A LiDAR Point Cloud Generator: from a Virtual World to Autonomous Driving

Xiangyu Yue, Bichen Wu, S. Seshia, K. Keutzer, A. Sangiovanni-Vincentelli
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引用次数: 168

Abstract

3D LiDAR scanners are playing an increasingly important role in autonomous driving as they can generate depth information of the environment. However, creating large 3D LiDAR point cloud datasets with point-level labels requires a significant amount of manual annotation. This jeopardizes the efficient development of supervised deep learning algorithms which are often data-hungry. We present a framework to rapidly create point clouds with accurate point-level labels from a computer game. To our best knowledge, this is the first publication on LiDAR point cloud simulation framework for autonomous driving. The framework supports data collection from both auto-driving scenes and user-configured scenes. Point clouds from auto-driving scenes can be used as training data for deep learning algorithms, while point clouds from user-configured scenes can be used to systematically test the vulnerability of a neural network, and use the falsifying examples to make the neural network more robust through retraining. In addition, the scene images can be captured simultaneously in order for sensor fusion tasks, with a method proposed to do automatic registration between the point clouds and captured scene images. We show a significant improvement in accuracy (+9%) in point cloud segmentation by augmenting the training dataset with the generated synthesized data. Our experiments also show by testing and retraining the network using point clouds from user-configured scenes, the weakness/blind spots of the neural network can be fixed.
激光雷达点云发生器:从虚拟世界到自动驾驶
3D激光雷达扫描仪可以生成环境的深度信息,因此在自动驾驶中发挥着越来越重要的作用。然而,创建具有点级标签的大型3D LiDAR点云数据集需要大量的手动注释。这危及了监督深度学习算法的有效开发,这些算法通常需要大量数据。我们提出了一个从电脑游戏中快速创建具有准确点水平标签的点云的框架。据我们所知,这是第一份关于自动驾驶激光雷达点云模拟框架的出版物。该框架支持自动驾驶场景和用户配置场景的数据收集。来自自动驾驶场景的点云可以作为深度学习算法的训练数据,而来自用户配置场景的点云可以用于系统地测试神经网络的脆弱性,并使用证伪样例通过再训练使神经网络更加鲁棒。此外,为了完成传感器融合任务,可以同时捕获场景图像,并提出了一种点云和捕获场景图像之间自动配准的方法。通过使用生成的合成数据增强训练数据集,我们显示了点云分割精度的显著提高(+9%)。我们的实验还表明,通过使用用户配置场景中的点云测试和重新训练网络,可以修复神经网络的弱点/盲点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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