Computer Vision Based Distance Measurement System using Stereo Camera View

E. Dandıl, K. K. Çevik
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引用次数: 16

Abstract

In recent years, especially in industrial automation systems, in order for robots to understand their distances and positions according to the target, close to human vision, computer vision systems are needed. Computer vision close to human vision can only be created using stereo cameras. In this study, a computer vision system is developed using the stereo camera system for measuring object distances. In the study, first of all, for the distance measurement, the distance of the face images obtained from the stereo camera system to the screen is calculated. In measuring the distances of the face images to screen, the disparity maps are first extracted and the face region is detected. Afterwards, the distance measurements are performed on the obtained images in the stereo camera system on account of calculating the shifts between the frames. In the experimental studies, the actual distance values such as 71, 74, 75, 79, 110, 125, and 115 of the face to the screen are measured as 70, 72, 73, 77, 97, 120, 132 cm by proposed system, respectively. When the experimental results are examined, we can say that the proposed computer vision system is successful in distance measurement using stereo camera view.
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基于立体摄像机视角的计算机视觉距离测量系统
近年来,特别是在工业自动化系统中,为了使机器人根据目标,接近人类的视觉来了解自己的距离和位置,需要计算机视觉系统。接近人类视觉的计算机视觉只能通过立体摄像机来实现。在本研究中,开发了一种利用立体相机系统测量物体距离的计算机视觉系统。在本研究中,首先,对于距离测量,计算从立体摄像系统获得的人脸图像到屏幕的距离。在测量人脸图像到屏幕的距离时,首先提取视差图并检测人脸区域。然后,通过计算帧间的位移,对获得的图像在立体相机系统中进行距离测量。在实验研究中,所提出的系统分别测量了人脸到屏幕的实际距离值71、74、75、79、110、125、115分别为70、72、73、77、97、120、132 cm。通过对实验结果的检验,我们可以说所提出的计算机视觉系统在立体摄像机视图的距离测量中是成功的。
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