Colour image segmentation of malaria parasites in thin blood smears using C-Y colour model and K-Means clustering
Date
2012-06-18Author
A.S., Abdul Nasir
Mohd Yusoff, Mashor, Prof. Dr.
Zeehaida, Mohamed, Dr.
Metadata
Show full item recordAbstract
Malaria is a life threatening disease that is responsible for nearly one million deaths each
year. With the large number of cases diagnosed over the year, rapid detection and accurate
diagnosis which facilitates prompt treatment is an essential requirement to control malaria. Due to
the requirement for rapid detection of malaria, the current study has proposed the colour image
segmentation of malaria parasites that has been applied on malaria images of P. vivax species. Here,
the proposed method provides a basic step for detection of the presence of malaria parasites in thin
blood smears. In order to obtain the segmented parasite, the malaria image will first be enhanced
using global contrast stretching. Then, an unsupervised segmentation technique namely k-means
clustering algorithm is used to segment the parasite from its complicated blood cells background.
Here, the five colour components of C-Y colour model which are R-Y, B-Y, luminance, hue and
saturation components are analyzed to identify the colour component that perform significant
segmentation performance. Finally, median filter and seeded region growing area extraction
algorithms have been applied in order to smooth the image and remove any unwanted regions from
the image, respectively. The proposed segmentation method has been analyzed using 50 malaria
images of gametocyte stage. Overall, the results indicate that k-means clustering using saturation
component of C-Y colour model has produced the best segmentation performance with
segmentation accuracy of 99.19%.
Collections
- Conference Papers [2600]
- Mohd Yusoff Mashor, Prof. Dr. [85]