论文标题

智能车辆的基于强大的实时计算环境传感系统

A Robust Real-Time Computing-based Environment Sensing System for Intelligent Vehicle

论文作者

Xie, Qiwei, Long, Qian, Zhang, Liming, Sun, Zhao

论文摘要

对于智能车辆,感知3D环境是第一个但至关重要的步骤。在本文中,我们基于低功率移动平台构建了一个实时高级驾驶员辅助系统。该系统是一种实时的多功能集成创新系统,它结合了立体声匹配算法与基于机器学习的障碍检测方法,并利用了使用GPU和CPU的移动平台的分布式计算技术。首先,提出了一个多尺度快速MPV(多路径 - viterbi)立体声匹配算法,该算法是可以生成稳健而准确的差异图。然后,使用基于单眼和双目的融合技术的机器学习来检测障碍。我们还基于张的校准方法推进了自动快速校准机制。最后,应用分布式计算和合理的数据流编程以确保系统的运行效率。实验结果表明,该系统可以实现智能车辆的强大而准确的实时环境感知,可以直接用于商业实时智能驾驶应用程序。

For intelligent vehicles, sensing the 3D environment is the first but crucial step. In this paper, we build a real-time advanced driver assistance system based on a low-power mobile platform. The system is a real-time multi-scheme integrated innovation system, which combines stereo matching algorithm with machine learning based obstacle detection approach and takes advantage of the distributed computing technology of a mobile platform with GPU and CPUs. First of all, a multi-scale fast MPV (Multi-Path-Viterbi) stereo matching algorithm is proposed, which can generate robust and accurate disparity map. Then a machine learning, which is based on fusion technology of monocular and binocular, is applied to detect the obstacles. We also advance an automatic fast calibration mechanism based on Zhang's calibration method. Finally, the distributed computing and reasonable data flow programming are applied to ensure the operational efficiency of the system. The experimental results show that the system can achieve robust and accurate real-time environment perception for intelligent vehicles, which can be directly used in the commercial real-time intelligent driving applications.

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