Metadata-Version: 2.1
Name: pyiqa
Version: 0.1.6.1
Summary: PyTorch Toolbox for Image Quality Assessment
Home-page: https://github.com/chaofengc/IQA-PyTorch
Author: Chaofeng Chen
Author-email: chaofenghust@gmail.com
License: UNKNOWN
Keywords: image quality assessment,pytorch
Platform: UNKNOWN
Classifier: Development Status :: 3 - Alpha
Classifier: Intended Audience :: Science/Research
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Operating System :: OS Independent
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Topic :: Scientific/Engineering
Classifier: Topic :: Scientific/Engineering :: Image Processing
Requires-Python: >=3.6
Description-Content-Type: text/markdown
License-File: LICENSE
License-File: LICENSE_NTU-S-Lab

# PyTorch Toolbox for Image Quality Assessment

An IQA toolbox with pure python and pytorch. Please refer to [Awesome-Image-Quality-Assessment](https://github.com/chaofengc/Awesome-Image-Quality-Assessment) for a comprehensive survey of IQA methods, as well as download links for IQA datasets.

<a href="https://colab.research.google.com/drive/14J3KoyrjJ6R531DsdOy5Bza5xfeMODi6?usp=sharing"><img src="https://colab.research.google.com/assets/colab-badge.svg" alt="google colab logo"></a> 
[![PyPI](https://img.shields.io/pypi/v/pyiqa)](https://pypi.org/project/pyiqa/)
![visitors](https://visitor-badge.laobi.icu/badge?page_id=chaofengc/IQA-PyTorch) 
[![Awesome](https://cdn.rawgit.com/sindresorhus/awesome/d7305f38d29fed78fa85652e3a63e154dd8e8829/media/badge.svg)](https://github.com/chaofengc/Awesome-Image-Quality-Assessment)
[![Citation](https://img.shields.io/badge/Citation-bibtex-green)](https://github.com/chaofengc/IQA-PyTorch/blob/main/README.md#bookmark_tabs-citation)

![demo](demo.gif)

- [:open_book: Introduction](#open_book-introduction)
- [:zap: Quick Start](#zap-quick-start)
  - [Dependencies and Installation](#dependencies-and-installation)
  - [Basic Usage](#basic-usage)
- [:hammer_and_wrench: Train](#hammer_and_wrench-train)
  - [Dataset Preparation](#dataset-preparation)
  - [Example Train Script](#example-train-script)
- [:1st_place_medal: Benchmark Performances and Model Zoo](#1st_place_medal-benchmark-performances-and-model-zoo)
  - [Results Calibration](#results-calibration)
  - [Performance Evaluation Protocol](#performance-evaluation-protocol)
  - [Benchmark Performance with Provided Script](#benchmark-performance-with-provided-script)
 
## :open_book: Introduction

This is a image quality assessment toolbox with **pure python and pytorch**. We provide reimplementation of many mainstream full reference (FR) and no reference (NR) metrics (results are calibrated with official matlab scripts if exist). **With GPU acceleration, most of our implementations are much faster than Matlab.** Below are details of supported methods and datasets in this project.

<details open>
<summary>Supported methods and datasets:</summary>

<table>
<tr><td>

| FR Method                | Backward           |
| ------------------------ | ------------------ |
| AHIQ                     | :white_check_mark: |
| PieAPP                   | :white_check_mark: |
| LPIPS                    | :white_check_mark: |
| DISTS                    | :white_check_mark: |
| WaDIQaM                  | :white_check_mark: |
| CKDN<sup>[1](#fn1)</sup> | :white_check_mark: |
| FSIM                     | :white_check_mark: |
| SSIM                     | :white_check_mark: |
| MS-SSIM                  | :white_check_mark: |
| CW-SSIM                  | :white_check_mark: |
| PSNR                     | :white_check_mark: |
| VIF                      | :white_check_mark: |
| GMSD                     | :white_check_mark: |
| NLPD                     | :white_check_mark: |
| VSI                      | :white_check_mark: |
| MAD                      | :white_check_mark: |

</td><td>

| NR Method                    | Backward                 |
| ---------------------------- | ------------------------ |
| FID                          | :heavy_multiplication_x: |
| CLIPIQA(+)                   | :white_check_mark:       |
| MANIQA                       | :white_check_mark:       |
| MUSIQ                        | :white_check_mark:       |
| DBCNN                        | :white_check_mark:       |
| PaQ-2-PiQ                    | :white_check_mark:       |
| HyperIQA                     | :white_check_mark:       |
| NIMA                         | :white_check_mark:       |
| WaDIQaM                      | :white_check_mark:       |
| CNNIQA                       | :white_check_mark:       |
| NRQM(Ma)<sup>[2](#fn2)</sup> | :heavy_multiplication_x: |
| PI(Perceptual Index)         | :heavy_multiplication_x: |
| BRISQUE                      | :white_check_mark:       |
| ILNIQE                       | :white_check_mark:       |
| NIQE                         | :white_check_mark:       |

