激光与光电子学进展, 2015, 52 (3): 031501, 网络出版: 2015-02-05   

应用灰度直方图特征识别木材表面节子缺陷

Wood Knot Defects Recognition with Gray-Scale Histogram Features
作者单位
1 内蒙古工业大学机械学院, 内蒙古 呼和浩特 010051
2 内蒙古工业大学轻工与纺织学院, 内蒙古 呼和浩特 010080
摘要
木材表面节子是木材缺陷中非常重要的一类缺陷,也是评定木材外观等级、锯材和单板质量的重要指标。为了提高节子缺陷识别效率及准确性,并改善检测过程的自动化程度,对应用木材表面图像的灰度直方图统计特征进行节子缺陷识别进行研究。通过利用类间距离对7 个统计特征的分类能力进行评价,从而确定出识别节子缺陷的最佳统计特征,即平滑度特征;同时提出一种自适应的最大类间方差聚类法进行分类阈值的确定,进而采用阈值判别实现节子缺陷识别。经在线检测实验证实,该方法的识别率高于99%。
Abstract
The knot on the wood surface is a very important kind of wood defects, and it is the key specification for assessing the appearance grade and the quality of lumber and veneer. To enhance the accuracy and efficiency of knot defects recognition, and improve the automatic level of detecting procedure, the recognition of knot defects by using the statistics features of gray-scale histogram from wood surface image is studied. The classifying ability of seven statistics features is evaluated through using the between-cluster distance, and hence the optimal statistics feature that recognizes the knot defect is determined, such as the smoothness. At the same time, an adaptive clustering method with maximal between-cluster variance is presented to determine the classifying threshold, and then based on that the knot defect is recognized. The online detection experiment shows that the recognition rate of the presented method is up to 99%.
参考文献

[1] M Budakci, H Cinar. Colour effects of stains on wood with knots, cracks and rots[J]. Progress in Organic Coatings, 2004, 51(1): 1-5.

[2] 黄素涌, 王建和, 吕建雄, 等. 世界节子研究进展[J]. 林产工业, 2011, 38(5): 3-7.

    Huang Suyong, Wang Jianhe, Lü Jianxiong, et al.. Review of overall research on knots[J]. China Forest Products Industry, 2011, 38(5): 3-7.

[3] 韩玉杰, 朱国玺, 田中千秋. 木材表面缺陷的激光在线检测技术[J]. 木材工业, 2002, 16(3): 28-30.

    Han Yujie, Zhu Guoxi, Tanaka C. Method of on-line detecting wood surface defects by laser[J]. China Wood Industry, 2002, 16(3): 28-30.

[4] R W Rice, P H Steele, L Kumar. Detecting knots and voids in lumber with dielectric sensors[J]. Industrial Metrology, 1992, 2(3-4): 309-315.

[5] 杨忠, 陈玲, 付跃进, 等. 近红外光谱结合SIMCA 模式识别法检测木材表面节子[J]. 东北林业大学学报, 2012, 40(8): 70-72.

    Yang Zhong, Chen Ling, Fu Yuejin, et al.. Rapid detection of knot defect in wood surface by near infrared spectroscopy coupled with SIMCA pattern recognition[J]. Journal of Northeast Forestry University, 2012, 40(8): 70-72.

[6] E Baradit, R Aedo, J Correa. Knots detection in wood using microwaves[J]. Wood Sci Technol, 2006, 40(2): 118-123.

[7] 龚芳, 张学武, 孙浩. 基于独立分量分析和粒子群算法的太阳能电池表面缺陷红外热成像检测[J]. 光学学报, 2012, 32(4): 0415002.

    Gong Fang, Zhang Xuewu, Sun Hao. Detection system for module surface defects based on constrained ICA model and PSO method[J]. Acta Optica Sinica, 2012, 32(4): 0415002.

