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ACapMed: Automatic Captioning for Medical Imaging

Djamila Romaissa Beddiar, Mourad Oussalah, Tapio Seppänen, Rachid Jennane

2022Applied Sciences16 citationsDOIOpen Access PDF

Abstract

Medical image captioning is a very challenging task that has been rarely addressed in the literature on natural image captioning. Some existing image captioning techniques exploit objects present in the image next to the visual features while generating descriptions. However, this is not possible for medical image captioning when one requires following clinician-like explanations in image content descriptions. Inspired by the preceding, this paper proposes using medical concepts associated with images, in accordance with their visual features, to generate new captions. Our end-to-end trainable network is composed of a semantic feature encoder based on a multi-label classifier to identify medical concepts related to images, a visual feature encoder, and an LSTM model for text generation. Beam search is employed to ensure the best selection of the next word for a given sequence of words based on the merged features of the medical image. We evaluated our proposal on the ImageCLEF medical captioning dataset, and the results demonstrate the effectiveness and efficiency of the developed approach.

Topics & Concepts

Closed captioningComputer scienceArtificial intelligenceEncoderImage (mathematics)Feature (linguistics)Classifier (UML)ExploitWord (group theory)Task (project management)Natural language processingComputer visionInformation retrievalLinguisticsEconomicsPhilosophyComputer securityManagementOperating systemMultimodal Machine Learning ApplicationsAdvanced Image and Video Retrieval TechniquesVideo Analysis and Summarization