主动/动态立体视觉

E. Grosso, M. Tistarelli
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引用次数: 70

摘要

视觉导航是自动化机器人控制中的一个难点。在许多机器人应用中,如危险环境中的物体操纵或自主运动,需要在规划安全轨迹的同时自动检测和避开障碍物。在这种情况下,沿机器人轨迹的自由空间走廊的检测是一项非常重要的能力,它需要非平凡的视觉处理。在大多数情况下,可以利用相机的主动控制。在本文中,我们提出了一种利用运动视觉和立体视觉来推断场景结构和确定自由空间区域的合作模式。双眼视差,在几个立体图像上随时间计算,与来自同一序列的光流相结合,以获得场景的相对深度图。撞击时间和由相机到空间固定点的距离缩放的深度都被认为是良好的相对测量,这些测量基于观看者,但以环境为中心。通过采用主动控制策略,大大减少了对校准参数的需求。摄像机独立于机器人的运动跟踪空间中的一个点,头部的完整旋转,包括未知的机器人运动,是由双目图像数据导出的。通过对从自动驾驶车辆和原型相机头获取的真实图像数据进行的几个实验,证明了该方法在实际机器人应用中的可行性。>
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active/Dynamic Stereo Vision
Visual navigation is a challenging issue in automated robot control. In many robot applications, like object manipulation in hazardous environments or autonomous locomotion, it is necessary to automatically detect and avoid obstacles while planning a safe trajectory. In this context the detection of corridors of free space along the robot trajectory is a very important capability which requires nontrivial visual processing. In most cases it is possible to take advantage of the active control of the cameras. In this paper we propose a cooperative schema in which motion and stereo vision are used to infer scene structure and determine free space areas. Binocular disparity, computed on several stereo images over time, is combined with optical flow from the same sequence to obtain a relative-depth map of the scene. Both the time to impact and depth scaled by the distance of the camera from the fixation point in space are considered as good, relative measurements which are based on the viewer, but centered on the environment. The need for calibrated parameters is considerably reduced by using an active control strategy. The cameras track a point in space independently of the robot motion and the full rotation of the head, which includes the unknown robot motion, is derived from binocular image data. The feasibility of the approach in real robotic applications is demonstrated by several experiments performed on real image data acquired from an autonomous vehicle and a prototype camera head. >
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