Shade recognition of the color label based on the fuzzy clustering

IF 1.9 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
M. Bobyr, A. Arkhipov, A. Yakushev
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引用次数: 5

Abstract

In this article the task of determining the current position of pneumatic actuators is considered. The solution to the given task is achieved by using a technical vision system that allows to apply the fuzzy clustering method to determine in real time the center coordinates and the displacement position of a color label located on the mechatronic complex actuators. The objective of this work is to improve the accuracy of the moving actuator’s of mechatronic complex by improving the accuracy of the color label recognition. The intellectualization of process of the color shade recognition is based on fuzzy clustering. First, a fuzzy model is built, that allows depending on the input parameters of the color intensity for each of the RGB channels and the color tone component, to select a certain color in the image. After that, the color image is binarized and noise is suppressed. The authors used two defuzzification models during simulation a fuzzy system: one is based on the center of gravity method (CoG) and the other is based on the method of area ratio (MAR). The model is implemented based on the method of area ratio and allows to remove the dead zones that are present in the center of gravity model. The method of area ratio determines the location of the color label in the image frame. Subsequently, when the actuator is moved longitudinally, the vision system determines the location of the color label in the new frame. The color label position offset between the source and target images allows to determine the moved distance of the color label. In order to study  how noise affects recognition accuracy, the following digital filters were used: median, Gaussian, matrix and binomial. Analysis of the accuracy of these filters showed that the best result was obtained when using a Gaussian filter. The estimation was based on the signal-to-noise coefficient. The mathematical models of fuzzy clustering of color label recognition were simulated in the Matlab/Simulink environment. Experimental studies of technical vision system performance with the proposed fuzzy clustering model were carried out on a pneumatic mechatronic complex that performs processing, moving and storing of details. During the experiments, a color label was placed on the cylinder, after which the cylinder moved along the guides in the longitudinal direction. During the movement, video recording and image recognition were performed. To determine the accuracy of color label recognition, the PSNR and RMSE coefficients were calculated which were equal 38.21 and 3.14, respectively. The accuracy of determining the displacement based on the developed model for recognizing color labels was equal 99.7%. The defuzzifier speed has increased to 590 ns.
基于模糊聚类的颜色标签阴影识别
本文考虑了确定气动执行机构当前位置的任务。给定任务的解决方案是通过使用技术视觉系统来实现的,该技术视觉系统允许应用模糊聚类方法来实时确定位于机电复杂致动器上的彩色标签的中心坐标和位移位置。本工作的目的是通过提高彩色标签识别的准确性来提高机电一体化运动执行器的准确性。色度识别过程的智能化是基于模糊聚类的。首先,建立了一个模糊模型,该模型允许根据每个RGB通道的颜色强度和色调分量的输入参数来选择图像中的特定颜色。之后,对彩色图像进行二值化并抑制噪声。作者在模拟模糊系统时使用了两种去模糊模型:一种是基于重心法(CoG),另一种是面积比法(MAR)。该模型基于面积比方法实现,并允许去除重心模型中存在的死区。面积比的方法决定了彩色标签在图像帧中的位置。随后,当致动器纵向移动时,视觉系统确定颜色标签在新框架中的位置。源图像和目标图像之间的颜色标签位置偏移允许确定颜色标签的移动距离。为了研究噪声如何影响识别精度,使用了以下数字滤波器:中值滤波器、高斯滤波器、矩阵滤波器和二项式滤波器。对这些滤波器精度的分析表明,当使用高斯滤波器时获得了最佳结果。估计是基于信噪比。在Matlab/Simulink环境下对彩色标签识别的模糊聚类数学模型进行了仿真。在执行细节处理、移动和存储的气动机电一体化复合体上,利用所提出的模糊聚类模型对技术视觉系统的性能进行了实验研究。在实验过程中,将彩色标签放置在圆柱体上,之后圆柱体沿导轨在纵向方向上移动。在运动过程中,进行了视频记录和图像识别。为了确定颜色标签识别的准确性,计算了PSNR和RMSE系数,它们分别等于38.21和3.14。基于所开发的彩色标签识别模型,确定位移的准确率为99.7%。去模糊器的速度已提高到590ns。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Intelligenza Artificiale
Intelligenza Artificiale COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
3.50
自引率
6.70%
发文量
13
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