<!-- | HOSA                         | :hourglass_flowing_sand: | -->

</td><td>

| Dataset          | Type         |
| ---------------- | ------------ |
| FLIVE(PaQ-2-PiQ) | NR           |
| SPAQ             | NR/mobile    |
| AVA              | NR/Aesthetic |
| PIPAL            | FR           |
| BAPPS            | FR           |
| PieAPP           | FR           |
| KADID-10k        | FR           |
| KonIQ-10k(++)    | NR           |
| LIVEChallenge    | NR           |
| LIVEM            | FR           |
| LIVE             | FR           |
| TID2013          | FR           |
| TID2008          | FR           |
| CSIQ             | FR           |

</td></tr>
</table>

<a name="fn1">[1]</a> This method use distorted image as reference. Please refer to the paper for details.<br>
<a name="fn2">[2]</a> Currently, only naive random forest regression is implemented and **does not** support backward.

</details>

---

### :triangular_flag_on_post: Updates/Changelog

- **March 25, 2023**. Add TreS, HyperIQA, CNNIQA, CLIPIQA.
- **Sep 1, 2022**. 1) Add pretrained models for MANIQA and AHIQ. 2) Add dataset interface for pieapp and PIPAL.
- **June 3, 2022**. Add FID metric. See [clean-fid](https://github.com/GaParmar/clean-fid) for more details.
- **March 11, 2022**. Add pretrained DBCNN, NIMA, and official model of PieAPP, paq2piq.
- [**More**](docs/history_changelog.md)

---

### :hourglass_flowing_sand: TODO List

- :white_large_square: Add pretrained models on different datasets.

---

## :zap: Quick Start

### Dependencies and Installation
- Ubuntu >= 18.04
- Python >= 3.8
- Pytorch >= 1.10
- CUDA >= 10.2 (if use GPU)
```
# Install with pip
pip install pyiqa

# Install latest github version
pip uninstall pyiqa # if have older version installed already 
pip install git+https://github.com/chaofengc/IQA-PyTorch.git

# Install with git clone
git clone https://github.com/chaofengc/IQA-PyTorch.git
cd IQA-PyTorch
pip install -r requirements.txt
python setup.py develop
```

### Basic Usage 

```
import pyiqa
import torch

# list all available metrics
print(pyiqa.list_models())

device = torch.device("cuda") if torch.cuda.is_available() else torch.device("cpu")

# create metric with default setting
iqa_metric = pyiqa.create_metric('lpips', device=device)
# Note that gradient propagation is disabled by default. set as_loss=True to enable it as a loss function.
iqa_loss = pyiqa.create_metric('lpips', device=device, as_loss=True)

# create metric with custom setting
iqa_metric = pyiqa.create_metric('psnr', test_y_channel=True, color_space='ycbcr').to(device)

# check if lower better or higher better
print(iqa_metric.lower_better)

# example for iqa score inference
# Tensor inputs, img_tensor_x/y: (N, 3, H, W), RGB, 0 ~ 1
score_fr = iqa_metric(img_tensor_x, img_tensor_y)
score_nr = iqa_metric(img_tensor_x)

# img path as inputs.
score_fr = iqa_metric('./ResultsCalibra/dist_dir/I03.bmp', './ResultsCalibra/ref_dir/I03.bmp')

# For FID metric, use directory or precomputed statistics as inputs
# refer to clean-fid for more details: https://github.com/GaParmar/clean-fid
fid_metric = pyiqa.create_metric('fid')
score = fid_metric('./ResultsCalibra/dist_dir/', './ResultsCalibra/ref_dir')
score = fid_metric('./ResultsCalibra/dist_dir/', dataset_name="FFHQ", dataset_res=1024, dataset_split="trainval70k")
```


#### Example Test script

Example test script with input directory/images and reference directory/images. 
```
# example for FR metric with dirs
python inference_iqa.py -m LPIPS[or lpips] -i ./ResultsCalibra/dist_dir[dist_img] -r ./ResultsCalibra/ref_dir[ref_img]

# example for NR metric with single image
python inference_iqa.py -m brisque -i ./ResultsCalibra/dist_dir/I03.bmp
```


## :hammer_and_wrench: Train

### Dataset Preparation

- You only need to unzip downloaded datasets from official website without any extra operation. And then make soft links of these dataset folder under `datasets/` folder. Download links are provided in [Awesome-Image-Quality-Assessment](https://github.com/chaofengc/Awesome-Image-Quality-Assessment).
- We provide common interface to load these datasets with the prepared meta information files and train/val/test split files, which can be downloaded from [download_link](https://github.com/chaofengc/IQA-PyTorch/releases/download/v0.1-weights/data_info_files.tgz) and extract them to `datasets/` folder.

