久久久久久精品无码人妻_青春草无码精品视频在线观_无码精品国产VA在线观看_国产色无码专区在线观看

AI6126代做、Python設(shè)計(jì)程序代寫

時(shí)間:2024-04-12  來(lái)源:  作者: 我要糾錯(cuò)



2023-S2 AI6126 Project 2
Blind Face Super-Resolution
Project 2 Specification (Version 1.0. Last update on 22 March 2024)
Important Dates
Issued: 22 March 2024
Release of test set: 19 April 2023 12:00 AM SGT
Due: 26 April 2023 11:59 PM SGT
Group Policy
This is an individual project
Late Submission Policy
Late submissions will be penalized (each day at 5% up to 3 days)
Challenge Description
Figure 1. Illustration of blind face restoration
The goal of this mini-challenge is to generate high-quality (HQ) face images from the
corrupted low-quality (LQ) ones (see Figure 1) [1]. The data for this task comes from
the FFHQ. For this challenge, we provide a mini dataset, which consists of 5000 HQ
images for training and 400 LQ-HQ image pairs for validation. Note that we do not
provide the LQ images in the training set. During the training, you need to generate
the corresponding LQ images on the fly by corrupting HQ images using the random
second-order degradation pipeline [1] (see Figure 2). This pipeline contains 4 types
of degradations: Gaussian blur, Downsampling, Noise, and Compression. We will
give the code of each degradation function as well as an example of the degradation
config for your reference.
Figure 2. Illustration of second-order degradation pipeline during training
During validation and testing, algorithms will generate an HQ image for each LQ face
image. The quality of the output will be evaluated based on the PSNR metric
between the output and HQ images (HQ images of the test set will not be released).
Assessment Criteria
In this challenge, we will evaluate your results quantitatively for scoring.
Quantitative evaluation:
We will evaluate and rank the performance of your network model on our given 400
synthetic testing LQ face images based on the PSNR.
The higher the rank of your solution, the higher the score you will receive. In general,
scores will be awarded based on the Table below.
Percentile
in ranking
≤ 5% ≤ 15% ≤ 30% ≤ 50% ≤ 75% ≤ 100% *
Scores 20 18 16 14 12 10 0
Notes:
● We will award bonus marks (up to 2 marks) if the solution is interesting or
novel.
● To obtain more natural HQ face images, we also encourage students to
attempt to use a discriminator loss with a GAN during the training. Note that
discriminator loss will lower the PSNR score but make the results look more
natural. Thus, you need to carefully adjust the GAN weight to find a tradeoff
between PSNR and perceptual quality. You may earn bonus marks (up to 2
marks) if you achieve outstanding results on the 6 real-world LQ images,
consisting of two slightly blurry, two moderately blurry, and two extremely
blurry test images. (The real-world test images will be released with the 400
test set) [optional]
● Marks will be deducted if the submitted files are not complete, e.g., important
parts of your core codes are missing or you do not submit a short report.
● TAs will answer questions about project specifications or ambiguities. For
questions related to code installation, implementation, and program bugs, TAs
will only provide simple hints and pointers for you.
Requirements
● Download the dataset, baseline configuration file, and evaluation script: here
● Train your network using our provided training set.
● Tune the hyper-parameters using our provided validation set.
● Your model should contain fewer than 2,276,356 trainable parameters, which
is 150% of the trainable parameters in SRResNet [4] (your baseline network).
You can use
● sum(p.numel() for p in model.parameters())
to compute the number of parameters in your network. The number of
parameters is only applicable to the generator if you use a GAN.
● The test set will be available one week before the deadline (this is a common
practice of major computer vision challenges).
● No external data and pre-trained models are allowed in this mini
challenge. You are only allowed to train your models from scratch using the
5000 image pairs in our given training set.
Submission Guidelines
Submitting Results on CodaLab
We will host the challenge on CodaLab. You need to submit your results to CodaLab.
Please follow the following guidelines to ensure your results are successfully
recorded.
● The CodaLab competition link:
https://codalab.lisn.upsaclay.fr/competitions/18233?secret_key
=6b842a59-9e76-47b1-8f56-283c5cb4c82b
● Register a CodaLab account with your NTU email.
● [Important] After your registration, please fill in the username in the Google
Form: https://forms.gle/ut764if5zoaT753H7
● Submit output face images from your model on the 400 test images as a zip
