An automatic recognition algorithm for GPR images of RC structure voids

Journal of Applied Geophysics - Tập 99 - Trang 125-134 - 2013
Xiongyao Xie1, Hui Qin1, Chao Yu2, Lanbo Liu3
1Department of Geotechnical Engineering, Tongji University, Shanghai 200092, China
2Shanghai Construction Engineering Administration Co., Ltd, Shanghai 200031, China
3Department of Civil & Environmental Engineering, University of Connecticut, 06269-2037, USA

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