Please wait a minute...
《材料导报》期刊社  2017, Vol. 31 Issue (24): 174-178    https://doi.org/10.11896/j.issn.1005-023X.2017.024.034
  材料研究 |
聚晶金刚石复合片表面裂纹视觉检测技术研究
李慧慧1,2,郭 桦1,2,陈 琛1,2,黄莹祥1,2
1 华侨大学脆性材料加工技术教育部工程研究中心,厦门 361021;
2 华侨大学制造工程研究院, 厦门 361021
Vision Detection Technology Research for Surface Crack of Polycrystalline Diamond Compact
LI Huihui1,2, GUO Hua 1,2, CHEN Chen 1,2, HUANG Yingxiang 1,2
1 Engineering Research Center for Machining of Brittle Materials of Ministry of Education, Huaqiao University, Xiamen 361021;
2 Institute of Manufacturing Engineering, Huaqiao University, Xiamen 361021
下载:  全 文 ( PDF ) ( 672KB ) 
输出:  BibTeX | EndNote (RIS)      
摘要 采用计算机视觉检测技术提取出表面缺陷特征量,完成聚晶金刚石复合片表面裂纹缺陷检测。首先,根据聚晶金刚石复合片表面特性,研究合适的光源照明系统。然后,提出一种基于直方图投影梯度极值的局部边界提取方法,将感兴趣区域进行提取。在此基础上,采用图像滤波、阈值分割的方法实现裂纹的准确提取。最后,通过计算裂纹连通域的圆形度和长宽比进行裂纹识别。实验结果表明,本方法可有效地对聚晶金刚石复合片表面裂纹缺陷进行检测。
服务
把本文推荐给朋友
加入引用管理器
E-mail Alert
RSS
作者相关文章
李慧慧
郭 桦
陈 琛
黄莹祥
关键词:  聚晶金刚石复合片  裂纹缺陷  边界提取  视觉检测    
Abstract: Computer vision detection technology was adopted to extract the defect feature quantity of the surface, and further completed the detection of surface crack defects in polycrystalline diamond compact. First, according to the features of polycrystalline diamond compact, the appropriate light source lighting system was studied. Then, a local boundary extraction method based on the histogram projection gradient extremum was proposed, and the region of interest (ROI) was extracted. On this basis, the method of image filtering and threshold segmentation were used to realize the accurate extraction of the crack. Finally, the crack was identified by calculating the circularity factor and aspect ratio of the cracked domain. Experimental results showed that this method can effectively detect the surface crack defects of polycrystalline diamond compact.
Key words:  polycrystalline diamond compact (PDC)    crack defect    boundary extraction    vision detection
               出版日期:  2017-12-25      发布日期:  2018-05-08
ZTFLH:  TB333  
  TP391  
基金资助: 国家科技支撑计划资助项目(2012BAF13B04);华侨大学研究生科研创新能力培育计划资助项目(1511403006)
通讯作者:  郭桦:男,1956年生,博士,教授,硕士研究生导师,主要研究领域为超硬材料 E-mail:guoh1214@hqu.edu.cn   
作者简介:  李慧慧:女,1992年生,硕士研究生,研究方向为视觉检测技术 E-mail:18850079496@163.com
引用本文:    
李慧慧,郭 桦,陈 琛,黄莹祥. 聚晶金刚石复合片表面裂纹视觉检测技术研究[J]. 《材料导报》期刊社, 2017, 31(24): 174-178.
LI Huihui, GUO Hua, CHEN Chen, HUANG Yingxiang. Vision Detection Technology Research for Surface Crack of Polycrystalline Diamond Compact. Materials Reports, 2017, 31(24): 174-178.
链接本文:  
http://www.mater-rep.com/CN/10.11896/j.issn.1005-023X.2017.024.034  或          http://www.mater-rep.com/CN/Y2017/V31/I24/174
1 Kanyanta V, Ozbayraktar S, Maweja K. Effect of manufacturing parameters on polycrystalline diamond compact cutting tool stress-state[J]. Int J Refractory Metals Hard Mater, 2014,45:147.
