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Influence of Data Collection Parameters on Performance of Neural Network-based Obstacle Avoidance

机译:数据收集参数对基于神经网络的避障性能的影响

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摘要

Neural networks are becoming wide-spread, including applications in mobile robotics and related fields. Most state-of-the-art approaches to training neural networks use video cameras for generating training datasets. However, these data are hard and time-consuming to collect resulting in a bottleneck of neural network training procedure. Thus, the paper briefly presents simulation-based LiDAR data collection for the training of neural networks for obstacle avoidance. The influence of two data collection parameters in simulation (distance to obstacles and number of LiDAR points) on the performance of the realworld mobile robot is analysed in more depth. Experimental testing was performed in a narrow corridor (augmented with additional obstacles) in order to fully test the neural networks and detect possible limitations. For a better understanding of proposed algorithms and analysis of their performance in real-life scenarios, a simple test-bed was devised with Turtbebot 2 as a test vehicle although it can be applied on similar mobile robot platforms. Based on obtained results, and with safety in mind, conclusions are drawn and possible future improvements proposed.
机译:神经网络正在变得越来越广泛,包括在移动机器人和相关领域中的应用。大多数最新的神经网络训练方法都是使用摄像机生成训练数据集。但是,这些数据很难收集且耗时,从而导致神经网络训练过程成为瓶颈。因此,本文简要介绍了基于仿真的LiDAR数据收集,用于训练神经网络以避开障碍物。更深入地分析了仿真中的两个数据收集参数(到障碍物的距离和LiDAR点的数量)对现实世界移动机器人性能的影响。为了全面测试神经网络并检测可能的局限性,在狭窄的走廊(带有附加障碍物)中进行了实验测试。为了更好地理解所提出的算法并分析其在现实生活中的性能,尽管Turtbebot 2可以在类似的移动机器人平台上使用,但还是设计了一个简单的试验台作为Turtbebot 2。基于获得的结果,并出于安全考虑,得出结论并提出可能的未来改进方案。

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