%0 Journal Article %@ 18650929 %A Gajbhiye, G.O. %A Nandedkar, A.V. %A Faye, I. %D 2020 %F scholars:13914 %I Springer %J Communications in Computer and Information Science %K Behavioral research; Computer vision; Convolutional neural networks; Decoding; Signal encoding, Chest X-ray image; Course information; Medical professionals; Radiology reports; Sequential dependencies; Short term memory; State-of-the-art methods; Time-consuming tasks, Medical imaging %P 174-182 %R 10.1007/978-981-15-4015-8₁₅ %T Automatic report generation for chest X-Ray images: A multilevel multi-attention approach %U https://khub.utp.edu.my/scholars/13914/ %V 1147 C %X A comprehensive X-ray imaging report greatly assists the medical professional to investigate an indispensable condition and medication. The preparation of an extensive and diversified medical report by analysing the chest X-ray image is a time-consuming task and requires highly experienced professionals. This work targets the fundamental problem of generating a long and multifarious medical report for the chest X-ray image. It introduces a novel Multilevel Multi-Attention based encoder-decoder approach by combining Context Level Visual Attention and Textual Attention to generate a plausible medical report for different views of chest X-ray images. It exploited the proven ability of the Convolutional Neural Network to acquire course information of visual-spatial regions as an encoder. It leverages the strength of the Long Short-Term Memory network to learn long sequential dependencies and the ability of attention to focus on the prominent section as a decoder. The proposed method emphasizes on contextual coherence in intra and inter-sentence dependency within a report to improve the overall medical report generation quality. The effectiveness of the proposed model is evaluated on the publicly available IU chest X-ray dataset consisting of chest images along with multifarious radiology reports. The final performance of the proposed model is reported using the COCO-caption evaluation API. It shows a significant improvement in a medical report generation task compared to state-of-the-art methods. © Springer Nature Singapore Pte Ltd 2020. %Z cited By 7; Conference of 4th International Conference on Computer Vision and Image Processing, CVIP 2019 ; Conference Date: 27 September 2019 Through 29 September 2019; Conference Code:238879