Dual u-net with resnet encoder for segmentation of medical images

SQSyed, Qamrun NisaIAIsmail, Amelia Ritahani

University of Jordan · Princess Sumaya University for Technology

Abstract

Segmentation of medical images has been the most demanding and growing area currently for analysis of medical images. Segmentation of polyp images is a huge challenge because of the variability of color depth and morphology in polyps throughout colonoscopy imaging. For segmentation, in this work, we have used a dataset of images of the gastrointestinal polyp. The algorithms used in this paper for segmentation of gastrointestinal polyp images depend on profound deep convolutional neural network architectures: FCN, Dual U-net with Resnet Encoder, U-net, and Unet_Resnet. To improve the performance, data augmentation is performed on the dataset. The efficiency of the algorithms is measured by using metrics such as…

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1,149
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FWCI
187.50
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100%
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Authors

2
  • SQ
    Syed, Qamrun NisaCorresponding

    University of Jordan, Princess Sumaya University for Technology

  • IA
    Ismail, Amelia Ritahani

    University of Jordan, Princess Sumaya University for Technology

Topics & keywords

Keywords
  • Computer science
  • Perception
  • State (computer science)
  • Value (mathematics)
  • Humanity
  • Replicate
  • Existentialism
  • Mechanism (biology)
UN Sustainable Development Goals
  • Industry, innovation and infrastructure
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