Among different imaging techniques MRI, MRSI and CT scans are some of the widely use techniques to visualize brain structures to point out brain anomalies especially brain tumor. Identification of brain tumor accurately in clinical practices has always been a hard decision for neurologist as multiple exceptions might present in images which may lead dubious suggestion from neurologist. In our proposed model we are aiming towards brain tumor detection and 3d visualization of tumor more accurately in effcient way. Our proposed model composed of three stages such as classification of image using CNN whether any tumor exists of not; segmentation using multi-thresholding to extract the detected tumor; and 3d visualization using polynomial interpolation. the proposed model enables enhancing the accuracy of tumor detection as compare to existing models as well as segmenting and 3d visualizing the detected tumor. we get 85% accuracy on our model comparing with others which is slightly more efficient in terms of classification and detection.
Detection and 3D Visualization of Brain Tumor using Deep Learning and Polynomial Interpolation
Md. Akram Hossan Tuhin,Tarunya Pramanick,Humayoun Kabir Emon,Wasiur Rahman,Md. Muzahidul Islam Rahi,Md. Ashraful Alam
Published 2020 in 2020 IEEE Asia-Pacific Conference on Computer Science and Data Engineering (CSDE)
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- Publication year
2020
- Venue
2020 IEEE Asia-Pacific Conference on Computer Science and Data Engineering (CSDE)
- Publication date
2020-12-16
- Fields of study
Medicine, Computer Science
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