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Point cloud quality requirements for Scan-vs-BIM based automated construction progress monitoring

Automation in construction, v.84, 2017년, pp.323 - 334  

Rebolj, D. ,  Pucko, Z. ,  Babic, N.C. ,  Bizjak, M. ,  Mongus, D.

Abstract AI-Helper 아이콘AI-Helper

Significant research effort has been focusing on automated construction progress monitoring using the Scan-vs-BIM method. In recent years, various scanning technologies were applied with different success. The general finding is that a higher quality of the point cloud leads to improved monitoring r...

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