School of Electrical and Electronic Engineering, Yonsei University, Seodaemun-Gu, Seoul 120-749, Korea.
Sensors (Basel). 2013 Aug 7;13(8):10052-73. doi: 10.3390/s130810052.
We propose an intelligent vision-based Automated Guided Vehicle (AGV) system using fiduciary markers. In this paper, we explore a low-cost, efficient vehicle guiding method using a consumer grade web camera and fiduciary markers. In the proposed method, the system uses fiduciary markers with a capital letter or triangle indicating direction in it. The markers are very easy to produce, manipulate, and maintain. The marker information is used to guide a vehicle. We use hue and saturation values in the image to extract marker candidates. When the known size fiduciary marker is detected by using a bird's eye view and Hough transform, the positional relation between the marker and the vehicle can be calculated. To recognize the character in the marker, a distance transform is used. The probability of feature matching was calculated by using a distance transform, and a feature having high probability is selected as a captured marker. Four directional signals and 10 alphabet features are defined and used as markers. A 98.87% recognition rate was achieved in the testing phase. The experimental results with the fiduciary marker show that the proposed method is a solution for an indoor AGV system.
我们提出了一种基于智能视觉的自动导引车(AGV)系统,使用基准标记。在本文中,我们探索了一种使用消费级网络摄像头和基准标记的低成本、高效的车辆引导方法。在所提出的方法中,系统使用带有大写字母或三角形的基准标记来指示方向。标记非常易于制作、操作和维护。标记信息用于引导车辆。我们使用图像中的色调和饱和度值来提取标记候选。当使用俯视和霍夫变换检测到已知大小的基准标记时,可以计算标记和车辆之间的位置关系。为了识别标记中的字符,使用距离变换。使用距离变换计算特征匹配的概率,并选择具有高概率的特征作为捕获的标记。定义了四个方向信号和 10 个字母特征作为标记。在测试阶段实现了 98.87%的识别率。基准标记的实验结果表明,所提出的方法是室内 AGV 系统的解决方案。