Visual field movement detection model based on low-resolution images

Guangli Li, Lei Liu, Tongbo Zhang, Hang Yu, Yue Xu, Shuai Lü
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Abstract

In robotic mapping and navigation, simultaneous localisation and mapping (SLAM) is the computational problem of constructing a map of an unknown environment and simultaneously keeping track of an agent's location. The popularity of sweeping robot has made SLAM famous in the last few years, while the recent visual simultaneous localisation and mapping (VSLAM) based on three-dimensional vision makes it more mainstream. To detect direction and distance of visual field movement, we build a visual field movement detection model on low-resolution image. Considering the features of image edge and corners, we mainly utilise the similarity computation of feature points and matching methods in this model to detect the moving direction and distance of vision field. The experimental results show that the proposed detection model is more accurate and efficient in three different conditions, and can precisely figure out where the vision field moves in a short period of time.
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基于低分辨率图像的视野运动检测模型
在机器人测绘和导航中,同时定位和测绘(SLAM)是一个构建未知环境地图并同时跟踪智能体位置的计算问题。扫地机器人的普及使得SLAM在前几年名声大噪,而最近基于三维视觉的视觉同步定位与测绘(VSLAM)则使其更加主流。为了检测视野运动的方向和距离,建立了低分辨率图像的视野运动检测模型。考虑到图像边缘和角落的特征,该模型主要利用特征点的相似度计算和匹配方法来检测视野的移动方向和距离。实验结果表明,所提出的检测模型在三种不同的情况下都具有更高的准确性和效率,可以在短时间内精确地计算出视野的移动位置。
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