Automatic damage detection of historic masonry buildings based on mobile deep learning

Automation in Construction - Tập 103 - Trang 53-66 - 2019
Niannian Wang1,2, Xuefeng Zhao1,2, Peng Zhao3, Yang Zhang1,2, Zheng Zou1,2, Jinping Ou1,4
1School of Civil Engineering, Dalian University of Technology, 116024, Dalian, China
2State Key Laboratory of Coastal and Offshore Engineering, Dalian University of Technology, Dalian 116024, China
3Department of Historic Architecture, the Palace Museum, Beijing 100006, China
4School of Civil Engineering, Harbin Institute of Technology, 150090, Harbin, China

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