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Generative adversarial network for road damage detection

机译:道路损伤检测的生成对抗网络

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摘要

Machine learning can produce promising results when sufficient training data are available; however, infrastructure inspections typically do not provide sufficient training data for road damage. Given the differences in the environment, the type of road damage and the degree of its progress can vary from structure to structure. The use of generative models, such as a generative adversarial network (GAN) or a variational autoencoder, makes it possible to generate a pseudoimage that cannot be distinguished from a real one. Combining a progressive growing GAN along with Poisson blending artificially generates road damage images that can be used as new training data to improve the accuracy of road damage detection. The addition of a synthesized road damage image to the training data improves the F-measure by 5% and 2% when the number of original images is small and relatively large, respectively. All of the results and the new Road Damage Dataset 2019 are publicly available ().
机译:机器学习可以在有足够的训练数据时产生有希望的结果;但是,基础设施检查通常不提供足够的道路损坏训练数据。鉴于环境的差异,道路损坏的类型和其进度的程度可能因结构而异。使用生成模型(例如生成的对抗性网络(GaN)或变形Autiachoder)使得可以生成不能与真实的伪图。将渐进式甘伴与Poisson混合结合在人工生成的道路损伤图像中,可以用作新的训练数据,以提高道路损伤检测的准确性。当原始图像的数量小且相对较大时,向训练数据添加合成的道路损伤图像将F-Meader提高5%和2%。所有结果和新的道路伤害数据集2019年是公开的()。

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