You may also use the following commands:

```
mkdir datasets && cd datasets

# make soft links of your dataset
ln -sf your/dataset/path datasetname

# download meta info files and train split files
wget https://github.com/chaofengc/IQA-PyTorch/releases/download/v0.1-weights/data_info_files.tgz
tar -xvf data_info_files.tgz
```

Examples to specific dataset options can be found in `./options/default_dataset_opt.yml`. Details of the dataloader inferface and meta information files can be found in [Dataset Preparation](docs/Dataset_Preparation.md)

### Example Train Script

Example to train DBCNN on LIVEChallenge dataset
```
# train for single experiment
python pyiqa/train.py -opt options/train/DBCNN/train_DBCNN.yml

# train N splits for small datasets
python pyiqa/train_nsplits.py -opt options/train/DBCNN/train_DBCNN.yml
```

## :1st_place_medal: Benchmark Performances and Model Zoo

### Results Calibration

Please refer to the [results calibration](./ResultsCalibra/ResultsCalibra.md) to verify the correctness of the python implementations compared with official scripts in matlab or python.

### Performance Evaluation Protocol

**We use official models for evaluation if available.** Otherwise, we use the following settings to train and evaluate different models for simplicity and consistency:

| Metric Type   | Train     | Test                                       | Results                                                  |
| ------------- | --------- | ------------------------------------------ | -------------------------------------------------------- |
| FR            | KADID-10k | CSIQ, LIVE, TID2008, TID2013               | [FR benchmark results](tests/FR_benchmark_results.csv)   |
| NR            | KonIQ-10k | LIVEC, KonIQ-10k (official split), TID2013 | [NR benchmark results](tests/NR_benchmark_results.csv)   |
| Aesthetic IQA | AVA       | AVA (official split)                       | [IAA benchmark results](tests/IAA_benchmark_results.csv) |

Basically, we use the largest existing datasets for training, and cross dataset evaluation performance for fair comparison. The following models do not provide official weights, and are retrained by our scripts:

| Metric Type   | Model Names                   |
| ------------- | ----------------------------- |
| FR            |                               |
| NR            | `cnniqa`, `dbcnn`, `hyperiqa` |
| Aesthetic IQA | `nima`, `nima-vgg16-ava`      |

Notes:
- Due to optimized training process, performance of some retrained approaches may be higher than original paper.
- Results of KonIQ-10k, AVA are both tested with official split.
- NIMA is only applicable to AVA dataset now. We use `inception_resnet_v2` for default `nima`.
- MUSIQ is not included in the IAA benchmark because we do not have train/split information of the official model.

### Benchmark Performance with Provided Script

Here is an example script to get performance benchmark on different datasets:
```
# NOTE: this script will test ALL specified metrics on ALL specified datasets
# Test default metrics on default datasets
python benchmark_results.py -m psnr ssim -d csiq tid2013 tid2008

# Test with your own options
python benchmark_results.py -m psnr --data_opt options/example_benchmark_data_opts.yml

python benchmark_results.py --metric_opt options/example_benchmark_metric_opts.yml tid2013 tid2008

python benchmark_results.py --metric_opt options/example_benchmark_metric_opts.yml --data_opt options/example_benchmark_data_opts.yml
```

## :beers: Contribution

Any contributions to this repository are greatly appreciated. Please follow the [contribution instructions](docs/Instruction.md) for contribution guidance.

## :scroll: License

This work is licensed under a [NTU S-Lab License](https://github.com/chaofengc/IQA-PyTorch/blob/main/LICENSE_NTU-S-Lab) and <a rel="license" href="http://creativecommons.org/licenses/by-nc-sa/4.0/">Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License</a>.

<a rel="license" href="http://creativecommons.org/licenses/by-nc-sa/4.0/"><img alt="Creative Commons License" style="border-width:0" src="https://i.creativecommons.org/l/by-nc-sa/4.0/88x31.png" /></a>

## :bookmark_tabs: Citation

If you find our codes helpful to your research, please consider to use the following citation:

```
@misc{pyiqa,
  title={{IQA-PyTorch}: PyTorch Toolbox for Image Quality Assessment},
  author={Chaofeng Chen and Jiadi Mo},
  year={2022},
  howpublished = "[Online]. Available: \url{https://github.com/chaofengc/IQA-PyTorch}"
}
```

## :heart: Acknowledgement

The code architecture is borrowed from [BasicSR](https://github.com/xinntao/BasicSR). Several implementations are taken from: [IQA-optimization](https://github.com/dingkeyan93/IQA-optimization), [Image-Quality-Assessment-Toolbox](https://github.com/RyanXingQL/Image-Quality-Assessment-Toolbox), [piq](https://github.com/photosynthesis-team/piq), [piqa](https://github.com/francois-rozet/piqa), [clean-fid](https://github.com/GaParmar/clean-fid)

We also thanks the following public repositories: [MUSIQ](https://github.com/google-research/google-research/tree/master/musiq), [DBCNN](https://github.com/zwx8981/DBCNN-PyTorch), [NIMA](https://github.com/kentsyx/Neural-IMage-Assessment), [HyperIQA](https://github.com/SSL92/hyperIQA), [CNNIQA](https://github.com/lidq92/CNNIQA), [WaDIQaM](https://github.com/lidq92/WaDIQaM), [PieAPP](https://github.com/prashnani/PerceptualImageError), [paq2piq](https://github.com/baidut/paq2piq), [MANIQA](https://github.com/IIGROUP/MANIQA) 

## :e-mail: Contact

If you have any questions, please email `chaofenghust@gmail.com`


