Deep learning for polyp recognition in wireless capsule endoscopy images
Medical Physics2017Vol. 44(4), pp. 1379–1389
Citations Over TimeTop 1% of 2017 papers
Abstract
The comprehensive results have demonstrated that the proposed SSAEIM can provide descriptive characterization for WCE images and recognize polyps in a WCE video accurately. This method could be further utilized in the clinical trials to help physicians from the tedious image reading work.
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