Deep Learning Approaches for Stroke Detection Using CNN and Transfer Learning Techniques
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Date
2023-10
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Abstract
to enhance the diagnosis of stroke disease through medical image classification.
Leveraging the power of neural networks, we conducted a comparative study
involving popular transfer learning techniques such as VGG16, VGG19, and
ResNet-50. While these complex architectures demonstrated their potential, we
also recognized the pitfalls of deep models, leading us to introduce a simpler
Convolutional Neural Network (CNN) model. Through rigorous evaluation, our
proposed CNN model achieved an exceptional accuracy of 99.60%, underscoring
the efficacy of a streamlined approach. Our findings emphasize the balance
between sophisticated methodologies and pragmatic solutions, showcasing how AI
can significantly impact medical diagnoses. As a practical application, we developed
an intuitive application that enables users to classify medical images, bridging
the gap between AI advancements and real-world medical practices. This project
contributes to the advancement of AI in healthcare, showcasing the potential for
accurate and efficient stroke disease diagnosis.
Description
memoier master infoematique
Keywords
Convolutional Neural Network, Stroke Diagnosis, Medical Image Classification, Artificial Intelligence