Advertisement

STUDY AND REALIZATION OF IMAGE SEGMENTATION ON THE COTTON FOREIGN FIBERS

  • Wenxiu Zheng
  • Jinxing Wang
  • Shuangxi Liu
  • Xinhua Wei
Conference paper
Part of the IFIP Advances in Information and Communication Technology book series (IFIPAICT, volume 294)

Abstract

A method of foreign fibers image segmentation based on Mean shift, dilation and filtering algorithm is presented. For the representative gray images of hair, chicken feather and mixed foreign fibers, the Mean shift algorithm is used to carry on image segmentation; then dilation and filtering process is carried on to the divided image element. In this way the precise image segmentation of foreign fibers is realized. It’s proved by experiments that the image segmentation method proposed by this article can suppress the noise well, and the segmentation results are satisfied for all kinds of foreign fibers image.

Keywords

Image Segmentation Histogram Analysis Gray Image Chicken Feather Excessive Processing 
These keywords were added by machine and not by the authors. This process is experimental and the keywords may be updated as the learning algorithm improves.

References

  1. Chen Donglan, Liu Jingnan, Yu Ling-ling. Comparison of image segmentation threshold method[J].Machine Building & Automation, 2003, 1(1):77∼80Google Scholar
  2. Jason E. Fritts, Hui Zhang, et al. Image segmentation evaluation: A survey of unsupervised methods. Computer Vision and Image Understanding, 2008, 110 (2): 260∼280CrossRefGoogle Scholar
  3. Jensen K L, Carstensen J M. Fuzz and pills evaluated on knitted textiles by image analysis [J]. Textile Res J, 2002, 72(1): 34∼38CrossRefGoogle Scholar
  4. Jiao Wenxing, Pan Tianli, Li Yue. Application of computer vision technique in agricultural products quality inspection. Shanxi Journal of Agricultural Sciences, 2003, (5):29~33Google Scholar
  5. Kang T J, Kim S C. Objection evaluation of the trash and color of raw cotton by image processing and neural network[J]. Textile Res J, 2002, 72(9): 776∼782CrossRefGoogle Scholar
  6. Kapur J N, Sahoo P K. A new method for gray-level picture threshold using the entropy of the histogram[J]. Computer Vision, Graphics, and Image Processing, 1985, 29(3):273∼285CrossRefGoogle Scholar
  7. Li Bidan, Ding Tianhuai, Jia Dongyao. Design of a Sophisticated Foreign Fiber Separator [J]. Agricultural Machinery Journal, 2006, 37 (1):107–110Google Scholar
  8. Wang Xinlong, Li Na. Summary of the foreign fibers [J]. China Cotton Processing, 2002, (5):29~30Google Scholar
  9. Ying Xu, Victor Olman, et al. A segmentation algorithm for noisy images: design and evaluation. Pattern Recognition Letters, 1998, 19 (13):1213∼1224CrossRefMATHGoogle Scholar
  10. Zhang Xiaolu, Han Liqun. Application of Computer Vision Technology to Fiber Identification [J]. Journal of Beijing Technology and Business University, 2005, 23 (2):43–45Google Scholar
  11. Zhu Zhigang, Shi Dingji, et al. Digital Image Processing[M]. Publishing House of Electronics Industry, 2003Google Scholar

Copyright information

© Springer Science+Business Media, LLC 2009

Authors and Affiliations

  • Wenxiu Zheng
    • 1
  • Jinxing Wang
    • 1
  • Shuangxi Liu
    • 1
  • Xinhua Wei
    • 1
  1. 1.Shandong Agricultural UniversityShandongChina

Personalised recommendations