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A Novel Approach to Data Augmentation for Pavement Distress Segmentation

机译:一种新的路面遇险细分数据增强方法

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Accurate semantic segmentation ground-truths are difficult and expensive to obtain. On the other hand, the most promising approaches to automatically tackle this task, i.e. Deep Convolutional Neural Networks (CNNs), require high volumes of labeled data. We propose a new method based on deep learning for data augmentation in the context of semantic segmentation of highly-textured images. The method exploits a Generative Adversarial Network (GAN) to produce a semantic layout, then a texture synthesizer, based on a CNN, generates a new image according to the generated semantic layout and a reference real image taken from the training set. Even though our method is general and it can be utilized on a broad set of problems, we employed it on the real-world problem of detecting and localizing defects and cracks in road asphalts. We show how, starting from few labeled images, it is possible to augment small and long-tail datasets by producing new images with the associated semantic layouts. We prove the effectiveness of our approach by evaluating the performance of three different CNNs for semantic segmentation on the German Pavement Distress dataset and on a novel asphalt dataset collected by us. Results show a remarkable increase in performance, especially with low cardinality classes, when CNNs are trained on the augmented datasets with respect to original datasets. (C) 2020 Elsevier B.V. All rights reserved.
机译:准确的语义细分地面真理是难以和昂贵的。另一方面,最有希望的方法来自动解决此任务,即深卷积神经网络(CNNS),需要高卷标记数据。我们提出了一种基于深度学习的新方法,以在高度纹理图像的语义分割的语义中进行数据增强。该方法利用生成的对手网络(GaN)来产生语义布局,然后基于CNN的纹理合成器根据生成的语义布局和从训练集中拍摄的参考实际图像来生成新图像。尽管我们的方法是一般的,但它可以在广泛的问题上使用,我们雇用了它在路上检测和定位缺陷和裂缝的真实问题。我们展示了如何从少数标记的图像开始,可以通过使用相关语义布局产生新图像来增强小型和长尾数据集。我们通过评估德国人行道遇险数据集的三种不同CNN的性能以及由我们收集的新颖沥青数据集进行了三种不同CNN的性能来证明我们的方法的有效性。结果表明,当CNNS在与原始数据集的增强数据集上接受CNNS培训时,表现出显着增加的性能,尤其是低基数类。 (c)2020 Elsevier B.V.保留所有权利。

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