Litcius/Paper detail

CGMVQA: A New Classification and Generative Model for Medical Visual Question Answering

Fuji Ren, Yangyang Zhou

2020IEEE Access116 citationsDOIOpen Access PDF

Abstract

Medical images are playing an important role in the medical domain. A mature medical visual question answering system can aid diagnosis, but there is no satisfactory method to solve this comprehensive problem so far. Considering that there are many different types of questions, we propose a model called CGMVQA, including classification and answer generation capabilities to turn this complex problem into multiple simple problems in this paper. We adopt data augmentation on images and tokenization on texts. We use pre-trained ResNet152 to extract image features and add three kinds of embeddings together to deal with texts. We reduce the parameters of the multi-head self-attention transformer to cut the computational cost down. We adjust the masking and output layers to change the functions of the model. This model establishes new state-of-the-art results: 0.640 of classification accuracy, 0.659 of word matching and 0.678 of semantic similarity in ImageCLEF 2019 VQA-Med data set. It suggests that the CGMVQA is effective in medical visual question answering and can better assist doctors in clinical analysis and diagnosis.

Topics & Concepts

Computer scienceQuestion answeringLexical analysisArtificial intelligenceTransformerMachine learningDomain (mathematical analysis)Generative grammarSet (abstract data type)Natural language processingInformation retrievalPhysicsVoltageProgramming languageMathematical analysisQuantum mechanicsMathematicsMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot LearningAdvanced Image and Video Retrieval Techniques
CGMVQA: A New Classification and Generative Model for Medical Visual Question Answering | Litcius