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Topological localisation based on monocular vision and unsupervised learning

机译:基于单眼视觉和无监督学习的拓扑定位

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摘要

Global localisation is a very fundamental and challenging problem in robotics. This paper presents a new method for mobile robots to recognise scenes with the use of a single camera and natural landmarks. In a learning step, the robot is manually guided on a path. A video sequence is acquired with a font-looking camera. To reduce the perceptual alias of features easily confused, we propose a modified visual feature descriptor which combines colour information and local structure. A location features vocabulary model is built for each individual location by an unsupervised learning algorithm. In the course of travelling, the robot uses each detected interest point to vote for the most likely location. In the case of perceptual aliasing caused by dynamic change or visual similarity, a Bayesian filter is used to increase the robustness of location recognition. Experiments are conducted to prove that application of the proposed feature can largely reduce wrong matches and performance of proposed method is reliable.
机译:全局本地化是机器人技术中非常基本且具有挑战性的问题。本文提出了一种新的方法,用于移动机器人使用单个摄像头和自然界标来识别场景。在学习步骤中,将机器人手动引导到一条路径上。视频序列是用看起来像字体的摄像机获取的。为了减少容易混淆的特征的感知别名,我们提出了一种经过修改的视觉特征描述符,该描述符结合了颜色信息和局部结构。通过无监督学习算法为每个单独的位置建立位置特征词汇模型。在行驶过程中,机器人会使用每个检测到的兴趣点对最可能的位置进行投票。在由动态变化或视觉相似性引起的感知混叠的情况下,贝叶斯滤波器用于增加位置识别的鲁棒性。实验证明,该特征的应用可以大大减少错误匹配,并且该方法的性能可靠。

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