1) The document reviews various classification algorithms that have been used to classify brain MRI images as normal or abnormal. It discusses techniques like decision trees, neural networks, fuzzy logic, and clustering that have been applied.
2) It provides examples of several studies that first performed preprocessing tasks like feature extraction on MRI images before applying classification algorithms like naive Bayes, decision trees, and probabilistic neural networks to classify images with accuracies ranging from 88% to 100%.
3) Boosting and ensemble techniques like combining multiple weak learners into a strong learner are mentioned as ways to improve classification accuracy and response times. The document concludes by surveying different algorithms and their performance on classifying brain tumor MRI images.
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Review of Classification algorithms for Brain MRI images