1. Three-class brain tumor classification using deep dense inception residual network.
- Author
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Kokkalla, Srinath, Kakarla, Jagadeesh, Venkateswarlu, Isunuri B., and Singh, Munesh
- Subjects
- *
TUMOR classification , *BRAIN tumors , *KEY performance indicators (Management) , *BRAIN imaging , *RETINAL blood vessels - Abstract
Three-class brain tumor classification becomes a contemporary research task due to the distinct characteristics of tumors. The existing proposals employ deep neural networks for the three-class classification. However, achieving high accuracy is still an endless challenge in brain image classification. We have proposed a deep dense inception residual network for three-class brain tumor classification. We have customized the output layer of Inception ResNet v2 with a deep dense network and a softmax layer. The deep dense network has improved the classification accuracy of the proposed model. The proposed model has been evaluated using key performance metrics on a publicly available brain tumor image dataset having 3064 images. Our proposed model outperforms the existing model with a mean accuracy of 99.69%. Further, similar performance has been obtained on noisy data. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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