LPIPS metric. pip install lpips
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Updated
Jul 2, 2024 - Python
LPIPS metric. pip install lpips
StyleGAN Encoder - converts real images to latent space
StyleGAN Encoder - converts real images to latent space
Single Image Reflection Separation with Perceptual Losses
StarNet
[ACM MM 20 Oral] PyTorch implementation of Self-supervised Dance Video Synthesis Conditioned on Music
PyTorch implementation of the Perceptual Evaluation of Speech Quality for wideband audio
ESRGAN (Enhanced Super-Resolution Generative Adversarial Networks, published in ECCV 2018) implemented in Tensorflow 2.0+. This is an unofficial implementation. With Colab.
Comparing different similarity functions for reconstruction of image on CycleGAN. (https://tandon-a.github.io/CycleGAN_ssim/) Training cycleGAN with different loss functions to improve visual quality of produced images
A VGG-based perceptual loss function for PyTorch.
Generative Adversarial Network for single image super-resolution in high content screening microscopy images
Low-dose CT via Transfer Learning from a 2D Trained Network, In IEEE TMI 2018
Implementation of VAE and Style-GAN Architecture Achieving State of the Art Reconstruction
Experiments with perceptual loss and autoencoders.
A no-reference version of HDR-VDP using deep-learning
A perceptual weighting filter loss for DNN training in speech enhancement
LPIPS metric on PaddlePaddle. pip install paddle-lpips
implement Deep Feature Consisten Variational Autoencoder in Tensorflow
Official implementation of RDST. A residual dense swin transformer for medical image super-resolution
A deep perceptual metric for 3D point clouds
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