Multi Head Attention Enhanced Inception v3 for Cardiomegaly Detection
Abishek Karthik, Pandiyaraju V

TL;DR
This paper presents a deep learning approach combining Inception v3 and multi-head attention mechanisms to automatically detect cardiomegaly from X-ray images, achieving high accuracy and clinical relevance.
Contribution
It introduces a novel multi-head attention enhanced Inception v3 model specifically designed for cardiomegaly detection in X-ray images, improving feature learning and diagnostic sensitivity.
Findings
Accuracy of 95.6% in detecting cardiomegaly
High precision and recall indicating reliable diagnosis
Model demonstrates strong clinical potential
Abstract
The healthcare industry has been revolutionized significantly by novel imaging technologies, not just in the diagnosis of cardiovascular diseases but also by the visualization of structural abnormalities like cardiomegaly. This article explains an integrated approach to the use of deep learning tools and attention mechanisms for automatic detection of cardiomegaly using X-ray images. The initiation of the project is grounded on a strong Data Collection phase and gathering the data of annotated X-ray images of various types. Then, while the Preprocessing module fine-tunes image quality, it is feasible to utilize the best out of the data quality in the proposed system. In our proposed system, the process is a CNN configuration leveraging the inception V3 model as one of the key blocks. Besides, we also employ a multilayer attention mechanism to enhance the strength. The most important…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Brain Tumor Detection and Classification · Advanced Technologies in Various Fields