file. Put the results in a subfolder and use the same file name as the original
test images. (e.g., if the input image is named as 00001.png, your result
should also be named as 00001.png)
● You can submit your results multiple times but no more than 10 times per day.
You should report your best score (based on the test set) in the final report.
● Please refer to Appendix A for the hands-on instructions for the submission
procedures on CodaLab if needed.
Submitting Report on NTULearn
Submit the following files (all in a single zip file named with your matric number, e.g.,
A12345678B.zip) to NTULearn before the deadline:
● A short report in pdf format of not more than five A4 pages (single-column,
single-line spacing, Arial 12 font, the page limit excludes the cover page and
references) to describe your final solution. The report must include the
following information:
○ the model you use
○ the loss functions
○ training curves (i.e., loss)
○ predicted HQ images on 6 real-world LQ images (if you attempted the
adversarial loss during training)
○ PSNR of your model on the validation set
○ the number of parameters of your model
○ Specs of your training machine, e.g., number of GPUs, GPU model
You may also include other information, e.g., any data processing or
operations that you have used to obtain your results in the report.
● The best results (i.e., the predicted HQ images) from your model on the 400
test images. And the screenshot on Codalab of the score achieved.
● All necessary codes, training log files, and model checkpoint (weights) of your
submitted model. We will use the results to check plagiarism.
● A Readme.txt containing the following info:
○ Your matriculation number and your CodaLab username.
○ Description of the files you have submitted.
○ References to the third-party libraries you are using in your solution
(leave blank if you are not using any of them).
○ Any details you want the person who tests your solution to know when
they test your solution, e.g., which script to run, so that we can check
your results, if necessary.
Tips
1. For this project, you can use the Real-ESRGAN [1] codebase, which is based
on BasicSR toolbox that implements many popular image restoration
methods with modular design and provides detailed documentation.
2. We included a sample Real-ESRGAN configuration file (a simple network, i.e.,
SRResNet [4]) as an example in the shared folder. [Important] You need to:
a. Put “train_SRResNet_x4_FFHQ_300k.yml” under the “options” folder.
b. Put “ffhqsub_dataset.py” under the “realesrgan/data” folder.
The PSNR of this baseline on the validation set is around 26.33 dB.
3. For the calculation of PSNR, you can refer to ‘evaluate.py’ in the shared folder.
You should replace the corresponding path ‘xxx’ with your own path.
4. The training data is important in this task. If you do not plan to use MMEditing
for this project, please make sure your pipeline to generate the LQ data is
identical to the one in the configuration file.
5. The training configuration of GAN models is also available in Real-ESRGAN
and BasicSR. You can freely explore the repository.
6. The following techniques may help you to boost the performance:
a. Data augmentation, e.g. random horizontal flip (but do not use vertical
flip, otherwise, it will break the alignment of the face images)
b. More powerful models and backbones (within the complexity
constraint), please refer to some works in reference.
c. Hyper-parameters fine-tuning, e.g., choice of the optimizer, learning
rate, number of iterations
d. Discriminative GAN loss will help generate more natural results (but it
lowers PSNR, please find a trade-off by adjusting loss weights).
e. Think about what is unique to this dataset and propose novel modules.
References
[1] Wang et al., Real-ESRGAN: Training Real-World Blind Super-Resolution with Pure
Synthetic Data, ICCVW 2021
[2] Wang et al., GFP-GAN: Towards Real-World Blind Face Restoration with Generative
Facial Prior, CVPR 2021
[3] Zhou et al., Towards Robust Blind Face Restoration with Codebook Lookup Transformer,
NeurIPS 2022
[4] C. Ledig et al., Photo-realistic Single Image Super-Resolution using a Generative
Adversarial Network, CVPR 2017
[5] Wang et al., A General U-Shaped Transformer for Image Restoration, CVPR 2022
[6] Zamir et al., Restormer: Efficient Transformer for High-Resolution Image Restoration,
CVPR 2022
Appendix A Hands-on Instructions for Submission on CodaLab
After your participation to the competition is approved, you can submit your results
here:
Then upload the zip file containing your results.
If the ‘STATUS’ turns to ‘Finished’, it means that you have successfully uploaded
your result. Please note that this may take a few minutes.

