2020
DOI: 10.25046/aj050593
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Brain Tumor Classification Using Deep Neural Network

Abstract: Brain tumors are a type of tumor with a high mortality rate. Since multifocal-looking tumors in the brain can resemble multicentric gliomas or gliomatosis, accurate detection of the tumor is required during the treatment process. The similarity of neurological and radiological findings also complicates the classification of these tumors. Fast and accurate classification is important for brain tumors. Computer aided diagnostic systems and deep neural network architectures can be used in the diagnosis of multice… Show more

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Cited by 9 publications
(1 citation statement)
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“…Moving on to the next layer, a flattening operation is employed to convert the feature maps into a vector form. During the classification phase, this flattened input vector is passed through the network to generate numerical outputs in each output neuron [47]. Essentially, this process transforms the feature representation into a single extended layer that originates from the convolutional layer.…”
Section: Feature Learnermentioning
confidence: 99%
“…Moving on to the next layer, a flattening operation is employed to convert the feature maps into a vector form. During the classification phase, this flattened input vector is passed through the network to generate numerical outputs in each output neuron [47]. Essentially, this process transforms the feature representation into a single extended layer that originates from the convolutional layer.…”
Section: Feature Learnermentioning
confidence: 99%