A Survey on Retinal Area Detector Using SLO Images

Authors

  • Gopi G Royal College of Engineering and Technology, Thrissur, Kerala
  • Kavitha MR Royal College of Engineering and Technology, Thrissur, Kerala
  • Faisal KK Royal College of Engineering and Technology, Thrissur, Kerala

Keywords:

Scanning Laser Ophthalmoscope, retinal image analysis, feature selection, retinal artefacts extraction

Abstract

Scanning Laser ophthalmoscopes (SLOs) are going to be used for early detection of retinal diseases. it's a method of examination of the attention. The advantage of exploitation SLO is its wide field of scan, which can image associate outsized an area of the membrane for higher identification of the retinal diseases. On the opposite aspect, throughout the imaging methodology, artefacts like eyelashes and eyelids are also imaged in conjunction with the retinal space. This brings an enormous challenge on the thanks to exclude these artefacts. In planned novel approach to automatically extract out true retinal house from associate SLO image based mostly on image method and machine learning approaches. the straightforward Linear unvaried cluster (SLIC) is that the rule utilised in super-pixel calculation. To decrease the unpredictability of image preparing errands and supply associate
advantageous primitive image vogue. to scale back the quality of image method tasks and provide a convenient
primitive image pattern, conjointly to classified pixels into utterly totally different regions primarily based on the regional size and
compactness, referred to as super-pixels. The framework then calculates image based mostly choices reflective textural information and classifies between retinal house and artefacts. The survey presents different methods that are used to detect the artefacts.

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Published

2025-11-11

How to Cite

[1]
G. Gopi, M. Kavitha, and K. Faisal, “A Survey on Retinal Area Detector Using SLO Images”, Int. J. Comp. Sci. Eng., vol. 4, no. 12, pp. 92–98, Nov. 2025.