A
Dynamic Particle Swarm Optimisation and Fuzzy Clustering Means Algorithm for
Segmentation of Multimodal Brain Magnetic Resonance Image Data
Kies Karima and
Benamrane Nacera
Department of Computer Science, Université des Sciences et de la Technologie d’Oran
“Mohamed Boudiaf”, Algeria
Abstract: Fuzzy Clustering
Means (FCM) algorithm is a widely used clustering method in image segmentation,
but it often falls into local minimum and is quite sensitive to initial values
which are random in most cases. In this work, we consider the extension to FCM
to multimodal data improved by a Dynamic Particle Swarm Optimization (DPSO) algorithm
which by construction incorporates local and global optimization capabilities. Image
segmentation of three-variate MRI brain data is achieved using FCM-3 and
DPSOFCM-3 where the three modalities T1-weighted, T2-weighted and Proton
Density (PD), are treated at once (the suffix -3 is added to distinguish our
three-variate method from mono-variate methods usually using T1-weighted modality).
FCM-3 and DPSOFCM-3 were evaluated on several Magnetic
Resonance (MR) brain images corrupted by different levels of noise and
intensity non-uniformity. By means of various performance criteria, our results
show that the proposed method substantially improves segmentation results. For
noisiest and most no-uniform images, the performance improved as much as 9%
with respect to other methods.
Keywords: Fuzzy c-mean, particle swarm optimization,
brain Magnetic Resonance Images segmentation.
Received December
24, 2019; accepted March 10, 2020