Abnormal Colon Polyp Image Synthesis Using Conditional Adversarial Networks for Improved Detection Performance
Younghak Shin, Hemin Ali Qadir, Ilangko Balasingham

TL;DR
This paper introduces a conditional adversarial network framework that generates realistic synthetic polyp images from normal colonoscopy images, significantly aiding in training data augmentation for improved polyp detection.
Contribution
It proposes a novel edge filtering-based conditioning method and a network architecture with dilated convolutions to produce high-quality synthetic polyps, enhancing detection performance.
Findings
Synthetic images are qualitatively realistic.
Generated images improve polyp detection accuracy.
Framework enables data augmentation from normal images.
Abstract
One of the major obstacles in automatic polyp detection during colonoscopy is the lack of labeled polyp training images. In this paper, we propose a framework of conditional adversarial networks to increase the number of training samples by generating synthetic polyp images. Using a normal binary form of polyp mask which represents only the polyp position as an input conditioned image, realistic polyp image generation is a difficult task in a generative adversarial networks approach. We propose an edge filtering-based combined input conditioned image to train our proposed networks. This enables realistic polyp image generations while maintaining the original structures of the colonoscopy image frames. More importantly, our proposed framework generates synthetic polyp images from normal colonoscopy images which have the advantage of being relatively easy to obtain. The network…
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Taxonomy
MethodsConvolution
