融合驱动:端到端多模态传感器融合制导低成本自动驾驶汽车

Ikhyun Kang, Reinis Cimurs, Jin Han Lee, I. Suh
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引用次数: 4

摘要

在本文中,我们提出了一种基于监督学习的混合输入传感器融合神经网络,用于在设计的轨道上自主导航,称为融合驱动。该方法将RGB图像和LiDAR激光传感器数据相结合,用于低成本嵌入式导航系统沿轨道导航和避免已知障碍物以及先前未观察到的障碍物。所提出的网络将单独的基于cnn的传感器处理组合成一个完全组合的网络,该网络可以端到端学习油门和转向角标签。提出的网络输出导航命令与人类演示的学习行为相似。用验证数据集和真实环境进行实验,表现出期望的行为。记录的性能显示了与类似方法相比的改进。
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Fusion Drive: End-to-End Multi Modal Sensor Fusion for Guided Low-Cost Autonomous Vehicle
In this paper, we present a supervised learning-based mixed-input sensor fusion neural network for autonomous navigation on a designed track referred to as Fusion Drive. The proposed method combines RGB image and LiDAR laser sensor data for guided navigation along the track and avoidance of learned as well as previously unobserved obstacles for a low-cost embedded navigation system. The proposed network combines separate CNN-based sensor processing into a fully combined network that learns throttle and steering angle labels end-to-end. The proposed network outputs navigational commands with similar learned behavior from the human demonstrations. Performed experiments with validation data-set and in real environment exhibit desired behavior. Recorded performance shows improvement over similar approaches.
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