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Automatic Training Data Generation Method for Pixel-Level Road Lane Segmentation

机译:像素级道路道分割的自动训练数据生成方法

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Lane detection or road detection is one of the key features of autonomous driving. By using deep convolutional neural network based semantic segmentation, we can build models with high accuracy and robustness. However, training a pixel-level semantic segmentation needs very tine-labeled training data, which requires large amount of labor. In this paper, we propose an automatic training data generating method, which can significantly reduce the effort of the training phase. Experiments prove that our method can generate high-quality training data for lane segmentation task.
机译:车道检测或道路检测是自主驾驶的关键特征之一。通过使用基于深度卷积神经网络的语义分割,我们可以以高精度和稳健性构建模型。但是,培训像素级语义分割需要非常有尺寸标记的训练数据,这需要大量的劳动力。在本文中,我们提出了一种自动训练数据产生方法,可以显着降低训练阶段的努力。实验证明我们的方法可以为车道分割任务产生高质量的培训数据。

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