Conditional Gan
Class label-based conditional GAN for generating handwritten digit images
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Release Time : 3/2/2022
Model Overview
This model is a Conditional Generative Adversarial Network (Conditional GAN) that can generate handwritten digit images of specific classes based on input labels. Compared to standard GANs, it achieves controllable content generation.
Model Features
Conditional Generation
Can generate handwritten images of specific digits based on input class labels
Data Augmentation Capability
Can be used to generate samples for rare classes to address data imbalance issues
Representation Learning
Feature representations learned by the generator can be used for other downstream tasks
Model Capabilities
Handwritten Digit Generation
Conditional Image Generation
Data Augmentation
Use Cases
Data Augmentation
Class Balancing
Generating more training samples for rare classes
Improves classification model performance on imbalanced datasets
Creative Design
Digit Style Generation
Generating handwritten digits in specific styles
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