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Automation for sewer pipe assessment: CCTV video interpretation algorithm and sewer pipe video assessment (SPVA) system development 원문보기

Automation in construction, v.125, 2021년, pp.103622 -   

Yin, Xianfei (Department of Construction Management and Engineering, University of Twente) ,  Ma, Tianxin (Department of Computing Science, University of Alberta) ,  Bouferguene, Ahmed (Campus Saint-Jean, University of Alberta) ,  Al-Hussein, Mohamed (Department of Civil and Environmental Engineering, University of Alberta)

Abstract AI-Helper 아이콘AI-Helper

Abstract This research aims at improving the automation of the sewer pipe assessment process, specifically in terms of the development of a closed-circuit television (CCTV) video interpretation algorithm and sewer pipe video assessment (SPVA) system. A novel video interpretation algorithm for sewer...

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