CLADE - Efficient Semantic Image Synthesis via Class-Adaptive Normalization (TPAMI 2021)

Related tags

Deep LearningCLADE
Overview

Efficient Semantic Image Synthesis via Class-Adaptive Normalization (Accepted by TPAMI)

Architecture

ArXiv Paper

Zhentao Tan, Dongdong Chen, Qi Chu, Menglei Chai, Jing Liao, Mingming He, Lu Yuan, Gang Hua, Nenghai Yu

Abstract

Spatially-adaptive normalization SPADE is remarkably successful recently in conditional semantic image synthesis, which modulates the normalized activation with spatially-varying transformations learned from semantic layouts, to prevent the semantic information from being washed away. Despite its impressive performance, a more thorough understanding of the advantages inside the box is still highly demanded to help reduce the significant computation and parameter overhead introduced by this novel structure. In this paper, from a return-on-investment point of view, we conduct an in-depth analysis of the effectiveness of this spatially-adaptive normalization and observe that its modulation parameters benefit more from semantic-awareness rather than spatial-adaptiveness, especially for high-resolution input masks. Inspired by this observation, we propose class-adaptive normalization (CLADE), a lightweight but equally-effective variant that is only adaptive to semantic class. In order to further improve spatial-adaptiveness, we introduce intra-class positional map encoding calculated from semantic layouts to modulate the normalization parameters of CLADE and propose a truly spatially-adaptive variant of CLADE, namely CLADE-ICPE. %Benefiting from this design, CLADE greatly reduces the computation cost while being able to preserve the semantic information in the generation. Through extensive experiments on multiple challenging datasets, we demonstrate that the proposed CLADE can be generalized to different SPADE-based methods while achieving comparable generation quality compared to SPADE, but it is much more efficient with fewer extra parameters and lower computational cost.

Installation

Clone this repo.

git clone https://github.com/tzt101/CLADE.git
cd CLADE/

This code requires PyTorch 1.6 and python 3+. Please install dependencies by

pip install -r requirements.txt

Dataset Preparation

The Cityscapes, COCO-Stuff and ADE20K dataset can be download and prepared following SPADE. We provide the ADE20K-outdoor dataset selected by ourselves in OneDrive.

To make the distance mask which called intra-class positional encoding map in the paper, you can use the following commands:

python uitl/cal_dist_masks.py --path [Path_to_dataset] --dataset [ade20k | coco | cityscapes]

By default, the distance mask is normalized. If you do not want it, please set --norm no.

Generating Images Using Pretrained Model

Once the dataset is ready, the result images can be generated using pretrained models.

  1. Download the pretrained models from the OneDrive, save it in checkpoints/. The structure is as follows:
./checkpoints/
    ade20k/
        best_net_G.pth
    ade20k_dist/
        best_net_G.pth
    ade20k_outdoor/
        best_net_G.pth
    ade20k_outdoor_dist/
        best_net_G.pth
    cityscapes/
        best_net_G.pth
    cityscapes_dist/
        best_net_G.pth
    coco/
        best_net_G.pth
    coco_dist/
        best_net_G.pth

_dist means that the model use the additional positional encoding, called CLADE-ICPE in the paper.

  1. Generate the images on the test dataset.
python test.py --name [model_name] --norm_mode clade --batchSize 1 --gpu_ids 0 --which_epoch best --dataset_mode [dataset] --dataroot [Path_to_dataset]

[model_name] is the directory name of the checkpoint file downloaded in Step 1, such as ade20k and coco. [dataset] can be on of ade20k, ade20koutdoor, cityscapes and coco. [Path_to_dataset] is the path to the dataset. If you want to test CALDE-ICPE, the command is as follows:

python test.py --name [model_name] --norm_mode clade --batchSize 1 --gpu_ids 0 --which_epoch best --dataset_mode [dataset] --dataroot [Path_to_dataset] --add_dist

Training New Models

You can train your own model with the following command:

# To train CLADE and CLADE-ICPE.
python train.py --name [experiment_name] --dataset_mode [dataset] --norm_mode clade --dataroot [Path_to_dataset]
python train.py --name [experiment_name] --dataset_mode [dataset] --norm_mode clade --dataroot [Path_to_dataset] --add_dist

If you want to test the model during the training step, please set --train_eval. By default, the model every 10 epoch will be test in terms of FID. Finally, the model with best FID score will be saved as best_net_G.pth.