2 Yahiaoui M, Gerbaud L, Paris J Y, et al. A study on PDC drill bits quality[J].Wear,2013,298-299(1):32.
3 Jeon Y J, Yun J P, Choi D C, et al. Defect detection algorithm for corner cracks in steel billet using discrete wavelet transform[C]∥ ICROS-SICE International Joint Conference 2009. Fukuoka Int Congress Center, 2009:2769.
4 Li Y, Dhakal S, Peng Y. A machine vision system for identification of micro-crack in egg shell[J]. J Food Eng, 2012,109(1):127.
5 Adhikari R S, Moselhi O, Bagchi A. Image-based retrieval of concrete crack properties for bridge inspection[J]. Automation Constr, 2014,39(4):180.
6 Li Rongxuan, Shen Xizhong, Zhang Shuhang, et al. Surface crack detection of shaft components based on image processing[J]. J Graphics, 2015(1):62(in Chinese).
厉荣宣,沈希忠,张树行,等. 基于图像处理的轴类零件表面裂纹检测[J]. 图学学报, 2015(1):62.
7 Fu Bangrui. Image detection on surface crack of billet[D]. Chengdu: University of Electronic Science and Technology of China, 2012(in Chinese).
付邦瑞. 钢坯表面裂纹图像检测[D]. 成都:电子科技大学, 2012.
8 Zhang Junxiong, Xun Yi, Li Wei. Detection of surface cracks of corn kernel based on morphology[J]. Optics Precision Eng, 2007,15(6):951(in Chinese).
张俊雄,荀一,李伟. 基于形态特征的玉米种子表面裂纹检测方法[J]. 光学精密工程, 2007,15(6):951.
9 Wang Yiwen. Research of steel ball surface detection key technology and development of prototype[D]. Harbin: Harbin University of Science and Technology, 2010(in Chinese).
王义文. 钢球表面缺陷检测关键技术研究及样机研制[D].哈尔滨:哈尔滨理工大学, 2010.
10Li Wubin. Research on vision-based online detection algorithm for surface defects of hot rolled steel bar[D]. Jinan: Shandong University, 2013(in Chinese).
李武斌. 热轧圆钢表面缺陷视觉在线检测算法研究[D]. 济南:山东大学, 2013.
11Zhang Hongtao. Research of key technology on on-line surface defects detection system for steel plate based on computer vision[D]. Tianjin: Tianjin University, 2008(in Chinese).
张洪涛. 钢板表面缺陷在线视觉检测系统关键技术研究[D]. 天津:天津大学, 2008.
12Gao Min, Wu Fupei, Li Shengping. Region of interest extraction algorithm based on gray-level projection histogram[J]. J Shantou University (Nat Sci), 2012,27(4):54(in Chinese).
高敏,吴福培,李昇平. 基于投影直方图提取目标感兴趣区域的新方法[J]. 汕头大学学报(自然科学版), 2012,27(4):54.
13Gonzalez R C,Woods R E. 数字图像处理(MATLAB版)[M]. 阮秋琦, 等, 译. 北京:电子工业出版社,2005:72.
14Qian Weixin, Liu Ruigen, Wang Wanli. An improved method of adaptive median filter[J]. Optics Optoelectron Technol, 2011,9(4):35(in Chinese).
钱伟新,刘瑞根,王婉丽. 一种改进的自适应中值滤波算法[J]. 光学与光电技术, 2011,9(4):35.
15Hu Huanxing. Research of technology on surface defects detection for magnetic tile based on machine vision[D]. Nanchang: Nanchang University, 2015(in Chinese).
胡环星. 基于机器视觉的磁瓦表面缺陷检测技术研究[D]. 南昌:南昌大学, 2015.
