基于色差聚类的原木图像端面检测与统计

唐浩,王克俭,李晓烨,剪文灏,谷建才

计量学报 ›› 2020, Vol. 41 ›› Issue (6) : 682-688.

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计量学报 ›› 2020, Vol. 41 ›› Issue (6) : 682-688. DOI: 10.3969/j.issn.1000-1158.2020.06.09
光学计量

基于色差聚类的原木图像端面检测与统计

  • 唐浩1,王克俭1,李晓烨1,剪文灏2,谷建才3
作者信息 +

Logs End Detection and Statistics by Color Difference Clustering

  • TANG Hao1,WANG Ke-jian1,LI Xiao-ye1,JIAN Wen-hao2,GU Jian-cai3
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文章历史 +

摘要

针对自然环境下外界因素对原木截面检测的干扰,使用图像处理技术,以自然环境中原木堆放存储时图像为处理对象,设计了一种原木截面识别方法。通过色差值聚类将原木图像分割为原木截面、孔隙及背景,去除背景干扰提取原木端面;采用逐级开运算与改进分水岭算法,对端面进行分割计数。实验结果表明:在自然环境下的正检率91.88%,错检率5.08%,漏检率8.12%,满足了原木截面识别计数的需求。

Abstract

Logs end detection is disturbed by the natural environment. An end detection method for logs accumulation state in natural environment is introduced based on image processing technology. Segmentation of logs images into logs sections, pores and backgrounds by color difference clustering to remove background interference and extracting logs end, segmentation counting is performed using hierarchical opening operation and an improved watershed algorithm. The results show that the correct detection rate is 91.88%, the false detection rate is 5.08%, and the missed detection rate is 8.12% under the high interference environment of natural environment. The method satisfies the requirement for the identification and counting of logs.

关键词

计量学;图像处理;原木端面检测;色差聚类;逐级开运算 / 分水岭算法

Key words

metrology / image processing / logs end detection / color difference clustering / hierarchical opening operation / watershed algorithm

引用本文

导出引用
唐浩,王克俭,李晓烨,剪文灏,谷建才. 基于色差聚类的原木图像端面检测与统计[J]. 计量学报. 2020, 41(6): 682-688 https://doi.org/10.3969/j.issn.1000-1158.2020.06.09
TANG Hao,WANG Ke-jian,LI Xiao-ye,JIAN Wen-hao,GU Jian-cai. Logs End Detection and Statistics by Color Difference Clustering[J]. Acta Metrologica Sinica. 2020, 41(6): 682-688 https://doi.org/10.3969/j.issn.1000-1158.2020.06.09
中图分类号: TP96   

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基金

河北省高等学校技术研究项目(ZD2016158)

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