Automatic Detection of Tumor in Wireless Capsule Endoscopy Images Using Energy Based Textural Features and SVM Based RFE Approach

@inproceedings{Ashokkumar2014AutomaticDO,
  title={Automatic Detection of Tumor in Wireless Capsule Endoscopy Images Using Energy Based Textural Features and SVM Based RFE Approach},
  author={Balasubramaniem Ashokkumar and S. P. Sivagnana Subramanian},
  year={2014}
}
This paper deals with processing of wireless capsule endoscopy (WCE) images from gastrointestinal tract, by extracting textural features and developing a suitable classifier to recognize as a normal or abnormal /tumor image. Images obtained from WCE are prone to noise. To reduce the noise, filtration technique is used. The quality of the filtered image is degraded, so to enhance the quality of the image, discrete wavelet transform (DWT) is used. The textural features (average, energy) are… CONTINUE READING
1 Citations
18 References
Similar Papers

Citations

Publications citing this paper.

References

Publications referenced by this paper.
Showing 1-10 of 18 references

Emre celebi " Polyp detection in WCE videos based on image segmentation and geometric feature

  • Sae Hwang
  • IEEE ICASSP
  • 2010

celebi " Polyp detection in WCE videos based on image segmentation and geometric feature

  • Sae Hwang, M. Emre
  • IEEE ICASSP
  • 2010
1 Excerpt

Argyros and Dimitris P . Tsakiris “ Lumen detection for capsule endoscopy ”

  • Xenophon Zabulis, A Antonis
  • IEEE / RSJ International Conference on…
  • 2008

Similar Papers

Loading similar papers…