Calculate FID

We provide the code to calculate the FID which is based on rpo. We have pre-calculated the distribution of real images (all images are resized to 256×256 except cityscapes is 512×256) in training set of each dataset and saved them in ./datasets/train_mu_si/. You can run the following command:

python fid_score.py [Path_to_real_image] [Path_to_fake_image] --batch-size 1 --gpu 0 --load_np_name [dataset] --resize [Size]

The provided [dataset] are: ade20k, ade20koutdoor, cityscapes and coco. You can save the new dataset by replacing --load_np_name [dataset] with --save_np_name [dataset].

New Useful Options

The new options are as follows:

  • --use_amp: if specified, use AMP training mode.
  • --train_eval: if sepcified, evaluate the model during training.
  • --eval_dims: the default setting is 2048, Dimensionality of Inception features to use.
  • --eval_epoch_freq: the default setting is 10, frequency of calculate fid score at the end of epochs.

Code Structure

  • train.py, test.py: the entry point for training and testing.
  • trainers/pix2pix_trainer.py: harnesses and reports the progress of training.
  • models/pix2pix_model.py: creates the networks, and compute the losses
  • models/networks/: defines the architecture of all models
  • options/: creates option lists using argparse package. More individuals are dynamically added in other files as well. Please see the section below.
  • data/: defines the class for loading images and label maps.

Citation

If you use this code for your research, please cite our papers.

@article{tan2021efficient,
  title={Efficient Semantic Image Synthesis via Class-Adaptive Normalization},
  author={Tan, Zhentao and Chen, Dongdong and Chu, Qi and Chai, Menglei and Liao, Jing and He, Mingming and Yuan, Lu and Hua, Gang and Yu, Nenghai},
  journal={IEEE Transactions on Pattern Analysis and Machine Intelligence},
  year={2021},
  publisher={IEEE}
}
@article{tan2020rethinking,
  title={Rethinking Spatially-Adaptive Normalization},
  author={Tan, Zhentao and Chen, Dongdong and Chu, Qi and Chai, Menglei and Liao, Jing and He, Mingming and Yuan, Lu and Yu, Nenghai},
  journal={arXiv preprint arXiv:2004.02867},
  year={2020}
}
@article{tan2020semantic,
  title={Semantic Image Synthesis via Efficient Class-Adaptive Normalization},
  author={Tan, Zhentao and Chen, Dongdong and Chu, Qi and Chai, Menglei and Liao, Jing and He, Mingming and Yuan, Lu and Gang Hua and Yu, Nenghai},
  journal={arXiv preprint arXiv:2012.04644},
  year={2020}
}

Acknowledgments

This code borrows heavily from SPADE.

DeepHawkeye is a library to detect unusual patterns in images using features from pretrained neural networks

English | 简体中文 Introduction DeepHawkeye is a library to detect unusual patterns in images using features from pretrained neural networks Reference Pat

CV Newbie 28 Dec 13, 2022
Reinforcement learning for self-driving in a 3D simulation

SelfDrive_AI Reinforcement learning for self-driving in a 3D simulation (Created using UNITY-3D) 1. Requirements for the SelfDrive_AI Gym You need Pyt

Surajit Saikia 17 Dec 14, 2021
Sequence Modeling with Structured State Spaces

Structured State Spaces for Sequence Modeling This repository provides implementations and experiments for the following papers. S4 Efficiently Modeli

HazyResearch 896 Jan 01, 2023
Based on the given clinical dataset, Predict whether the patient having Heart Disease or Not having Heart Disease

Heart_Disease_Classification Based on the given clinical dataset, Predict whether the patient having Heart Disease or Not having Heart Disease Dataset

Ashish 1 Jan 30, 2022
Code for database and frontend of webpage for Neural Fields in Visual Computing and Beyond.

