Automatic recognition of tunnel lining elements from GPR images using deep convolutional networks with data augmentation
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Donghao Zhang | Hui Qin | Yu Tang | Yuanzheng Wang | Yu Tang | H. Qin | Donghao Zhang | Yuanzheng Wang
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