在不知道初始条件和重力方向的情况下,利用imu相机检测运动特征

Jwusheng Hu, Chin-Yuan Tseng, Ming-yuan Chen
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引用次数: 1

摘要

在实际应用中,检测移动摄像机图像中相对于地面的运动特征对移动机器人定位具有重要意义。如果相机的初始条件未知,这个问题就特别困难。在本文中,我们提出了一种在动态环境中使用校准的imu相机进行运动特征检测的方法。该方法能够在不知道imu相机初始条件和重力方向的情况下分离静态和动态特征。该方法首先实现估计量初始化算法来估计特征点的移动速度和三维位置以及重力方向。然后,设计了一种基于特征重投影的递归运动目标检测算法,对静态和动态特征进行分类;仿真结果表明,该方法可以有效地对运动特征进行分组,剩余的静态特征点可用于真实尺度下的相机姿态和速度估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of moving features using IMU-camera without knowing both the initial conditions and gravity direction
Detecting moving features relative to ground in the images of a moving camera is important for mobile robot localization in practice. This problem is particularly difficult if the initial conditions of the camera are unknown. In this paper, we propose a moving feature detection method by using a calibrated IMU-camera in a dynamic environment. The proposed method is able to separate static and dynamic features without knowing the IMU-camera initial conditions, as well as the gravity direction. In the method, an estimator initialization algorithm is implemented first to estimate the moving velocity and 3D positions of the feature points, and the gravity direction. Then, a recursive moving object detection algorithm is designed to classify the static and dynamic features based on feature re-projection. The simulation results show that the moving features can be grouped effectively, and the remaining static feature points can be used for camera pose and velocity estimation in a real scale to the ground.
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