A fast and robust segmentation of magnetic resonance brain images using a combination of the pyramidal approach and level set method |
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Authors: | Fatima Zohra Belgrana Nacéra Benamrane |
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Affiliation: | 1. Département d'Informatique, Faculté des Mathématiques et d'Informatique, Université des Sciences et de la Technologie d'Oran Mohamed Boudiaf, USTO‐MB, BP 1505, EL Mnaouer, 31000 Oran, Algérie;2. Department of Mathematics and Informatics, University of Ain Témouchent “Belhadj BOUCHA?B,”, Sidi bel abbess road N101, Ain Témouchent, 46000 AlgeriaCorrespondence to: Fatima Zohra Belgrana;3. e‐mail:;4. Department of Mathematics and Informatics, University of Ain Témouchent “Belhadj BOUCHA?B,”, Sidi bel abbess road N101, Ain Témouchent, 46000 Algeria |
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Abstract: | We propose in this article an approach to optimize the processing time and to improve the quality of brain magnetic resonance images segmentation. Level set method (LSM) was adopted with a periodic reinitialization process to prevent the LS function from being too steep or too flat near the interface. Although it is used to maintain the stability of the interface evolution and gives interesting results, it requires a longer processing time. To overcome this disadvantage and reduce the processing time, we propose a hybridization with a regular Gaussian pyramid, which reduces the resolution of the initial image and prevents the possibility of local minima. To compare the different segmentation algorithms, we used six types of quality measurements: specificity, sensitivity, Dice similarity, the Jaccard index, and the correctly and incorrectly marked pixels. A comparison between the results obtained by LSM, LSM with reinitialization, the approach of Barman et al., An International Journal 1 (2011), particle swarm optimization based on the Chan and Vese model (Mandal et al., Engineering Applications of Artificial Intelligence 35 (2014), 199‐214) and by our hybrid approach reveals a clear efficiency of our hybridization strategy. The processing time was significantly reduced, and the quality of segmentation was improved. © 2016 Wiley Periodicals, Inc. Int J Imaging Syst Technol, 26, 243–253, 2016 |
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Keywords: | segmentation brain MRI level set method Gaussian pyramid |
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