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Medical Image Processing Advanced Fuzzy Set Theoretic Techniques

Langue : Anglais

Auteur :

Couverture de l’ouvrage Medical Image Processing

Medical image analysis using advanced fuzzy set theoretic techniques is an exciting and dynamic branch of image processing. Since the introduction of fuzzy set theory, there has been an explosion of interest in advanced fuzzy set theories?such as intuitionistic fuzzy and Type II fuzzy set?that represent uncertainty in a better way.

Medical Image Processing: Advanced Fuzzy Set Theoretic Techniques deals with the application of intuitionistic fuzzy and Type II fuzzy set theories for medical image analysis. Designed for graduate and doctorate students, this higher-level text:



  • Provides a brief introduction to advanced fuzzy set theory, fuzzy/intuitionistic fuzzy aggregation operators, and distance/similarity measures


  • Covers medical image enhancement using advanced fuzzy sets, including MATLAB®-based examples to increase contrast of the images


  • Describes intuitionistic fuzzy and Type II fuzzy thresholding techniques that separate different regions/leukocyte types/abnormal lesions


  • Demonstrates the clustering of unwanted lesions/regions even in the presence of noise by applying intuitionistic fuzzy clustering


  • Highlights the edges of poorly illuminated images and uses intuitionistic fuzzy edge detection to find the edges of different regions


  • Defines fuzzy mathematical morphology and explores its application using the Lukasiewicz operator, t-norms, and t-conorms

Medical Image Processing: Advanced Fuzzy Set Theoretic Techniques is useful not only for students, but also for teachers, engineers, scientists, and those interested in the field of medical image analysis. A basic knowledge of fuzzy set is required, along with a solid understanding of mathematics and image processing.

Intuitionistic Fuzzy Set and Type II Fuzzy Set. Medical Image Processing. Fuzzy and Intuitionistic Fuzzy Operators with Application in Decision-Making. Similarity, Distance Measures, and Entropy. Image Enhancement. Thresholding of Medical Images. Clustering of Medical Images. Edge Detection. Fuzzy Mathematical Morphology.

Graduate and doctorate students, as well as teachers, engineers, scientists, and those interested in the field of medical image analysis.

Tamalika Chaira is a research scientist in the Department of Biotechnology, Government of India, and the Indian Institute of Technology Delhi, New Delhi. Previously, she was a research associate at the National Research Council (CNR), Pisa, Italy. She holds a bachelor’s degree from Bihar Institute of Technology, Sindri, Jharkhand, India; a master’s degree from Bengal Engineering and Science University, Shibpur, Howrah, India; and a Ph.D from the Indian Institute of Technology, Kharagpur, West Bengal. She is an author of the book Fuzzy Image Processing and Applications with MATLAB, as well as numerous papers. She also received the prestigious National Award (Innovative Young Biotechnologist Award, 2010) from the Government of India.

Date de parution :

15.6x23.4 cm

Disponible chez l'éditeur (délai d'approvisionnement : 14 jours).

56,31 €

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Date de parution :

15.6x23.4 cm

Disponible chez l'éditeur (délai d'approvisionnement : 15 jours).

184,47 €

Ajouter au panier

Mots-clés :

If; IFS; Intuitionistic fuzzy set; Membership Function; Boundary detection; Fuzzy Set; Type II fuzzy set; Non-membership Degree; Fuzzy complement; Fuzzy Methods; fuzzy generator; Non-membership Function; fuzzy relation; Membership Degree; IFR; IVIFS; Image contrast enhancement; Hesitation Degree; Morphology; Nonmembership Degree; Image registration; Intuitionistic Fuzzy Values; Image retrieval; Grey Level; Image clustering; Intuitionistic Fuzzy Set Theory; edge detection; Membership Values; Fuzzy operators; Medical Image Processing; T norm; T co norm; CIE XYZ; Fuzzy aggregation operator; Threshold Grey Level; Weighted averaging operator; fuzzy image enhancement; OWA Operator; Enhancement method by Chaira (method V); Fuzzy Set Theory; Ordered weighted averaging operator; Fuzzy Divergence; Fuzzy Histogram Hyperbolization; Edge Detection Techniques; IF-THEN rules; Fuzzy Morphology; Hesitancy histogram equalization (method III); Contrast enhancement by Chaira (method VI); Hamacher T conorm (method II); Lukasiewics operator; Fuzzy Sobel edge detector; Color clustering; Kernel Clustering methods; IFCM; Segmenting leukocyte images; MATLAB; Thresholding using Type II fuzzy set theory; Intuitionistic fuzzy window based thresholding; Global thresholding; Intuitionistic fuzzy divergence based method; Intuitionistic fuzzy entropy based method; Intuitionistic fuzzy threshold detection methods; Threshold detection methods; Fuzzy clustering method; Iterative thresholding; Optimal thresholding; Locally adaptive thresholding; Fuzzy geometry method; Fuzzy Divergence method; Fuzzy thresholding methods; Image segmentation; Type II fuzzy set theory; Intuitionistic fuzzy aggregation operator; Fuzzy aggregation; Intuitionistic fuzzy medical image enhancement; Type II fuzzy medical image enhancement; Fuzzy mathematical morphology; Type II fuzzy medical image segmentation; Intuitionistic fuzzy medical image segmentation