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YZ Sözlüğü

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terimler
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terimler

GAN-based Augmentation

Technique using generative adversarial networks to synthesize realistic new training samples from a limited dataset. GANs learn the underlying data distribution to generate plausible and diverse examples.

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Variational Autoencoders

Generative neural network architecture that learns a compressed latent representation of data before reconstructing or generating new samples. VAEs are particularly useful for creating controlled variations in feature space.

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Feature Space Augmentation

Augmentation technique that operates directly in feature space rather than in pixel space or raw data. This approach allows for creating semantically consistent variations while preserving structural relationships between classes.

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Adversarial Augmentation

Augmentation technique that uses adversarial perturbations to create robust samples that improve the model's resistance to attacks. This approach strengthens generalization by exposing the model to extreme but plausible variations.

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AutoAugment

Machine learning method that automatically optimizes data augmentation policies to maximize model performance on a given validation set. This approach discovers adaptive, domain-specific augmentation strategies.

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terimler

Cross-Domain Augmentation

Strategy that transfers and adapts augmentation techniques from one domain to another to enrich limited datasets. This approach leverages cross-domain knowledge to create relevant variations in data-scarce contexts.

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