16Kong Xiangwei, Qu Xinghua, Zhang Liping, et al. Image processing of the precision measurement on metal surface production defect[J]. Nanotechnol Precision Eng, 2008,6(4):267(in Chinese).
孔祥伟,曲兴华,张立平,等. 精确测量金属镀层工件表面缺陷的图像处理方法[J]. 纳米技术与精密工程, 2008,6(4):267.
17Otsu N. A threshold selection method from gray-level histograms[J]. Systems Man Cybernetics IEEE Transactions on,1979,9(1):62.
[1] 魏波,周金堂,姚正军,钱逸,钱崑. 环氧树脂基体的原位增韧技术研究进展[J]. 材料导报, 2019, 33(17): 2976-2988.
[2] 丁晓飞, 范同祥. 石墨烯增强铜基复合材料的研究进展[J]. 材料导报, 2019, 33(z1): 67-73.
[3] 崔海坡, 张伟东, 宋成利, 王成勇, 张涛, 张春晓, 程千莉. 微创血管夹不同齿型对血管力学性能的影响[J]. 材料导报, 2019, 33(z1): 432-435.
[4] 赵雪妮, 杨建军, 何富珍, 张黎, 王瑶, 张伟刚, 刘庆瑶. 碳纤维表面处理及熔盐电镀Al涂层的研究[J]. 材料导报, 2019, 33(4): 674-677.
[5] 吴治涌, 水世显, 张显, 杨鹏, 万艳芬. 贵金属纳米颗粒-二维过渡金属硫化物复合纳米结构:制备技术与光电性能[J]. 材料导报, 2019, 33(3): 426-432.
[6] 徐帅, 陈灵芝, 曹书光, 贾皓东, 周张健. 先进核能系统用ODS钢的显微组织设计与调控研究进展[J]. 材料导报, 2019, 33(1): 78-89.
[7] 张修超, 蔡晓兰, 周蕾, 乔颖博, 吴灿, 张爽, 朱伟. 高能球磨工艺对B4C/Al复合粉体结构演变及分布均匀性的影响[J]. 材料导报, 2018, 32(15): 2653-2658.
[8] 莫培程, 吴一, 于文霖, 王吉林, 邹正光, 钟生林, 王鹏. cBN-Ti-Al-Si原位合成PcBN复合材料及其力学性能[J]. 《材料导报》期刊社, 2018, 32(14): 2355-2359.
[9] 贾建刚, 高昌琦, 刘第强, 季根顺, 薛向军, 郭铁明, 郝相忠. 表面镀Ni碳纤维增强Cu基复合材料的制备和表征[J]. 《材料导报》期刊社, 2018, 32(14): 2462-2466.
[10] 李颖, 梅园, 王颖, 孟凡彬, 周祚万. 面向金属/树脂复合材料的纳米注塑成型技术综述[J]. 《材料导报》期刊社, 2018, 32(13): 2295-2303.
[11] 杜成鑫, 杜忠华, 高光发, 徐立志, 程春, 王晓东. 钨丝/锆基非晶复合材料研究进展[J]. 《材料导报》期刊社, 2018, 32(13): 2252-2266.
[12] 袁秋红,周国华,廖 琳. 石墨烯纳米片/AZ91镁基复合材料的显微组织与力学性能[J]. 《材料导报》期刊社, 2018, 32(10): 1663-1667.
[13] 张晓宇,许旻,曹生珠. 高导热金刚石/铜复合材料界面修饰研究进展[J]. 《材料导报》期刊社, 2018, 32(3): 443-452.
[14] 陈毓焘, 李文晓, 金世奇. 铺层角度对碳纤维/形状记忆环氧树脂层合板形状回复性能的影响*[J]. 《材料导报》期刊社, 2017, 31(20): 11-16.
[15] 周建华, 查向华. 纳米银/聚合物复合材料的原位法制备技术综述*[J]. 《材料导报》期刊社, 2017, 31(19): 43-50.
No Suggested Reading articles found!
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed