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YZ Sözlüğü

Yapay Zekanın tam sözlüğü

162
kategoriler
2.032
alt kategoriler
23.060
terimler
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terimler

Vision Transformer (ViT)

Neural architecture applying Transformer mechanisms to image processing by dividing images into sequences of patches for sequential processing.

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Patch Embedding

Process of converting image patches into fixed-dimensional embedding vectors through linear projection to feed into the Transformer.

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Class Token

Special token added to the embedding sequence whose final representation after passing through the Transformer is used for image classification.

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Multi-Head Self-Attention

Mechanism allowing the model to simultaneously compute multiple attention representations to capture different relationships between image patches.

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Transformer Encoder

Fundamental block composed of self-attention layers and feed-forward networks alternating with normalization and residual connections.

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Image Patch Tokenization

Process of cutting an image into non-overlapping fixed-size patches, typically 16x16 pixels, which are then converted into sequential tokens.

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Attention Map Visualization

Interpretability technique visualizing attention weights between patches to understand which image regions the model focuses on.

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Pre-training on Large Datasets

Initial training phase on millions of images like ImageNet-21k to learn general visual representations before fine-tuning.

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Patch Size Hyperparameter

Crucial parameter defining the dimension of image patches directly influencing computational complexity and model performance.

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Token-to-Patch Reconstruction

Reverse process in generative tasks where tokens are converted back into image patches to reconstruct the original image.

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Hierarchical Vision Transformer

Variant of ViT using a pyramid structure with variable patch sizes to capture multi-scale features.

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Self-Supervised ViT Pre-training

Unsupervised training methods like DINO or MAE leveraging the Transformer structure to learn without annotations.

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Cross-Attention in Multi-Modal ViT

Mechanism extending ViT to jointly process images and text using attention between different modalities.

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Computational Complexity O(n²)

Quadratic complexity of self-attention with respect to the number of patches constituting the main limitation of Vision Transformers.

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