This book addresses the critical challenge of limited training data in
deep learning for computer vision by exploring and evaluating various
image augmentation techniques, with a particular emphasis on deep
learning-based methods. Chapter 1 establishes the core problem of data
scarcity, outlining its negative impacts on model performance, and
introduces traditional image augmentation techniques like geometric
transformations, color space manipulations, and other methods such as
noise injection. It highlights the limitations of these traditional
approaches, including limited variation, lack of control, and
inability to introduce new information, before introducing the
advantages of deep learning-based augmentation, such as superior
control, task adaptability, enhanced realism, and automation. Chapter
2 delves into GAN-based image augmentation, discussing how GANs
generate realistic synthetic images for various applications like
super-resolution and image-to-image translation, while also addressing
the challenges associated with GAN training and potential future
directions. Chapter 3 explores autoencoder-based image augmentation,
covering techniques like VAEs, DAEs, and AAEs, and highlighting
architectural considerations and challenges such as overfitting.
Chapter 4 showcases the diverse applications of deep learning-based
image augmentation and how it enhances various computer vision tasks
by improving generalization, robustness, and accuracy. Chapter 5
discusses strategies for evaluating and optimizing deep learning image
augmentation, including traditional metrics, image quality metrics,
and hyperparameter tuning techniques. Finally, Chapter 6 explores
cutting-edge advancements, covering AutoAugment, interpretable
augmentation, attention-based augmentation, counterfactual
augmentation, and human-in-the-loop augmentation, emphasizing the role
of human expertise in creating high-quality augmented data.
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Produktdetaljer
ISBN
9789819650811
Publisert
2025
Utgiver
Springer Nature
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter