The 8th International Conference on INFOrmatics and Systems (INFOS2012)- 14-16 May Bio-inspired Optimization Algorithms and Their Applications Track
Abstract
This study presents a proposed hybrid
intelligent machine learning technique for
Computer-Aided detection system for automatic detection
of brain tumor through magnetic resonance images. The
technique is based on the following computational
methods; the feedback pulse-coupled neural network for
image segmentation, the discrete wavelet transform for
features extraction, the principal component analysis for
reducing the dimensionality of the wavelet coefficients, and
the feed forward backpropagation neural network to
classify inputs into normal or abnormal. The experiments
were carried out on 101 images consisting of 14 normal
and 87 abnormal (malignant and benign tumors) from a real
human brain MRI dataset. The classification accuracy on
both training and test images is 99 % which was
significantly good. Moreover, The proposed technique
demonstrates its effectiveness compared with the other
machine learning recently published techniques