An Improved Image Restoration and Edge Detection Technique
DOI:
https://doi.org/10.18034/ei.v4i1.184Keywords:
Clustering, K-means algorithm, Restoration, Segmentation, Edge detection, Canny edge detection algorithm, ThresholdAbstract
Clustering and edge based segmentation are two basic image segmentation technique. This paper involves image clustering based restoration technique for finding out the set of consequential groups and restoring the original image from a noisy image. Previously, the feature of image cluster computing and restoration method is researched separately but now we combined the cluster and restoration method together. The k means clustering algorithm is applied on similar objects to create a cluster that separate noisy pixels and finally we use Gaussian filter to restore the noise corrupted image which enhanced the image quality. The simulation results show that the techniques are able to produce better output in terms of contrast and resolution. In case of edge based segmentation, canny edge detection algorithm is the optimal one because of its low error rate, good localization, only one response to a single edge etc. In this work, we have showed that applying double threshold in canny edge detection algorithm provides reasonably better output.
Downloads
References
Fatma, M. and Sharma, J. (2014).”Leukemia Image Segmentation using K-Means Clustering and HSI Color Image Segmentation”. International Journal of Computer Applications. vol. 94, no. 12, pp. 6-9.
Kumar, R. and Arthanariee, A., M. (2013). “A Comparative Study of Image Segmentation Using Edge-Based Approach”. International Journal of Mathematical, Computational, Physical, Electrical and Computer Engineering vol. 7, no. 3, pp. 510-514.
Maini, R. and Aggarwal, Dr. H. “Study and Comparison of Various Image Edge Detection Techniques”. International Journal of Image Processing (IJIP), International Journal of Image Processing (IJIP), vol. 3, Issue 1, pp.1-12.
Mishra, S., Sharma, M. T. (2014). “Image Restoration Technique for Fog Degraded Image”. International Journal of Computer Trends and Technology (IJCTT), vol. 18 no. 5, pp. 208-213.
Nirgude, R., Jain, S. (2014). “Color Image Segmentation with K means clustering and dynamic region margin”. Sai Om Journal of Science, Engineering & Technology. vol. 1, Issue 5, pp. 1-10.
Patel, P. M. and Shah, B. N. and V. Shah. (2013). “Image segmentation using K-mean clustering for finding tumor in medical application”. International Journal of Computer Trends and Technology (IJCTT). vol. 4, Issue 5, pp. 1239-1242.
Saxena, S. and Kumar, R. S. (2014). “A Novel Approach of Image Restoration Based on Segmentation and Fuzzy Clustering”. International Journal of Signal Processing, Image Processing and Pattern Recognition. vol.7, no. 4, pp.255-264.
Sharma, P., Suji, J. (2016). “A Review on Image Segmentation with its Clustering Techniques”. International Journal of Signal Processing, Image Processing and Pattern Recognition vol.9, no.5, pp.209-218.
Tayal, M. A. and Raghuwanshi. (2011). M. M. “Review on Various Clustering Methods for the Image Data”. Special Issue Journal of Emerging Trends in Computing and Information sciences, vol. 2, pp. 34-38.
--0--
Published
Issue
Section
License
Engineering International is licensed under a Creative Commons Attribution-Noncommercial 4.0 International License (CC-BY-NC). Articles can be read and shared for noncommercial purposes under the following conditions:
- BY: Attribution must be given to the original source (Attribution)
- NC: Works may not be used for commercial purposes (Noncommercial)



