Corpus ID: 221703005

A Mobile App for Wound Localization using Deep Learning

  title={A Mobile App for Wound Localization using Deep Learning},
  author={D. Anisuzzaman and Yash Patel and J. Niezgoda and S. Gopalakrishnan and Zeyun Yu},
  • D. Anisuzzaman, Yash Patel, +2 authors Zeyun Yu
  • Published 2020
  • Computer Science
  • ArXiv
  • We present an automated wound localizer from 2D wound and ulcer images by using deep neural network, as the first step towards building an automated and complete wound diagnostic system. The wound localizer has been developed by using YOLOv3 model, which is then turned into an iOS mobile application. The developed localizer can detect the wound and its surrounding tissues and isolate the localized wounded region from images, which would be very helpful for future processing such as wound… CONTINUE READING

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