Corpus ID: 51737836

AVRDB : Annotated Dataset for Vessel Segmentation and Calculation of Arteriovenous Ratio

@inproceedings{Akbar2017AVRDBA,
  title={AVRDB : Annotated Dataset for Vessel Segmentation and Calculation of Arteriovenous Ratio},
  author={Shahzad Akbar and Taimur Hassan and Muhammad Usman Akram and Ubaidullah Yasin and Imran Basit},
  year={2017}
}
Shahzad Akbar1, Taimur Hassan2, M. Usman Akram3, Ubaid Ullah Yasin4 and Imran Basit5 1Department of Computer Science, 1COMSATS Institute of Information Technology, Wah Cantonment, Pakistan 2,3Department of Computer Engineering 2,3National University of Sciences and Technology (NUST), Islamabad, Pakistan 4,5Armed Forces Institute of Ophthalmology, Rawalpindi, Pakistan shahzadakbarbzu@gmail.com1, engr.taimoorhassan@gmail.com2, usmakram@gmail.com3, talhaubaid@gmail.com4, drimranbasit@gmail.com5… Expand

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