Mobile Screening Framework of Anterior Segment Photographed Images

  • Authors

    • N Syahira M Zamani
    • Laily Azyan Ramlan
    • W Mimi Diyana W Zaki
    • Aini Hussain
    • Haliza Abdul Mutalib
    2018-10-02
    https://doi.org/10.14419/ijet.v7i4.11.20780
  • ASPI, computational time, mobile screening system, Otsu multi-thresholding approach, pterygium.
  • This work presents a qualitative measurement of anterior segment photographed images (ASPIs) to identify between normal eyes and eyes with pterygium and pinguecula through Otsu multi-thresholding approach without contrast enhancement. In addition, we also propose a mobile screening framework of ASPIs through smartphones. ASPIs were directly sent to the cloud storage once an ASPI was captured using a smartphone camera, and then each image was processed through a digital image processing approach in a processing platform. Three important steps, namely, pre-processing, image segmentation and qualitative assessment, are involved in the processing platform of the mobile screening framework. The ASPIs are pre-processed to minimise or eliminate any unwanted areas within the image. Then, these ASPIs are segmented through multi-thresholding Otsu approach with clustering number n = 3. Segmentation result shows that the accuracy of the proposed method is 87.5%, which is comparable with the previously established work that has applied three-step differencing (3SD) method. However, the proposed approach has better computational time which is six times faster than the 3SD method. These results demonstrate a remarkable effort to produce a simple but straightforward digital image processing approach to be implemented in cloud computing for future studies.

                                                                                          

     

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  • How to Cite

    Syahira M Zamani, N., Azyan Ramlan, L., Mimi Diyana W Zaki, W., Hussain, A., & Abdul Mutalib, H. (2018). Mobile Screening Framework of Anterior Segment Photographed Images. International Journal of Engineering & Technology, 7(4.11), 85-89. https://doi.org/10.14419/ijet.v7i4.11.20780