper, an automatic data mining method for smart robots to learn semantic concepts from videos crawled to known Internet video/image websites (e.g. video-Baidu, Bing, Youku) is presented. An updated novel Internet video-mining method is addressed. An automatic graph model generator is addressed as well as the weight assignment for concepts-relationship learning based on known ontology and an automated video source discovery method in concepts detection from the massive Internet videos is proposed. Experimental results with Tera-bytes level videos show that the method is effective and efficient to solve the smart perception for intelligent robots.
Keywords :
Internet; Web sites; data mining; intelligent robots; ontologies (artificial intelligence); Internet image Web site; Internet semantic concept learning; Internet video Web site; Internet video-mining method; automated video source discovery method; automatic data mining method; automatic graph model generator; concept detection; concepts-relationship learning; intelligent robots; ontology; semantic concepts; smart perception; smart robots; tera-bytes level videos; unstructured robot perception; video crawling; weight assignment; Animals; Internet; Ontologies; Semantics; Service robots; Videos; Automatic Data Mining; Graphic-Model Generator; Robot perception; Semantic Concept;
Conference_Titel :
Multisensor Fusion and Information Integration for Intelligent Systems (MFI), 2014 International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6731-5
DOI :
10.1109/MFI.2014.6997683