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Three-dimensional hand tracking and surface-geometry measurement for a robot-vision system.

机译:机器人视觉系统的三维手部跟踪和表面几何测量。

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摘要

Tracking of human motion and object identification and recognition are important in many applications including motion capture for human-machine interaction systems. This research is part of a global project to enable a service robot to recognize new objects and perform different object-related tasks based on task guidance and demonstration provided by a general user. This research consists of the calibration and testing of two vision systems which are part of a robot-vision system. First, real-time tracking of a human hand is achieved using images acquired from three calibrated synchronized cameras. Hand pose is determined from the positions of physical markers and input to the robot system in real-time. Second, a multi-line laser camera range sensor is designed, calibrated, and mounted on a robot end-effector to provide three-dimensional (3D) geometry information about objects in the robot environment. The laser-camera sensor includes two cameras to provide stereo vision. For the 3D hand tracking, a novel score-based hand tracking scheme is presented employing dynamic multi-threshold marker detection, a stereo camera-pair utilization scheme, marker matching and labeling using epipolar geometry and hand pose axis analysis, to enable real-time hand tracking under occlusion and non-uniform lighting environments. For surface-geometry measurement using the multi-line laser range sensor, two different approaches are analyzed for two-dimensional (2D) to 3D coordinate mapping, using Bezier surface fitting and neural networks, respectively. The neural-network approach was found to be a more viable approach for surface-geometry measurement worth future exploration for its lower magnitude of 3D reconstruction error and consistency over different regions of the object space.
机译:人体运动的跟踪以及物体的识别和识别在许多应用中都很重要,包括人机交互系统的运动捕捉。这项研究是全球项目的一部分,该项目使服务机器人能够根据普通用户提供的任务指导和演示,识别新对象并执行与对象相关的不同任务。这项研究包括对两个视觉系统的校准和测试,这两个视觉系统是机器人视觉系统的一部分。首先,使用从三个校准的同步摄像机获取的图像来实现人手的实时跟踪。根据物理标记的位置确定手势并实时输入到机器人系统。其次,设计,校准和安装多线激光摄像机测距传感器,并将其安装在机器人末端执行器上,以提供有关机器人环境中物体的三维(3D)几何信息。激光相机传感器包括两个提供立体视觉的相机。对于3D手部跟踪,提出了一种新颖的基于分数的手部跟踪方案,该方案采用动态多阈值标记检测,立体相机对利用方案,使用对极几何形状和手部姿势轴分析进行标记匹配和标记,以实现实时在遮挡和不均匀照明环境下进行手部跟踪。对于使用多线激光测距传感器进行表面几何测量,分别使用Bezier表面拟合和神经网络分析了两种不同的二维(2D)到3D坐标映射方法。神经网络方法因其较低的3D重建误差幅度和在对象空间不同区域的一致性而被认为是一种更可行的表面几何测量方法,值得未来研究。

著录项

  • 作者

    Liu, Chris Yu-liang.;

  • 作者单位

    University of Waterloo (Canada).;

  • 授予单位 University of Waterloo (Canada).;
  • 学科 Engineering Robotics.
  • 学位 M.A.Sc.
  • 年度 2009
  • 页码 94 p.
  • 总页数 94
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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