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Evaluation of Traffic Sign Recognition Methods Trained on Synthetically Generated Data

机译:综合生成的数据训练的交通标志识别方法的评估

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Most of today's machine learning techniques requires large manually labeled data. This problem can be solved by using synthetic images. Our main contribution is to evaluate methods of traffic sign recognition trained on synthetically generated data and show that results are comparable with results of classifiers trained on real dataset. To get a representative synthetic dataset we model different sign image variations such as intra-class variability, imprecise localization, blur, lighting, and viewpoint changes. We also present a new method for traffic sign segmentation, based on a nearest neighbor search in the large set of synthetically generated samples, which improves current traffic sign recognition algorithms.
机译:当今大多数机器学习技术都需要大量的手动标记数据。通过使用合成图像可以解决此问题。我们的主要贡献是评估在合成数据上训练的交通标志识别方法,并证明结果与在真实数据集上训练的分类器结果具有可比性。为了获得代表性的合成数据集,我们对不同的符号图像变化建模,例如类内变异性,不精确的定位,模糊,光照和视点变化。我们还提出了一种新的交通标志分割方法,它基于大量合成样本中的最近邻搜索,从而改进了当前的交通标志识别算法。

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