Accurate removal of the skeletal burrs is the most critical step in the extraction of interference fringe skeleton, which can be applied in laser interference fringe detection. A burrs removal algorithm of interference fringe skeleton based on skeleton features is proposed,which includes the acquisition of feature points of skeleton and the tracking of the eight-neighborhood linked list. First, the pixel points are scanned one by one to obtain the four feature points of the skeleton: endpoints, nodes, glitch points, and backbone points. Then, the algorithm of eight neighborhood linked list based on feature points is used to extract all the glitch points and backbone points, and the difference operation was performed based on nodes to remove the burrs. Finally, the processed image is iterated until the interference fringe skeleton burrs are completely removed. The OpenCV machine vision algorithm was used to simulate the burrs image removal, the results were verified by 1 000 pieces of burrs images, and the correct rate of burrs removal is 94%. Compared with the traditional scheme, the proposed algorithm has a higher pertinence, retains the backbone of the skeleton, and removes the remaining burrs, which has a broad application prospect in interference fringe detection.
Key words
removal burr /
skeleton extraction /
image processing /
OpenCV
{{custom_keyword}} /
{{custom_sec.title}}
{{custom_sec.title}}
{{custom_sec.content}}
References
王婉心, 贾立锋. 骨架提取中的毛刺去除方法[J]. 广东工业大学学报,2014,31(4):90-94.
宁亚辉, 雷小奇, 王功孝, 等. 改进的基于模板去除骨架毛刺的方法[J]. 计算机应用,2011,31(z1):58-59.
范志刚, 李润顺, 崔占华. 干涉条纹图的处理方法研究[J]. 光学技术,2000,26(5):258-262.
唐晓强, 赖惠成. 形态学结构元素选取算法的研究[J]. 通信技术,2010,43(7):161-162.
秦筱楲, 蔡超, 周成平. 一种有效的骨架毛刺去除算法[J]. 华中科技大学学报: 自然科学版,2004,32(12):28-31.
曹增强, 范忠诚. 一种去除图像毛刺的快速算法[J]. 数据采集与处理,1992,7(3):235-240.
周山. 结合二值形态学的图象边缘检测方法及其MATLAB实现[D]. 上海: 华东师范大学, 2008.
贾永红. 数字图像处理[M]. 武汉: 武汉大学出版社, 2003.
张翠芳, 杨国为, 岳明明. Zhang并行细化算法的改进[J]. 信息技术与信息化,2016(6):69-71.
张胜军,
WANG Wanxin, JIA Lifeng. The method of removing burrs in skeleton extraction[J]. Journal of Guangdong University of Technology,2014,31(4):90-94.
NING Yahui, LEI Xiaoqi, WANG Gongxiao, et al. Improved template-based method of burr removal[J]. Journal of Computer Applications,2011,31(z1):58-59.
FAN Zhigang, LI Runshun, CUI Zhanhua. Study on the processing method of interference fringe pattern[J]. Optic Technique,2000,26(5):258-262.
TANG Xiaoqiang, LAI Huicheng. Study on structure elements based on mathematical morphology[J]. Communications Technology,2010,43(7):161-162.
QIN Xiaowei, CAI Chao, ZHOU Chengping. An algorithm for removing burr of skeleton[J]. Journal of Huazhong University of Science and Technology : Nature Science,2004,32(12):28-31.
CAO Zengqiang, FAN Zhongcheng. An algorithm for fast eliminating image thorns[J]. Journal of Data Acquisition & Processing,1992,7(3):235-240.
ZHOU Shan. Association of binary morphological image edge detection method and realization of MATLAB
{{custom_fnGroup.title_en}}
Footnotes
{{custom_fn.content}}