Intelligent Fractal-Based Image Analysis: Applications in Pattern Recognition and Machine Vision: Cognitive Data Science in Sustainable Computing
Editat de Soumya Ranjan Nayak, Janmenjoy Nayak, Khan Muhammad, Yeliz Karacaen Limba Engleză Paperback – 6 iun 2024
Fractals are infinite, complex patterns used in modeling physical and dynamic systems. Fractal theory research has increased across different fields of applications including engineering science, health science, and social science. Recent literature shows the vital role fractals play in digital image analysis, specifically in biomedical image processing. Fractal graphics is an interdisciplinary field that deals with how computers can be used to gain high-level understanding from digital images. Integrating artificial intelligence with fractal characteristics has resulted in new interdisciplinary research in the fields of pattern recognition and image processing analysis.
- Investigates advanced fractal theories spanning neural networks, fuzzy logic, machine learning, deep learning, and hybrid intelligent systems in solving pattern recognition problems
- Explores the application of fractal theories to a wide range of medical image processing modalities
- Presents case studies that illustrate the application and integration of fractal theories into intelligent computing in the resolution of important pattern recognition and machine vision problems
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Specificații
ISBN-13: 9780443184680
ISBN-10: 0443184682
Pagini: 318
Dimensiuni: 152 x 229 x 19 mm
Greutate: 0.43 kg
Editura: ELSEVIER SCIENCE
Seria Cognitive Data Science in Sustainable Computing
ISBN-10: 0443184682
Pagini: 318
Dimensiuni: 152 x 229 x 19 mm
Greutate: 0.43 kg
Editura: ELSEVIER SCIENCE
Seria Cognitive Data Science in Sustainable Computing
Cuprins
Part 1: Intelligent Fractal-Based Image Analysis
Introduction to Intelligent Fractal-Based Image Analysis – Editors
1.1 Insights into Intelligent Fractal-Based Image Analysis with Pattern Recognition
1.2 Analysis of Mandelbrot Set Fractal Images Using Machine Learning Based Approach
1.3 Chaos-based Image Encryption1.4 Fractal Feature-based Image Classification
Part 2: Recognition Model Using Fractal Features
2.1 The study of Source Image and its Futuristic Quantum Applications: An insight from Fractal Analysis
2.2 Wavelet Multifractal Characterization of Anisotropic Oscillating Singularities and Application in Nanomaterials
2.3 GID-Net: Generic Image Denoising using Convolutional Auto-encoders
2.4 Geometrical Description of Image Analysis Using Fractal Theory
Part 3: Fractals in Disease Identification and Control
3.1 Fractal Theory and the Explainable Artificial Intelligence of Cancer Medical Imaging
3.2 Computational Complexity of Multifractal Models-based MRI Image Processing for Subgroups of Multiple Sclerosis Patients’ Diagnosis and Course in Precision Medicine
3.3 AI-Stochastic Fractal Analysis of the Alzheimer disease (AD) Medical Images
3.4 Preliminary Study of Retinal Lesions Classification on Rational Fundus Images for the Diagnosis of Retinal Diseases
Introduction to Intelligent Fractal-Based Image Analysis – Editors
1.1 Insights into Intelligent Fractal-Based Image Analysis with Pattern Recognition
1.2 Analysis of Mandelbrot Set Fractal Images Using Machine Learning Based Approach
1.3 Chaos-based Image Encryption1.4 Fractal Feature-based Image Classification
Part 2: Recognition Model Using Fractal Features
2.1 The study of Source Image and its Futuristic Quantum Applications: An insight from Fractal Analysis
2.2 Wavelet Multifractal Characterization of Anisotropic Oscillating Singularities and Application in Nanomaterials
2.3 GID-Net: Generic Image Denoising using Convolutional Auto-encoders
2.4 Geometrical Description of Image Analysis Using Fractal Theory
Part 3: Fractals in Disease Identification and Control
3.1 Fractal Theory and the Explainable Artificial Intelligence of Cancer Medical Imaging
3.2 Computational Complexity of Multifractal Models-based MRI Image Processing for Subgroups of Multiple Sclerosis Patients’ Diagnosis and Course in Precision Medicine
3.3 AI-Stochastic Fractal Analysis of the Alzheimer disease (AD) Medical Images
3.4 Preliminary Study of Retinal Lesions Classification on Rational Fundus Images for the Diagnosis of Retinal Diseases