Predicting Autonomous Vehicle Navigation Parameters via Image and Image-and-Point Cloud Fusion-based End-to-End Methods

Semih Beycimen, Dmitry I. Ignatyev, A. Zolotas
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Abstract

This paper presents a study of end-to-end methods for predicting autonomous vehicle navigation parameters. Image-based and Image & Lidar points-based end-to-end models have been trained under Nvidia learning architectures as well as Densenet-169, Resnet-152 and Inception-v4. Various learning parameters for autonomous vehicle navigation, input models and pre-processing data algorithms i.e. image cropping, noise removing, semantic segmentation for image data have been investigated and tested. The best ones, from the rigorous investigation, are selected for the main framework of the study. Results reveal that the Nvidia architecture trained Image & Lidar points-based method offers the better results accuracy rate-wise for steering angle and speed.
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基于图像和图像与点云融合的端到端方法预测自动驾驶汽车导航参数
本文研究了端到端自动驾驶汽车导航参数预测方法。基于图像和基于图像和激光雷达点的端到端模型已经在Nvidia学习架构以及Densenet-169, Resnet-152和Inception-v4下进行了训练。对自动驾驶汽车导航的各种学习参数、输入模型和预处理数据算法(即图像裁剪、噪声去除、图像数据的语义分割)进行了研究和测试。从严格的调查中选择最好的作为研究的主要框架。结果表明,Nvidia架构训练的基于图像和激光雷达点的方法在转向角度和速度方面提供了更好的结果准确率。
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