Robot vision-based registration utilizing bird's-eye view with user's view

K. Satoh, Shinji Uchiyama, Hiroyuki Yamamoto, H. Tamura
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引用次数: 28

Abstract

This paper describes new vision-based registration methods utilizing not only cameras on a user's head-mounted display but also a bird's-eye view camera that observes the user from an objective viewpoint. Two new methods, the line constraint method (LCM) and global error minimization method (GEM), are proposed. The former method reduces the number of unknown parameters concerning the user's viewpoint by restricting it to be on the line of sight from the bird's-eye view. The other method minimizes the sum of errors, which is the sum of the distance between the fiducials on the view and the calculated positions of them based on the current viewing parameters, for both the user's view and the bird's-eye view. The methods proposed here reduce the number of points that should be observed from the user's viewpoint for registration, thus improving the stability. In addition to theoretical discussions, this paper demonstrates the effectiveness of our methods by experiments in comparison with methods that use only a user's view camera or a bird's-eye view camera.
利用鸟瞰图和用户视角的基于机器人视觉的配准
本文描述了一种新的基于视觉的配准方法,不仅利用用户头戴式显示器上的摄像头,还利用从客观角度观察用户的鸟瞰摄像头。提出了直线约束法(LCM)和全局误差最小化法(GEM)。前一种方法通过将用户视点限制在鸟瞰图的视线上,减少了与用户视点有关的未知参数的数量。另一种方法是最小化误差总和,即用户视图和鸟瞰视图中基于当前观看参数的视图基准与计算出的它们的位置之间的距离之和。本文提出的方法减少了用户在配准时需要观察的点的数量,从而提高了稳定性。除了理论讨论外,本文还通过实验与仅使用用户视角相机或鸟瞰视角相机的方法进行了比较,证明了我们的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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