A Survey on Biomedical Image Captioning
Kougia, Vasiliki, Pavlopoulos, John, Androutsopoulos, Ion
–arXiv.org Artificial Intelligence
Image captioning applied to biomedical images can assist and accelerate the diagnosis process followed by clinicians. This article is the first survey of biomedical image captioning, discussing datasets, evaluation measures, and state of the art methods. Additionally, we suggest two baselines, a weak and a stronger one; the latter outperforms all current state of the art systems on one of the datasets.
arXiv.org Artificial Intelligence
May-26-2019
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