文章摘要
韩彦芳,杨海马,杨志豪,张裕聪,王紫菲.复杂场景下隧道电缆图像分割算法[J].包装工程,2022,43(21):169-180.
HAN Yan-fang,YANG Hai-ma,YANG Zhi-hao,ZHANG Yu-cong,WANG Zi-fei.An Algorithm for Tunnel Cable Image Segmentation under Complex Environment[J].Packaging Engineering,2022,43(21):169-180.
复杂场景下隧道电缆图像分割算法
An Algorithm for Tunnel Cable Image Segmentation under Complex Environment
  
DOI:10.19554/j.cnki.1001-3563.2022.21.022
中文关键词: 图像分割  光照不均  曲线拟合  区域生长  ROI
英文关键词: image segmentation  non-uniform illumination  curve fitting  region growing  ROI
基金项目:中科院空间主动光电技术重点实验室开放基金(2021ZDKF4);上海市科委科技创新行动计划(21S31904200)
作者单位
韩彦芳 上海理工大学 光电信息与计算机工程学院上海 200093 
杨海马 上海理工大学 光电信息与计算机工程学院上海 200093 
杨志豪 上海理工大学 光电信息与计算机工程学院上海 200093 
张裕聪 上海理工大学 光电信息与计算机工程学院上海 200093 
王紫菲 上海理工大学 光电信息与计算机工程学院上海 200093 
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中文摘要:
      目的 分析图像空间分布和灰度分布特征,改进区域生长图像分割方法,解决光照不均,墙面多种不利因素影响造成的电缆图像分割耗时长、效果差的问题。方法 首先按照墙面不利情况对图像进行分类,采用灰度均值方向投影法分析各类图像灰度分布特性,利用包络拟合离差获取电缆ROI,结合ROI空间分布信息,进行种子点初始化和终止准则设定,大大降低待处理数据量,同时避开光照不均和墙面不利因素的影响,并与K–Means聚类、全局区域生长、Unet语义分割等方法进行对比。结果 对于大小为1 000×1 800的图像,文中方法平均分割时间为0.42 s,对于各类数据集,最大误检率和漏检率只有4%。结论 文中方法有效克服了区域生长分割效果差、耗时长的缺陷,能同时解决光照不均和各种墙面不利因素影响下电缆准确分割的问题,分割效果好、耗时少。
英文摘要:
      The work aims to analyze the characteristics of image spatial distribution and gray distribution, improve the region growing segmentation method, and solve the problems of long time consumption and poor effect of cable image segmentation caused by uneven illumination and various adverse factors on the tunnel wall. Firstly, the images were classified according to the adverse conditions of the wall. Then, the gray distribution characteristics of various images were analyzed by means of vertical projection of mean gray. After that, the cable ROI was obtained with the help of the envelope fitting deviation, and the seed point initialization and termination criteria were set in combination with the spatial distribution information of ROI, so as to greatly reduce the amount of data to be processed and avoid the influence of uneven illumination and adverse factors of the wall. Finally, comparisons were made with K-means clustering, global region growth and Unet semantic segmentation. For images of 1 000×1 800, the average segmentation time was about 0.42 s. For all kinds of adverse situations, the maximum false detection rate and missed detection rate were only 4%.The proposed method effectively overcomes the drawbacks of poor segmentation effect and longtime consumption of region growing method, and efficiently and successfully realizes accurate cable segmentation under the influence of non-uniform illumination and various adverse factors.
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