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Deep Neural Network approach for navigation of Autonomous Vehicles

机译:自治车辆航行深度神经网络方法

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Ever since the DARPA challenge on autonomous vehicles in 2005, there has been a lot of buzz about ‘Autonomous Vehicles’ amongst the major tech giants such as Google, Uber and Tesla. Numerous approaches have been adopted to solve this problem which can have a long-lasting impact on mankind. In this paper, we have used Deep Learning techniques and TensorFlow framework with the goal of building a neural network model to predict (speed, acceleration, steering angle and brake) features needed for navigation of autonomous vehicles. The Deep Neural Network has been trained on images and sensor data obtained from comma.ai dataset. A heatmap was used to check for correlation among the features and finally four important features were selected. This was a multivariate regression problem. The final model had five convolutional layers followed by five dense layers. Finally, the calculated values were tested against the labelled data where mean squared error was used as a performance metric.
机译:自从2005年的自动车辆挑战自挑战以来,在谷歌,优步和特斯拉等主要科技巨头中有很多关于“自动车辆”的嗡嗡声。 已经采用了众多方法来解决这个问题,这可能对人类产生持久的影响。 在本文中,我们使用了深度学习技术和TensoRFlow框架,其目的是构建神经网络模型,以预测自动车辆导航所需的(速度,加速,转向角和制动)特征。 深度神经网络已经训练在逗号中获得的图像和传感器数据。 热线图用于检查特征之间的相关性,最后选择了四个重要特征。 这是一个多元回归问题。 最终模型有五个卷积层,然后是五层。 最后,计算计算值对标记的数据进行测试,其中平均平方误差用作性能度量。

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