首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >EVALUATION OF A TRAFFIC SIGN DETECTOR BY SYNTHETIC IMAGE DATA FOR ADVANCED DRIVER ASSISTANCE SYSTEMS
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EVALUATION OF A TRAFFIC SIGN DETECTOR BY SYNTHETIC IMAGE DATA FOR ADVANCED DRIVER ASSISTANCE SYSTEMS

机译:通过高级驾驶员辅助系统的合成图像数据评估交通信号检测器

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Recently, several synthetic image datasets of street scenes have been published. These datasets contain various traffic signs and can therefore be used to train and test machine learning-based traffic sign detectors. In this contribution, selected datasets are compared regarding ther applicability for traffic sign detection. The comparison covers the process to produce the synthetic images and addresses the virtual worlds, needed to produce the synthetic images, and their environmental conditions. The comparison covers variations in the appearance of traffic signs and the labeling strategies used for the datasets, as well. A deep learning traffic sign detector is trained with multiple training datasets with different ratios between synthetic and real training samples to evaluate the synthetic SYNTHIA dataset. A test of the detector on real samples only has shown that an overall accuracy and ROC AUC of more than 95?% can be achieved for both a small rate of synthetic samples and a large rate of synthetic samples in the training dataset.
机译:最近,已经发布了一些街道场景的合成图像数据集。这些数据集包含各种交通标志,因此可以用于训练和测试基于机器学习的交通标志检测器。在此贡献中,比较了所选数据集的交通标志检测适用性。比较涵盖了生成合成图像的过程,并解决了生成合成图像所需的虚拟世界及其环境条件。比较包括交通标志的外观变化以及用于数据集的标记策略。深度学习交通标志检测器使用多个训练数据集进行训练,合成和实际训练样本之间的比率不同,以评估合成SYNTHIA数据集。仅对真实样本进行检测器测试表明,对于训练数据集中的少量合成样本和大量合成样本,总体精度和ROC AUC都可以达到95%以上。

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