用广角相机对有腿移动机器人进行视觉SLAM采样

IF 1.5 Q3 AUTOMATION & CONTROL SYSTEMS
Guangyu Fan, Jiaxin Huang, Dingyu Yang, Lei Rao
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引用次数: 0

摘要

精确定位和导航是移动机器人最重要的两项任务。视觉同步定位与映射(VSLAM)是移动机器人定位系统的重要组成部分。广角摄像头视野开阔,图像信息更加丰富,因此被广泛应用于移动机器人,包括有腿机器人。然而,广角相机在视觉定位系统的设计上比普通相机更为复杂,对基于广角相机的VSLAM技术提出了更高的要求和挑战。为了解决广角图像失真问题,提高定位精度,提出了一种基于广角相机模型的足式移动机器人采样VSLAM方法。为了提高机器人周期运动的可预测性,该方法对图像进行周期性采样,选取纹理清晰的图像块,对图像细节进行增强,提取图像上的特征点。然后,提取块的特征点,利用图像中块的特征点,提取图像上的特征点。最后,选取经过归一化平面的入射光上的点作为模板点;通过广角相机模型建立模板点与图像的关系,计算模板点在图像和描述符中的像素坐标。此外,利用四足机器人在TUM数据集上进行了大量实验。实验结果表明,与VINS-MONO、ORB-SLAM3和周期SLAM系统相比,该方法测量的轨迹误差和平移误差都有所降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Sampling visual SLAM with a wide-angle camera for legged mobile robots

Sampling visual SLAM with a wide-angle camera for legged mobile robots

Precise localisation and navigation are the two most important tasks for mobile robots. Visual simultaneous localisation and mapping (VSLAM) is useful in localisation systems of mobile robots. The wide-angle camera has a broad field of vision and more abundant information on images, so it is widely used in mobile robots, including legged robots. However, wide-angle cameras are more complicated than ordinary cameras in the design of visual localisation systems, and higher requirements and challenges are put forward for VSLAM technologies based on wide-angle cameras. In order to resolve the problem of distortion in wide-angle images and improve the accuracy of localisation, a sampling VSLAM based on a wide-angle camera model for legged mobile robots is proposed. For the predictability of the periodic motion of a legged robot, in the method, the images are sampled periodically, image blocks with clear texture are selected and the image details are enhanced to extract the feature points on the image. Then, the feature points of the blocks are extracted and by using the feature points of the blocks in the images, the feature points on the images are extracted. Finally, the points on the incident light through the normalised plane are selected as the template points; the relationship between the template points and the images is established through the wide-angle camera model, and the pixel coordinates of the template points in the images and the descriptors are calculated. Moreover, many experiments are conducted on the TUM datasets with a quadruped robot . The experimental results show that the trajectory error and translation error measured by the proposed method are reduced compared with the VINS-MONO, ORB-SLAM3 and Periodic SLAM systems.

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来源期刊
IET Cybersystems and Robotics
IET Cybersystems and Robotics Computer Science-Information Systems
CiteScore
3.70
自引率
0.00%
发文量
31
审稿时长
34 weeks
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