Musleh Basam, Martín David, Armingol José María, de la Escalera Arturo
Intelligent Systems Laboratory, Universidad Carlos III de Madrid/Avda de la Universidad 30, Leganés, Madrid 28911, Spain.
Sensors (Basel). 2016 Sep 14;16(9):1492. doi: 10.3390/s16091492.
Nowadays, intelligent systems applied to vehicles have grown very rapidly; their goal is not only the improvement of safety, but also making autonomous driving possible. Many of these intelligent systems are based on making use of computer vision in order to know the environment and act accordingly. It is of great importance to be able to estimate the pose of the vision system because the measurement matching between the perception system (pixels) and the vehicle environment (meters) depends on the relative position between the perception system and the environment. A new method of camera pose estimation for stereo systems is presented in this paper, whose main contribution regarding the state of the art on the subject is the estimation of the pitch angle without being affected by the roll angle. The validation of the self-calibration method is accomplished by comparing it with relevant methods of camera pose estimation, where a synthetic sequence is used in order to measure the continuous error with a ground truth. This validation is enriched by the experimental results of the method in real traffic environments.
如今,应用于车辆的智能系统发展非常迅速;其目标不仅是提高安全性,还包括使自动驾驶成为可能。这些智能系统中的许多都基于利用计算机视觉来了解环境并据此采取行动。能够估计视觉系统的位姿非常重要,因为感知系统(像素)与车辆环境(米)之间的测量匹配取决于感知系统与环境之间的相对位置。本文提出了一种用于立体视觉系统的相机位姿估计新方法,就该主题的现有技术而言,其主要贡献在于在不受横滚角影响的情况下估计俯仰角。通过将自校准方法与相机位姿估计的相关方法进行比较来完成对该方法的验证,其中使用合成序列以便根据地面真值测量连续误差。实际交通环境中的方法实验结果丰富了这一验证。