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Learning A Steering Decision Policy for End-to-End Control of Autonomous Vehicle

机译:学习自动驾驶车辆端到端控制的转向决策策略

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Steering control plays an important role in vehicle driving decisions. Convolutional Neural Network(CNN) has been widely studied in the field of autonomous vehicle navigation due to its powerful nonlinear expression and spatial feature understanding ability in image scene. In this paper, we present an end-to-end steering controller based on CNN to predict the desired steering wheel angle from a continuous video image, which does not require manual design rules and simplifies a series of intermediate steps in traditional autonomous driving decision, such as target detection, object recognition and path tracking. The pre-trained network model is verified in the TORCS racing simulator. The experimental results show that the controller has good generalization ability and can make the vehicle follow the right side of the lane on the unknown test track. In order to intuitively understand what factors in the image have an impact on vehicle decision-making, the remarkable features that affect the steering control of the autonomous vehicle are visualized.
机译:转向控制在车辆驾驶决策中起着重要作用。卷积神经网络(CNN)由于其强大的非线性表达和图像场景中的空间特征理解能力而在自动驾驶导航领域得到了广泛的研究。在本文中,我们提出了一种基于CNN的端到端转向控制器,可以从连续的视频图像中预测所需的方向盘角度,不需要手动设计规则,并且简化了传统自动驾驶决策中的一系列中间步骤,例如目标检测,目标识别和路径跟踪。在TORCS赛车模拟器中验证了预训练的网络模型。实验结果表明,该控制器具有良好的泛化能力,可以使车辆沿着未知测试轨道的车道右侧行驶。为了直观地了解图像中的哪些因素会影响车辆的决策,将影响自动驾驶汽车转向控制的显着特征可视化。

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