Journal of Jilin University(Engineering and Technology Edition) ›› 2022, Vol. 52 ›› Issue (7): 1639-1644.doi: 10.13229/j.cnki.jdxbgxb20210672

Previous Articles    

Image segmentation of fencing continuous action based on spatial neighborhood information

Na LI1(),Shao-sheng TAN2()   

  1. 1.College of Physical Education,Jilin Normal University,Siping 136000,China
    2.School of Computer Science and Engineering,South Central University,Changsha 410083,China
  • Received:2021-07-16 Online:2022-07-01 Published:2022-08-08
  • Contact: Shao-sheng TAN E-mail:lina9992021@163.com;ddddaaa202106@163.com

Abstract:

Because the existing methods fail to extract the neighborhood features of the fencing continuous action image, the image segmentation results are not ideal, the anti-noise performance is poor, and the segmentation operation time increases. A fencing continuous action image segmentation method based on spatial neighborhood information is proposed. The feature points of the body contour were extracted automatically, the adaptive neighborhood geometric feature covariance matrix about the feature points as feature point descriptors was set, the similarity of each descriptor was measured, and the neighborhood features of the continuous fencing action were extracted. Then, through the neighborhood feature, the spatial constraint term function was added to the objective function, the spatial neighborhood membership function was set using the prior probability of the pixel, and the kernel function was added at the same time to optimize the image characteristics of the fencing continuous action. A new weighted membership function was obtained through membership function modification, which strengthens the proportion of neighborhood information clustering and completes image segmentation. Finally, an experimental test was carried out. After testing, it is proved that the proposed method can obtain the ideal segmentation effect, and at the same time can improve the anti-noise performance and reduce the segmentation operation time.

Key words: spatial neighborhood information, continuous fencing action, image segmentation, kernel function

CLC Number: 

  • TP391.4

Fig.1

Flow chart of fencing continuous action image segmentation based on spatial neighborhood information"

Fig.2

Segmentation results of single fencing image by different methods"

Fig.3

Segmentation results of double fencing images by different methods"

Fig.4

Anti-noise performance comparison results"

Table 1

Comparison result of image segmentation operation time"

