Article Information  
Automatic Detection and Classification of Malarial Retinopathy- Associated Retinal Whitening in Digital Retinal Images

Keywords: Malarial Retinopathy, Retinal Whitening, Macular Whitening, Cerebral Malaria

Mehran University Research Journal of Engineering & Technology

Volume 36 ,  Issue 4

MUHAMMAD  USMAN AKRAM , ABU BAKAR NISAR ALVI   , SHOAB AHMED KHAN   ,

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