Comparative Evaluation for Brain Tumor Detection Using Inception-V3 Architecture

Authors

  • V. Kavitha Research Scholar, Computer Science and Engineering, Vels Institute of Science Technology, and advanced studies
  • K. Ulagapriya Associate professor, Computer science and Engineering, Vels Institute of science technology and advanced studies

Keywords:

Deep Learning, Softmax, ReLU Activation, VGG-16

Abstract

Over the last decade, researchers have been focusing on magnetic resonance imaging (MRI) to detect brain tumors. However, existing methods that involve medical image feature extraction is not sufficient to solve this issue. To tackle this problem, a new model has been proposed, employing the Inception-v3 convolutional neural network. By extracting and categorising various features, this model can help identify s brain tumors earlier. The proposed model is built on Inception-v3 and utilizes loss functions and the Adam Optimizer to optimize its hyperparameters. It also employs a softmax classifier to classify the images into different classes. The results indicate that the Inception-v3 algorithm achieved an impressive training data accuracy of 99.02% and a validation data accuracy of 89%.

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Published

25.12.2023

How to Cite

Kavitha, V. ., & Ulagapriya, K. . (2023). Comparative Evaluation for Brain Tumor Detection Using Inception-V3 Architecture. International Journal of Intelligent Systems and Applications in Engineering, 12(1), 277–283. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/3892

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Research Article