A two-camera-based vision system for image feature identification, feature tracking and distance measurement by a mobile robot

Avishek Chatterjee, N. Singh, Olive Ray, A. Chatterjee, A. Rakshit
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引用次数: 2

Abstract

This paper presents a two-camera-based vision system for image feature selection, tracking of the selected features and the calculation of 3D distance of the selected features. The feature tracking approach is based on minimisation of the sum of squared intensity differences between the past and the current window, which determines whether a current window is a warped version of the past window. The 3D positions of these features can be calculated on the basis of the known image coordinates of the same point/window in the left and right camera images. The distance calculation is carried out by employing ‘midpoint of closest approach’. The vision system with the controlling architecture is implemented with the KOALA mobile robot. The system has been tested for real life environment in our laboratory and the experiments showed that the system can reliably detect features and track in subsequent frames and the 3D distances calculated for tracked features showed satisfactory accuracy.
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基于双摄像头的移动机器人图像特征识别、特征跟踪和距离测量视觉系统
本文提出了一种基于双摄像头的图像特征选择、特征跟踪和特征三维距离计算的视觉系统。特征跟踪方法是基于最小化过去和当前窗口之间的强度差的平方和,这决定了当前窗口是否是过去窗口的扭曲版本。这些特征的三维位置可以根据已知的左、右相机图像中同一点/窗口的图像坐标来计算。距离计算采用“最接近中点”进行。在KOALA移动机器人上实现了具有控制体系结构的视觉系统。该系统已在实验室进行了实际环境测试,实验表明,该系统能够可靠地检测出后续帧中的特征和轨迹,跟踪特征的三维距离计算具有令人满意的精度。
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