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A NOVEL METHOD FOR 3D MEASUREMENT OF RFID MULTI-TAG NETWORK USING A MACHINE VISION SYSTEM

机译:一种使用机器视觉系统的RFID多标签网络的三维测量方法

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The three-dimensional (3D) coordinate measurement of radio frequency identification (RFID) multi-tag networks is one of the important issues in the field of RFID, which affects the reading performance of RFID multi-tag networks. In this paper, a novel method for 3D coordinate measurement of RFID multitag networks is proposed. A dual-CCD system (vertical and horizontal cameras) is used to obtain images of RFID multi-tag networks from different angles. The iterative threshold segmentation and the morphological filtering method are used to process the images. The template matching method is respectively used to determine the two-dimensional (2D) coordinate and the vertical coordinate of each tag. After that, the 3D coordinate of each tag is obtained. Finally, a back-propagation (BP) neural network is used to model the nonlinear relationship between the RFID multi-tag network and the corresponding reading distance. The BP neural network can predict the reading distances of unknown tag groups and find out the optimal distribution structure of the tag groups corresponding to the maximum reading distance. In the future work, the corresponding in-depth research on the neural network to adjust the distribution of tags will be done.
机译:射频识别(RFID)多标记网络的三维(3D)坐标测量是RFID领域的重要问题之一,它影响RFID多标签网络的读取性能。本文提出了一种新的RFID多型网络3D坐标测量方法。双CCD系统(垂直和水平摄像机)用于从不同角度获取RFID多标签网络的图像。使用迭代阈值分割和形态过滤方法来处理图像。模板匹配方法分别用于确定每种标签的二维(2D)坐标和垂直坐标。之后,获得每个标签的3D坐标。最后,使用反向传播(BP)神经网络来模拟RFID多标签网络与相应的读取距离之间的非线性关系。 BP神经网络可以预测未知标签组的读取距离,并找出与最大读取距离对应的标签组的最佳分布结构。在未来的工作中,将完成对神经网络调整标签分布的对应深入研究。

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