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Classification and analysis of deep learning applications in construction: A systematic literature review
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References5
2020Deep learning for site safety: Real-time dete...465 cites2020Hybrid pixel-level concrete crack segmentatio...385 cites2020Semantic segmentation of point clouds of buil...198 cites2020Deep learning and network analysis: Classifyi...160 cites2020Improving progress monitoring by fusing point...154 cites
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Classification and analysis of deep learning applications...