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Table of Contents
Intro
Contents
Role of Machine Learning in Detection and Classification of Leukemia: A Comparative Analysis
1 Introduction
2 Methodology
3 Literature Review
3.1 Diagnosis by Using SVM, KNN, K-Means, and Naive Bayes
3.2 Diagnosis by Using ANN and CNN Algorithms
3.3 Diagnosis by Using Random Forest and Decision Tree Algorithms
4 Results and Discussion
4.1 K-Means
4.2 Naive Bayes
4.3 Support Vector Means
4.4 Logistic Regression
4.5 XG-Boost
4.6 Accuracy Achieved in Algorithms
5 Conclusion
6 Declarations
References
A Review on Mode Collapse Reducing GANs with GAN's Algorithm and Theory
1 Introduction
2 Literature Survey
3 Conclusion
References
Medical Image Synthesis Using Generative Adversarial Networks
1 Introduction
1.1 Retinal Image Analysis
2 Related Work
3 Proposed Methodology
3.1 Generator Architecture
3.2 Discriminator Architecture
4 Results and Discussion
4.1 Experimental Setup
4.2 Dataset Description
4.3 Performance Metrics
4.4 Results
5 Conclusions
References
Chest X-Ray Data Augmentation with Generative Adversarial Networks for Pneumonia and COVID-19 Diagnosis
1 Introduction
1.1 Related Works
2 GAN Architecture
2.1 Generator Architecture
2.2 Discriminator Architecture
2.3 Classifier
2.4 Batch Size
2.5 Transforms of Training Samples
2.6 Hyperparameters
2.7 Evaluation Metrics
3 Materials and Methods
3.1 Dataset
4 Experimental Details and Results
4.1 Synthetic Images Generated from GAN
5 Discussion and Conclusion
References
State of the Art Framework-Based Detection of GAN-Generated Face Images
1 Introduction
2 Related Work
3 Methodology
3.1 Dataset
3.2 Models Used
3.3 Hardware and Software Setup
3.4 Algorithms
4 Results and Discussions
5 Conclusion
References
Data Augmentation in Classifying Chest Radiograph Images (CXR) Using DCGAN-CNN
1 Introduction
1.1 Data Augmentation
1.2 Augmented Versus Synthetic Data
1.2.1 Augmented Data
1.2.2 Synthetic Data
1.3 Why Data Augmentation Is Important Now?
1.3.1 Improves the Performance of ML Models
1.3.2 Reduces Operation Costs Related to Data Collection
1.4 How Does Data Augmentation Work?
1.5 Advanced Techniques for Data Augmentation
1.6 Data Augmentation in Health Care
1.7 Benefits of Data Augmentation
1.8 Challenges of Data Augmentation
2 GANs
2.1 Introduction
2.2 Why GANs
2.3 Components of GANs
2.4 GAN Loss Function
2.5 Training and Prediction of GANs
2.6 Challenges Faced by GANs
2.7 Different Types of GANs
2.8 Steps to Implement Basic GAN
3 Augmentation of Chest Radiograph Images for Covid-19 Classification
3.1 Methodology
3.1.1 DCGAN
3.1.2 DCGAN Architecture
3.1.3 CNN
3.2 DCGAN-CNN Model's Architecture
4 Conclusion
References
Contents
Role of Machine Learning in Detection and Classification of Leukemia: A Comparative Analysis
1 Introduction
2 Methodology
3 Literature Review
3.1 Diagnosis by Using SVM, KNN, K-Means, and Naive Bayes
3.2 Diagnosis by Using ANN and CNN Algorithms
3.3 Diagnosis by Using Random Forest and Decision Tree Algorithms
4 Results and Discussion
4.1 K-Means
4.2 Naive Bayes
4.3 Support Vector Means
4.4 Logistic Regression
4.5 XG-Boost
4.6 Accuracy Achieved in Algorithms
5 Conclusion
6 Declarations
References
A Review on Mode Collapse Reducing GANs with GAN's Algorithm and Theory
1 Introduction
2 Literature Survey
3 Conclusion
References
Medical Image Synthesis Using Generative Adversarial Networks
1 Introduction
1.1 Retinal Image Analysis
2 Related Work
3 Proposed Methodology
3.1 Generator Architecture
3.2 Discriminator Architecture
4 Results and Discussion
4.1 Experimental Setup
4.2 Dataset Description
4.3 Performance Metrics
4.4 Results
5 Conclusions
References
Chest X-Ray Data Augmentation with Generative Adversarial Networks for Pneumonia and COVID-19 Diagnosis
1 Introduction
1.1 Related Works
2 GAN Architecture
2.1 Generator Architecture
2.2 Discriminator Architecture
2.3 Classifier
2.4 Batch Size
2.5 Transforms of Training Samples
2.6 Hyperparameters
2.7 Evaluation Metrics
3 Materials and Methods
3.1 Dataset
4 Experimental Details and Results
4.1 Synthetic Images Generated from GAN
5 Discussion and Conclusion
References
State of the Art Framework-Based Detection of GAN-Generated Face Images
1 Introduction
2 Related Work
3 Methodology
3.1 Dataset
3.2 Models Used
3.3 Hardware and Software Setup
3.4 Algorithms
4 Results and Discussions
5 Conclusion
References
Data Augmentation in Classifying Chest Radiograph Images (CXR) Using DCGAN-CNN
1 Introduction
1.1 Data Augmentation
1.2 Augmented Versus Synthetic Data
1.2.1 Augmented Data
1.2.2 Synthetic Data
1.3 Why Data Augmentation Is Important Now?
1.3.1 Improves the Performance of ML Models
1.3.2 Reduces Operation Costs Related to Data Collection
1.4 How Does Data Augmentation Work?
1.5 Advanced Techniques for Data Augmentation
1.6 Data Augmentation in Health Care
1.7 Benefits of Data Augmentation
1.8 Challenges of Data Augmentation
2 GANs
2.1 Introduction
2.2 Why GANs
2.3 Components of GANs
2.4 GAN Loss Function
2.5 Training and Prediction of GANs
2.6 Challenges Faced by GANs
2.7 Different Types of GANs
2.8 Steps to Implement Basic GAN
3 Augmentation of Chest Radiograph Images for Covid-19 Classification
3.1 Methodology
3.1.1 DCGAN
3.1.2 DCGAN Architecture
3.1.3 CNN
3.2 DCGAN-CNN Model's Architecture
4 Conclusion
References