Official PyTorch implementation of the paper: Flow Matching in Latent Space
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Updated
Jul 23, 2024 - Python
Official PyTorch implementation of the paper: Flow Matching in Latent Space
Official pytorch implementation of the paper: "An Edit Friendly DDPM Noise Space: Inversion and Manipulations". CVPR 2024.
Codebase of the MSc thesis by Amr Abdellatif "Unveiling Deep Learning Systems Behaviors through Latent Space Exploration"
Pytorch implementation of Gaussian Mixture Variational Autoencoder GMVAE
ComfyUI extension for advanced manipulation with latent
Code implementation of the detection network capable of dealing with many overlapping spline bodies.
Comparing latent space representations using autoencoders and vision transformers using fMRI data.
A vector database for images, with the possibility to run a similarity search. I implemented this as I needed to make a project with GPT4o vision API
Playing wiht Latent Space of VAE with PSO
PyTorch Implementation of Make-An-Audio (ICML'23) with a Text-to-Audio Generative Model
Remaining Useful Life estimation and sensor data generation by VAE and diffusion model on C-MAPSS dataset.
Supplementary material for the paper "Lightweight Multitask Learning for Robust JND Prediction using Latent Space and Reconstructed Frames", IEEE TCSVT, 2024.
Code for the paper "Getting a CLUE: A Method for Explaining Uncertainty Estimates"
Project for the course "Deep Learning" - UniTS
A playground for image generation using diffusion models
GANalyzer: Analysis and Manipulation of GANs Latent Space for Controllable Face Synthesis
Exploring the use of Adversarial Constrained Autoencoder Interpolation (ACAI) to improve the quality of latent space for 3D human pose representation using the h36m dataset.
3DGANTex: 3D Face Reconstruction with StyleGAN3-based Texture Synthesis from Multi-View Images
Noble self-supervised adversarial auto-encoder is proposed to extract biologically relevant genes from cancer transcriptomes.
Multi-Operational Mathematical Derivations in Latent Space
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