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Self-driving a Car in Simulation Through a CNN

机译:通过CNN自行驾驶汽车模拟

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This work presents a comparison between different Convolutional Neural Network models, testing its performance when it leads a self-driving car in a simulated environment. To do so, driving data has been obtained manually driving the simulator as ground truth and different network models with diverse complexity levels has been created and trained with the data previously obtained using end-to-end deep learning techniques. Once this CNNs are trained, they are tested in the driving simulator, checking their ability of minimizing the car distance to the center of the lane, its heading error and its RMSE. The neural networks will be evaluated according to these parameters. Finally, conclusions will be drawn about the performance of the different models according to the parameters mentioned before in order to find the optimum CNN for the developed application.
机译:这项工作提出了不同卷积神经网络模型之间的比较,当它在模拟环境中引导自动驾驶汽车时测试其性能。 为此,已经在手动驱动驾驶数据作为地面真理和不同网络模型的不同网络模型,并通过先前使用端到端深度学习技术获得的数据进行了创建和培训。 一旦培训此CNN,它们在驾驶模拟器中进行了测试,检查它们最小化汽车距离到通道中心的能力,其标题误差及其RMSE。 将根据这些参数评估神经网络。 最后,将根据之前提到的参数绘制不同模型的结论,以便找到开发应用的最佳CNN。

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