测试对象

编号

图像分割运算时间/s
本文方法文献[3]方法文献[4]方法
001505561
002455057
003606570
004120127134
005125130136
006202430
007364247
008475460
009566671
010747986
011808592
012637076
1 徐莹莹,沈红斌.基于模式识别的生物医学图像处理研究现状[J].电子与信息学报,2020,42(1):201-213.
Xu Ying-ying, Shen Hong-bin. Review of research on biomedical image processing based on pattern recognition[J]. Journal of Electronics & Information Technology, 2020,42(1):201-213.
2 孔松涛,黄镇,杨谨如.红外热像无损检测图像处理研究现状与进展[J].红外技术,2019,41(12):1133-1140.
Kong Song-tao, Huang Zhen, Yang Jin-ru. Research status and development of image processing for infrared thermal image nondestructive testing[J]. Infrared Technology, 2019,41(12):1133-1140.
3 吕福起,李霄民.基于粒子群优化算法和模糊熵的多级阈值图像分割算法[J]. 计算机应用研究,2019,36(9):2856-2860.
Fu-qi Lyu, Li Xiao-min. Multi-level threshold image segmentation algorithm based on particle swarm optimization and fuzzy entropy[J]. Application Research of Computers, 2019,36(9):2856-2860.
4 魏明桦,郑金贵.自适应目标与内容匹配的层级图像分割算法[J].计算机科学与探索,2019,13(4):681-692.
Wei Ming-hua, Zheng Jin-gui. Hierarchical image segmentation based on self-adapted objects and context mat-ching strategy[J]. Journal of Frontiers of Computer Science & Technology, 2019,13(4):681-692.
5 刘飞,范建容,崔兆岩,等.基于DEM分形特征的坡度尺度变换模型[J].山地学报,2019,37(1):129-136.
Liu Fei, Fan Jian-rong, Cui Zhao-yan, et al. A model of re-scaling slope based on DEM fractal feature[J]. Mountain Research, 2019,37(1):129-136.
6 姚远,陈曦,钱静.定量遥感尺度转换方法研究进展[J].地理科学,2019,39(3):367-376.
Yao Yuan, Chen Xi, Qian Jing. A review on the methodology of scale issues in quantitative remote sensing[J]. Scientia Geographica Sinica, 2019,39(3):367-376.
7 王晓飞,胡凡奎,黄硕.基于分布信息直觉模糊c均值聚类的红外图像分割算法[J].通信学报,2020,41(5):120-129.
Wang Xiao-fei, Hu Fan-kui, Huang Shuo. Infrared image segmentation algorithm based on distribution information intuitionistic fuzzy c-means clustering[J]. Journal on Communications, 2020,41(5):120-129.
8 赵仁和,王军锋.自适应尺度的局部强度聚类图像分割模型[J].计算机工程与科学,2020,42(6):1043-1048.
Zhao Ren-he, Wang Jun-feng. An adaptive scale local intensity clustering image segmentation model[J]. Computer Engineering and Science, 2020,42(6):1043-1048.
9 高西,胡子牧.基于改进k-means算法的数字图像聚类[J].液晶与显示,2020,35(2):173-179.
Gao Xi, Hu Zi-mu. Digital image clustering based on improved k-means algorithm[J]. Chinese Journal of Liquid Crystals and Displays, 2020,35(2):173-179.
10 金秋含,王阳萍,杨景玉.自适应空间信息MRF的FCM遥感图像聚类[J]. 计算机工程与设计,2019,40(8):2301-2305.
Jin Qiu-han, Wang Yang-ping, Yang Jing-yu. FCM remote sensing image clustering based on adaptive spatial information MRF[J]. Computer Engineering and Design, 2019,40(08):2301-2305.
11 岳文静,刘文博,陈志.基于图像K-means聚类分析的频谱感知算法[J].信号处理,2020,36(2):203-209.
Yue Wen-jing, Liu Wen-bo, Chen Zhi. Spectrum sensing algorithm based on image K-means clustering analysis[J]. Journal of Signal Processing, 2020,36(2):203-209.
12 陈凯,陈秀宏.基于ELM的局部空间信息的模糊C均值聚类图像分割算法[J].数据采集与处理,2019,34(1):100-110.
Chen Kai, Chen Xiu-hong. Fuzzy C-means clustering image segmentation algorithm with local spatial information based on ELM[J]. Journal of Data Acquisition & Processing, 2019,34(1):100-110.
13 赵战民,朱占龙,刘永军,等.对类大小不敏感的图像分割模糊C均值聚类方法[J].激光与光电子学进展,2020,57(2):56-65.
Zhao Zhan-min, Zhu Zhan-long, Liu Yong-jun. Fuzzy c-means clustering algorithm for image segmentation insensitive to cluster size[J]. Laser & Optoelectronics Progress, 2020,57(2):56-65.
14 王艳平,王金英,申立平.基于粗糙隶属函数的强粗糙模糊近似算子[J].数学的实践与认识,2020,50(3):245-250.
Wang Yan-ping, Wang Jin-ying, Shen Li-ping. The better fuzzy rough approximation operators based on rough membership function[J]. Mathematics in Practice and Theory, 2020,50(3):245-250.
[1] Sheng-sheng WANG,Lin-yan JIANG,Yong-bo YANG. Transfer learning of medical image segmentation based on optimal transport feature selection [J]. Journal of Jilin University(Engineering and Technology Edition), 2022, 52(7): 1626-1638.
[2] Xue WANG,Zhan-shan LI,Ying-da LYU. Medical image segmentation based on multi⁃scale context⁃aware and semantic adaptor [J]. Journal of Jilin University(Engineering and Technology Edition), 2022, 52(3): 640-647.
[3] Sheng-sheng WANG,Jing-yu CHEN,Yi-nan LU. COVID⁃19 chest CT image segmentation based on federated learning and blockchain [J]. Journal of Jilin University(Engineering and Technology Edition), 2021, 51(6): 2164-2173.
[4] Song-mei TANG. Key technology of face recognition system based on swarm intelligence in library [J]. Journal of Jilin University(Engineering and Technology Edition), 2021, 51(6): 2216-2224.
[5] Lu-shen WU,Wei CHENG,Yun HU. Image segmentation of multilevel threshold based on improved cuckoo search algorithm [J]. Journal of Jilin University(Engineering and Technology Edition), 2021, 51(1): 358-369.
[6] Feng-li GAO,Min TAO,Xue-yan LI,Xin HE,Fan YANG,Zhuo WANG,Jun-feng SONG,Dan TONG. Accurate segmentation of stroke in CT image based on deep learning [J]. Journal of Jilin University(Engineering and Technology Edition), 2020, 50(2): 678-684.
[7] Jun-jun LI,Jian-nong CAO,Bei-bei CHENG,Juan LIAO,Ying-ying ZHU. High spatial resolution remote sensing imagery segmentation based on combination of pixels and multi⁃scaleobjects using spectral clustering [J]. Journal of Jilin University(Engineering and Technology Edition), 2019, 49(6): 2098-2108.
[8] LIU Zhong-min,WANG Yang,LI Zhan-ming,HU Wen-jin. Image segmentation algorithm based on SLIC and fast nearest neighbor region merging [J]. Journal of Jilin University(Engineering and Technology Edition), 2018, 48(6): 1931-1937.
[9] XIAO Ming-yao, LI Xiong-fei, ZHANG Xiao-li, ZHANG Liu. Medical image segmentation algorithm based on multi-scale region growing [J]. 吉林大学学报(工学版), 2017, 47(5): 1591-1597.
[10] LIU Zhong-min, LI Zhan-ming, LI Bo-hao, HU Wen-jin. Spectral clustering image segmentation based on sparse matrix [J]. 吉林大学学报(工学版), 2017, 47(4): 1308-1313.
[11] ZHAO Fu-qun, ZHOU Ming-quan, GENG Guo-hua. Image threshold segmentation with GA-Otsu method and quantitative identification [J]. 吉林大学学报(工学版), 2017, 47(3): 959-964.
[12] XIAO Ming-yao, LI Xiong-fei. Multi-scale 3D Otsu thresholding algorithm based on Gaussian decomposition [J]. 吉林大学学报(工学版), 2017, 47(1): 255-261.
[13] WANG Pei-zhi, TIAN Di, LONG Tao, LI Di-fei, QIU Chun-ling, LIU Dun-yi. Automatic focusing algorithm for TOF-SIMS zircon sample image [J]. 吉林大学学报(工学版), 2017, 47(1): 308-315.
[14] SHANG Qiang, YANG Zhao-sheng, ZHANG Wei, Bing Qi-chun, ZHOU Xi-yang. Short-term traffic flow prediction based on singular spectrum analysis and CKF-LSSVM [J]. 吉林大学学报(工学版), 2016, 46(6): 1792-1798.
[15] LIN Jun, ZHAO Yue, JIANG Chuan-dong, LI Tong, LIU Xiao-nan. Three-dimensional forward modeling with high precision for underground MRS based on Hammer integration [J]. 吉林大学学报(工学版), 2016, 46(2): 609-615.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!