Autonomous driving, in recent years, has been receiving increasing attention for its potential to relieve drivers' burdens and improve the safety of driving. In modern autonomous driving pipelines, the perception system is an indispensable component, aiming to accurately estimate the status of surrounding environments and provide reliable observations for prediction and planning. 3D object detection, which intelligently predicts the locations, sizes, and categories of the critical 3D objects near an autonomous vehicle, is an important part of a perception system. This paper reviews the advances in 3D object detection for autonomous driving. First, we introduce the background of 3D object detection and discuss the challenges in this task. Second, we conduct a comprehensive survey of the progress in 3D object detection from the aspects of models and sensory inputs, including LiDAR-based, camera-based, and multi-modal detection approaches. We also provide an in-depth analysis of the potentials and challenges in each category of methods. Additionally, we systematically investigate the applications of 3D object detection in driving systems. Finally, we conduct a performance analysis of the 3D object detection approaches, and we further summarize the research trends over the years and prospect the future directions of this area.
翻译:----
自动驾驶近年来因其减轻驾驶员负担,提高驾驶安全性的潜力而受到越来越多的关注。在现代自动驾驶管道中,感知系统是一个不可或缺的组件,旨在准确估计周围环境的状态,并为预测和规划提供可靠的观察结果。三维物体检测是感知系统的重要组成部分,其智能地预测自动车辆附近关键三维物体的位置、大小和类别。本文回顾了自动驾驶中的三维物体检测技术进展。首先,我们介绍了三维物体检测的背景,并讨论了这项任务面临的挑战。其次,我们从模型和传感器输入两个方面全面调查了三维物体检测的进展,包括基于激光雷达的、基于摄像机的以及多模态检测方法。我们还深入分析了每种方法的潜力和挑战。此外,我们系统地探究了三维物体检测在驾驶系统中的应用。最后,我们对三维物体检测方法进行了性能分析,并进一步总结了该领域的研究趋势,展望了未来的研究方向。