•   Tian Jipeng

  •   Suma P.

  •   T. C. Manjunath


In this paper, a brief introduction to AI, ML and the Eye w.r.t. Deep Learning for Glaucoma Detection and Hardware Implementation is being presented.  The result is the outcome of the Post-Graduate project work of the student that is going to be carried out in the second year of the course & this work is just the synopsis that is being framed for the carrying out of the detection of glaucoma disease.

Keywords: Glaucoma, Matlab, Simulation, Detection.


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How to Cite
Jipeng, T., P., S. and Manjunath, T. 2020. Use of Artificial Intelligence & Machine Learning with Deep Learning for Glaucoma Detection in Human Eyes & its Real Time Hardware Implementation. European Journal of Electrical Engineering and Computer Science. 4, 2 (Apr. 2020). DOI:https://doi.org/10.24018/ejece.2020.4.2.204.