学位论文详细信息
Three-Dimensional Hand Tracking and Surface-Geometry Measurement for a Robot-Vision System
Three-dimensional hand tracking;Laser-camera range sensor;Surface-geometry measurement;Three-dimensional reconstruction;Vision–based tracking;Stereo vision;System Design Engineering
Liu, Chris Yu-Liang
University of Waterloo
关键词: Three-dimensional hand tracking;    Laser-camera range sensor;    Surface-geometry measurement;    Three-dimensional reconstruction;    Vision–based tracking;    Stereo vision;    System Design Engineering;   
Others  :  https://uwspace.uwaterloo.ca/bitstream/10012/4211/1/Liu_Chris.pdf
瑞士|英语
来源: UWSPACE Waterloo Institutional Repository
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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.

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