在非受控雷电环境中实现鲁棒六自由度检测

Alejandro Mora, Edmundo Guerra, M. Manzanares, A. Grau-Saldes
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引用次数: 0

摘要

在控制机器人时出现的最关键的问题之一是必须在环境中定位自己。从工业过程应用到户外移动机器人,地标被用于这样的目的:通过识别它们,机器人能够在计算机视觉的帮助下知道它们在哪里。基准标记是最便宜的,也是解决这个问题的最常见的解决方案之一:嵌入一些可以使用人工视觉技术识别的信息的2D平面模式。如今,使用c++ / Python / MATLAB®库和ROS作为中间件,正在实现许多不同类型的标记以及图像处理算法。在这项工作中,我们评估了各种基准标记类型的鲁棒性,记录了所使用实现的主要技术方面,并评论了每种算法的操作方式。本文给出并讨论了汇总的结果,评估了所测试的不同实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards robust 6-DoF detection in uncontrolled lightning enviroments
One of the most critical issues that arises when controlling a robot is the necessity to locate itself in the environment. Ranging from industrial processes applications to outdoor mobile robots, landmarks are used to such purpose: by recognizing them, the robots are able to know where they are with the aid of computer vision. Fiducial markers are the cheapest and one of the most common solutions to this issue: 2D planar patterns that embed some information that can be identified using artificial vision techniques. Many different typologies of markers as well as image processing algorithms are being implemented nowadays, using C++ / Python / MATLAB® libraries and ROS as middleware. In this work we have evaluated the robustness of various fiducial marker typologies, documenting the main technical aspects of the used implementations and commenting how each algorithm operates. Aggregated results are presented and discussed, evaluating the different implementations tested.
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