Research on Cigarette strip defect Detection System based on ZYNQ

Shuhang Chen, Ziyang Luo, X. Li, Runhua He
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Abstract

At present, most of the tobacco quality inspection links use manual, but due to the speed and detection accuracy is not high enough, often lead to a very long quality inspection links, and mistakenly checked cigarettes into the market will cause economic losses to the company. In order to improve the speed and accuracy of cigarette inspection, a ZYNQ cigarette bar defect detection system was designed and implemented. After binarization processing and image filtering, Sobel operator is used to draw the contour of the image, and then Hough transform is used to get the image of the end face broken line. After rotation correction of the image, the judgment of defect detection is made. If the defect type is determined, the defective products are separated by sound and light alarm and automatic smoke separation device. The experiment shows that the average detection speed of the system for cigarette bar defects is less than 40ms, which meets the real-time requirements of the system. The detection accuracy is 98.67%, and the false detection rate is 0.05%, with low false detection rate.
基于ZYNQ的卷烟带缺陷检测系统研究
目前,卷烟质检环节大多采用手工,但由于速度和检测精度不够高,往往导致质检环节很长,而检错的卷烟流入市场会给企业造成经济损失。为了提高卷烟检测的速度和准确性,设计并实现了ZYNQ卷烟棒缺陷检测系统。经过二值化处理和图像滤波后,使用Sobel算子绘制图像轮廓,然后使用Hough变换得到端面折线的图像。对图像进行旋转校正后,进行缺陷检测判断。确定缺陷类型后,通过声光报警和自动隔烟装置对缺陷产品进行隔离。实验表明,该系统对卷烟条缺陷的平均检测速度小于40ms,满足了系统的实时性要求。检测准确率为98.67%,误检率为0.05%,误检率低。
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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