A comparative analysis of the different CNN-LSTM model caption generation of medical images

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Abstract

The intent of this paper is to make the process of interpreting and understanding information within ultrasound pictures simpler and quicker by addressing the lack of techniques for automatically deciphering medical images. In order to do so, we propose a method of ultrasound image caption generation using AI that highlights the potential Machine Translation has in translating medical images to textual notations. The model needs to be trained on an ultrasound image dataset of the abdominal region including the uterus, myometrium, endometrium and cervix, a field of the medical sector that remains inadequately addressed. Two pre-trained CNN models, namely, VGG16 and Inception v3 have been used to extract features from the ultrasound images. Subsequently, the encoder-decoder model takes in two types of inputs, one for each of its layers. The two kinds of inputs are the text sequence and the image features. Both Vanilla LSTM and Bi-directional LSTM have been used to build the language generation model. The embedding layer along with the LSTM layer will process the text input. At last, the output from the two layers stated above will be merged.

Description

Cataloged from PDF version of thesis.
Includes bibliographical references (pages 36-37).
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2023.

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Thesis