[8] 向守兵, 苏光大, 陈健生, 等. 基于机器视觉的码坯异常检测与识别[J]. 光学学报, 2011, 31(7): 0715002.

    Xiang Shoubing, Su Guangda, Chen Jiansheng, et al.. Brick stack anomaly detection and recognition based on machine vision[J]. Acta Optica Sinica, 2011, 31(7): 0715002.

[9] 姜国权, 柯杏, 杜尚丰, 等. 基于机器视觉的农田作物行检测[J]. 光学学报, 2009, 29(4): 1015-1020.

    Jiang Guoquan, Ke Xing , Du Shangfeng, et al.. Crop row detection based on machine vision[J]. Acta Optica Sinica, 2009, 29(4): 1015-1020.

[10] 张学武, 丁燕琼, 闫萍. 一种基于红外成像的强反射金属表面缺陷视觉检测方法[J]. 光学学报, 2011, 31(3): 0312004.

    Zhang Xuewu, Ding Yanqiong, Yan Ping. Vision inspection of metal surface defects based on infrared imaging[J]. Acta Optica Sinica, 2011, 31(3): 0312004.

[11] Y Liu, F H Yu. Automatic inspection system of surface defects on optical IR-CUT filter based on machine vision[J]. Optics and Lasers in Engineering, 2014, 55: 243-257.

[12] F Kurtulmus, T C Ulu. Detection of dead entomopathogenic nematodes in microscope images using computer vision[J]. Biosystems Engineering, 2014, 118:29-38.

[13] 王克奇. 木材表面缺陷的模式识别方法[M]. 北京: 科学出版社, 2011.

    Wang Keqi. The Detection Technique of Wood Surface Defects Based on Pattern Recognition Method[M]. Beijing: Science Publishing House Press, 2011.

[14] 白福忠, 王建新, 杨慧珍, 等. 视觉测量技术基础[M]. 北京: 电子工业出版社, 2013: 98-102.

    Bai Fuzhong, Wang Jianxin, Yang Huizhen, et al.. Foundation of Vision Measurement Technology[M]. Beijing: Publishing House of Electronics Industry, 2013. 98-102.

[15] M Fazal, B Baharum. Analysis of distance metrics in content-based image retrieval using statistical quantized histogram texture features in the DCT domain[J]. Journal of King Saud University-Computer and Information ciences, 2013, 25(2): 207-218.

[16] M A Patricio, D Maravalld. A novel generalization of the gray-scale histogram and its application to the automated visual measurement and inspection of wooden pallets[J]. Image and Vision Computing, 2007, 25(6): 805-816.

[17] 王庆福, 徐晓男, 李新天, 等. 基于EMD 的水声目标信号的特征提取[J]. 声学与电子工程, 2009, 94(2): 1-4.

    Wang Qingfu, Xu Xiaonan, Li Xintian, et al.. The feature extraction of underwater acoustic target based on EMD[J]. Acoustics and Electronics Engineering, 2009, 94(2): 1-4.

宋小燕, 白福忠, 武建新, 陈晓东, 张铁英. 应用灰度直方图特征识别木材表面节子缺陷[J]. 激光与光电子学进展, 2015, 52(3): 031501. Song Xiaoyan, Bai Fuzhong, Wu Jianxin, Chen Xiaodong, Zhang Tieying. Wood Knot Defects Recognition with Gray-Scale Histogram Features[J]. Laser & Optoelectronics Progress, 2015, 52(3): 031501.

本文已被 5 篇论文引用
被引统计数据来源于中国光学期刊网
引用该论文: TXT   |   EndNote

相关论文

加载中...

关于本站 Cookie 的使用提示

中国光学期刊网使用基于 cookie 的技术来更好地为您提供各项服务,点击此处了解我们的隐私策略。 如您需继续使用本网站,请您授权我们使用本地 cookie 来保存部分信息。
全站搜索
您最值得信赖的光电行业旗舰网络服务平台!