Neural Fields in Visual Computing—Complementary Webpage This is based on the amazing MiniConf project from Hendrik Strobelt and Sasha Rush—thank you!

Brown University Visual Computing Group 29 Nov 30, 2022
🥇Samsung AI Challenge 2021 1등 솔루션입니다🥇

MoT - Molecular Transformer Large-scale Pretraining for Molecular Property Prediction Samsung AI Challenge for Scientific Discovery This repository is

Jungwoo Park 44 Dec 03, 2022
A variational Bayesian method for similarity learning in non-rigid image registration (CVPR 2022)

A variational Bayesian method for similarity learning in non-rigid image registration We provide the source code and the trained models used in the re

daniel grzech 14 Nov 21, 2022
Supporting code for the paper "Dangers of Bayesian Model Averaging under Covariate Shift"

Dangers of Bayesian Model Averaging under Covariate Shift This repository contains the code to reproduce the experiments in the paper Dangers of Bayes

Pavel Izmailov 25 Sep 21, 2022
BYOL for Audio: Self-Supervised Learning for General-Purpose Audio Representation

BYOL for Audio: Self-Supervised Learning for General-Purpose Audio Representation This is a demo implementation of BYOL for Audio (BYOL-A), a self-sup

NTT Communication Science Laboratories 160 Jan 04, 2023
TUPÃ was developed to analyze electric field properties in molecular simulations

TUPÃ: Electric field analyses for molecular simulations What is TUPÃ? TUPÃ (pronounced as tu-pan) is a python algorithm that employs MDAnalysis engine

Marcelo D. Polêto 10 Jul 17, 2022
Efficient semidefinite bounds for multi-label discrete graphical models.

Low rank solvers #################################### benchmark/ : folder with the random instances used in the paper. ############################

1 Dec 08, 2022
This repository contains the code and models for the following paper.

DC-ShadowNet Introduction This is an implementation of the following paper DC-ShadowNet: Single-Image Hard and Soft Shadow Removal Using Unsupervised

AuAgCu 65 Dec 27, 2022
Code for Motion Representations for Articulated Animation paper

Motion Representations for Articulated Animation This repository contains the source code for the CVPR'2021 paper Motion Representations for Articulat

Snap Research 851 Jan 09, 2023
Genetic feature selection module for scikit-learn

sklearn-genetic Genetic feature selection module for scikit-learn Genetic algorithms mimic the process of natural selection to search for optimal valu

Manuel Calzolari 260 Dec 14, 2022
GraPE is a Rust/Python library for high-performance Graph Processing and Embedding.

GraPE GraPE (Graph Processing and Embedding) is a fast graph processing and embedding library, designed to scale with big graphs and to run on both of

AnacletoLab 194 Dec 29, 2022
Code for our paper: Online Variational Filtering and Parameter Learning

Variational Filtering To run phi learning on linear gaussian (Fig1a) python linear_gaussian_phi_learning.py To run phi and theta learning on linear g

16 Aug 14, 2022
Tutel MoE: An Optimized Mixture-of-Experts Implementation

Project Tutel Tutel MoE: An Optimized Mixture-of-Experts Implementation. Supported Framework: Pytorch Supported GPUs: CUDA(fp32 + fp16), ROCm(fp32) Ho

Microsoft 344 Dec 29, 2022
RM Operation can equivalently convert ResNet to VGG, which is better for pruning; and can help RepVGG perform better when the depth is large.

RMNet: Equivalently Removing Residual Connection from Networks This repository is the official implementation of "RMNet: Equivalently Removing Residua

184 Jan 04, 2023
Code release for ICCV 2021 paper "Anticipative Video Transformer"

Anticipative Video Transformer Ranked first in the Action Anticipation task of the CVPR 2021 EPIC-Kitchens Challenge! (entry: AVT-FB-UT) [project page

Facebook Research 123 Dec 13, 2022
Experiments with differentiable stacks and queues in PyTorch

Please use stacknn-core instead! StackNN This project implements differentiable stacks and queues in PyTorch. The data structures are implemented in s

Will Merrill 141 Oct 06, 2022