先进驾驶辅助系统中伊朗交通标志识别的Deit模型

Marjan. Shahchera, Hossein Ebrahimpour-komleh
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引用次数: 0

摘要

由于自动驾驶汽车准确检测交通标志的影响与汽车运动过程中的驾驶员辅助之间的重要关系,因此创建一个用于解释和即时决策的高精度系统是非常具有挑战性和必要性的。在本研究中,采用新的视觉转换Deit方法,设计了一个能够识别伊朗交通标志的系统。我们使用两个交通标志图像集(GTSRB和PTSD)来训练我们的模型,在最佳条件下,准确率分别达到99.5%和98.8%。
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Deit Model for Iranian Traffic Sign Recognition in Advanced Driver Assistance Systems
Due to the important relationship between the impact of accurate detection of traffic signs in self-driving cars and driver assistance during car movement, it is very challenging and necessary to create a high-accuracy system for interpretation and immediate decision-making. In this research, by applying the new vision transformer Deit approach, a system is designed that can recognize Iranian traffic signs. We trained our model with two collections of traffic sign images (GTSRB and PTSD) that reached higher accuracy levels of 99.5% and 98.8%, respectively, in optimal conditions.
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