Classifying Red and Healthy Eyes using Deep Learning

Abstract

Eye is one of the most vital organs of human body. Despite being small in size, humans cannot see the life around them without it. Human eye is protected by a thin covering termed as conjunctiva which protects the eye from dust particles. It plays the role of lubricant in the eye which prevents any sort of friction in opening and closing of eye. Broadly there are two kinds of conjunctiva: bulbar and palpebral. The membrane covering the inner portion of eyelids is termed as palpebral conjunctiva and the one covering the outside portion of the eye is called as bulbar conjunctiva (white portion of eye).Due to the dilation of blood vessels the white portion of the eye also termed as sclera becomes red in color. This condition is also termed as hyperemia. The study of this development is vital in diagnosis of various pathologies. It could be result of some trauma, injury or other eye related diseases which needs to be identified for timely treatment. Enormous amount of studies have been done to study the structure and functionality of human eye. This paper highlights the work done so far for measuring the level of redness in the eye using various methodologies ranging from statistical ways to machine learning techniques and proposes a methodology using Matlab and Convolutional neural network to automate this evaluation process.

Authors and Affiliations

Sherry Verma, Latika Singh, Monica Chaudhry

Keywords

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  • EP ID EP611482
  • DOI 10.14569/IJACSA.2019.0100772
  • Views 85
  • Downloads 0

How To Cite

Sherry Verma, Latika Singh, Monica Chaudhry (2019). Classifying Red and Healthy Eyes using Deep Learning. International Journal of Advanced Computer Science & Applications, 10(7), 525-531. https://europub.co.uk/articles/-A-611482