Japan Society of Civil Engineers 2019 Annual Meeting

Presentation information

第VI部門

維持・管理/検査技術・診断 (8)

Thu. Sep 5, 2019 10:25 AM - 11:55 AM VI-13 (幸町総合教育棟 第32講義室)

座長:全 邦釘(東京大学)

[VI-778] Quantification of the deep learning detection information in the dam management

*天方 匡純1、安野 貴人1、藤井 純一郎1、嶋本 ゆり1、大久保 順一1 (1. 八千代エンジニヤリング)

Keywords:artificial intelligence, deep learning, maintenance management, dam, pop out

The social infrastructure facilities such as rivers and roads have missions to support many people’s life in our country, so they can't help being long and giant constructions. Dam is one of them. We need many resources in order to keep their structure’s function. But it’s difficult to keep original abilities of their structures in as same ways as now during populations are decreasing. So we have to apply new ICT in order to transform old ways by mainly human into rational and high productive ways by digital data. Our thesis offers the output that we extracted pop-out feature on the dam concrete through the deep learning network from photo images which we took with the drone and we quantified damage information.

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