VQ-VAE for MNIST
This is a Vector Quantized Variational Autoencoder (VQ-VAE) trained on the MNIST dataset using PyTorch. The model compresses and reconstructs grayscale handwritten digits and is used as part of an image augmentation and generative modeling pipeline.
🧠 Model Details
- Model Type: VQ-VAE
- Dataset: MNIST
- Epochs: 35
- Latent Space: Discrete (quantized vectors)
- Input Size: 64×64 (resized and converted to RGB)
- Reconstruction Loss: MSE-based
- Implementation: Custom PyTorch with 3-layer Conv Encoder/Decoder
- FID Score: 53.21
- Loss Curve:
loss_curve.png
This model learns compressed representations of digit images using vector quantization. The reconstructions can be used for augmentation or generative downstream tasks.
📁 Files
generator.pt: Trained VQ-VAE model weights.loss_curve.png: Visual plot of training loss across 35 epochs.fid_score.json: Stored Fréchet Inception Distance (FID) evaluation result.fid_real/andfid_fake/: 1000 real and generated images used for FID computation.
📦 How to Use
import torch
from models.vqvae.model import VQVAE
model = VQVAE()
model.load_state_dict(torch.load("generator.pt", map_location="cpu"))
model.eval()
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