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用于弱纹理场景三维重建的机器人视觉系统
引用本文:林义闽,吕乃光,娄小平,董明利.用于弱纹理场景三维重建的机器人视觉系统[J].光学精密工程,2015,23(2):540-549.
作者姓名:林义闽  吕乃光  娄小平  董明利
作者单位:1. 北京邮电大学 信息光子学与光通信研究院, 北京 100876;2. 北京信息科技大学 光电测试技术北京市重点实验室, 北京 100192
基金项目:北京市科学技术委员会资助项目(No.Z121100001612011);教育部"长江学者与创新团队"发展计划资助项目(No.IRT1212);北京市属高等学校创新团队发展计划项目资助(No.IDHT20130518)
摘    要:为了实现机器人在弱纹理场景中的避障和自主导航,构建了由双目相机和激光投点器构成的主动式双目视觉系统。对立体视觉密集匹配问题进行了研究:采用激光投点器投射出唯一性和抗噪性较好的光斑图案,以增加场景的纹理信息;然后,基于积分灰度方差(IGSV)和积分梯度方差(IGV)提出了自适应窗口立体匹配算法。该算法首先计算左相机的积分图像,根据积分方差的大小确定匹配窗口内的图像纹理质量,然后对超过预设方差的阈值与右相机进行相关计算,最后通过遍历整幅图像得到密集的视差图。实验结果表明:该视觉系统能够准确地恢复出机器人周围致密的3D场景,3D重建精度达到0.16mm,满足机器人避障和自主导航所需的精度。与传统的算法相比,该匹配方法的图像方差计算量不会随着窗口尺寸的增大而增加,从而将密集匹配的运算时间缩短了至少93%。

关 键 词:机器人视觉  三维重建  积分图像  灰度方差  梯度方差  自适应窗口  立体匹配
收稿时间:2014-07-17

Robot vision system for 3D reconstruction in low texture environment
LIN Yi-min,L&#,Nai-guang,LOU Xiao-ping,Dong Ming-li.Robot vision system for 3D reconstruction in low texture environment[J].Optics and Precision Engineering,2015,23(2):540-549.
Authors:LIN Yi-min  L&#  Nai-guang  LOU Xiao-ping  Dong Ming-li
Affiliation:1. Institute of Optical Communication & Optoelectronics, Beijing University of Posts & Telecommunications, Beijing 100876, China;2. Beijing Key Laboratory of Optoelectronic Measurement Technology, Beijing Information Science & Technology University, Beijing 100192, China
Abstract:To realize the obstacle avoidance and automatic navigation of a robot in a low texture environment, an active stereo visual system consisting a binocular camera and a compact laser projector was established. The dense stereo matching algorithm was investigated. Firstly, the compact laser projector generated the spot patterns with excellent uniqueness and anti-noise performance for increasing the texture information. Then, an adaptive-window matching algorithm was proposed based on Integral Grayscale Variance(IGSV)and Integral Gradient Variance(IGV). The algorithm was used calculate the integral variance in a matching window using the integral image obtained by the left image. If it was greater than the variance threshold, the correlation between the left and right image pixels was calculated to get the dense disparity maps. Experimental results show that the vision system accurately gets the 3D dense scene around the robot and the 3D reconstruction accuracy is 0.16 mm, which is suitable for the obstacle avoidance and automatic navigation. As compared with the traditional methods, the computation cost of dense matching has at least decreased by 93% since the computation used for image variance could not increase with the size of the matching window.
Keywords:robot vision  three-dimensional reconstruction  integral image  grayscale variance  gradient variance  adaptive-window  stereo matching
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