請(qǐng)加QQ:99515681  郵箱:99515681@qq.com   WX:codinghelp


















 

標(biāo)簽:

掃一掃在手機(jī)打開當(dāng)前頁(yè)
  • 上一篇:代做IDEPG001、代寫c/c++,Java編程設(shè)計(jì)
  • 下一篇:CSI 2120代做、代寫Python/Java設(shè)計(jì)編程
  • 無(wú)相關(guān)信息
    昆明生活資訊

    昆明圖文信息
    蝴蝶泉(4A)-大理旅游
    蝴蝶泉(4A)-大理旅游
    油炸竹蟲
    油炸竹蟲
    酸筍煮魚(雞)
    酸筍煮魚(雞)
    竹筒飯
    竹筒飯
    香茅草烤魚
    香茅草烤魚
    檸檬烤魚
    檸檬烤魚
    昆明西山國(guó)家級(jí)風(fēng)景名勝區(qū)
    昆明西山國(guó)家級(jí)風(fēng)景名勝區(qū)
    昆明旅游索道攻略
    昆明旅游索道攻略
  • 短信驗(yàn)證碼平臺(tái) 理財(cái) WPS下載

    關(guān)于我們 | 打賞支持 | 廣告服務(wù) | 聯(lián)系我們 | 網(wǎng)站地圖 | 免責(zé)聲明 | 幫助中心 | 友情鏈接 |

    Copyright © 2025 kmw.cc Inc. All Rights Reserved. 昆明網(wǎng) 版權(quán)所有
    ICP備06013414號(hào)-3 公安備 42010502001045

    久久久久久精品无码人妻_青春草无码精品视频在线观_无码精品国产VA在线观看_国产色无码专区在线观看

    隔壁人妻偷人bd中字| 男女啪啪网站视频| 怡红院av亚洲一区二区三区h| 涩涩网站在线看| 免费看污黄网站| 18岁网站在线观看| 欧美黄色免费网址| 国产xxxxhd| 天堂在线一区二区三区| 亚洲精品www.| 无限资源日本好片| 尤蜜粉嫩av国产一区二区三区| 国产成人无码精品久久久性色| 97在线国产视频| 黄色一级片黄色| 中文字幕日韩精品无码内射| 精品国产三级a∨在线| 国产奶头好大揉着好爽视频| 亚欧美一区二区三区| 国产精品无码乱伦| 最新av网址在线观看| 免费观看黄色的网站| 黄色网络在线观看| 久久久无码中文字幕久...| 久久天天东北熟女毛茸茸| 免费观看黄色的网站| 国产成人一二三区| 人人妻人人澡人人爽欧美一区双| 日本人妻伦在线中文字幕| www婷婷av久久久影片| 欧美交换配乱吟粗大25p| 久久www视频| 国产原创中文在线观看| 黄色免费观看视频网站| 国产日韩一区二区在线| 亚洲精品一二三四五区| 欧美一级特黄aaa| 8x8x华人在线| 阿v天堂2017| 一区二区三区韩国| 中文字幕一区二区在线观看视频 | 看一级黄色录像| 蜜臀在线免费观看| 一二三四视频社区在线| 一本久道综合色婷婷五月| 在线观看的毛片| 国产第一页视频| 欧美女人性生活视频| 一区二区三区视频在线观看免费| 91视频这里只有精品| 毛片av在线播放| 亚洲精品乱码久久久久久自慰 | 超碰成人在线免费观看| 国产欧美123| 国产一区二区三区精彩视频| 亚洲国产精品三区| 国内自拍第二页| 男人插女人视频在线观看| r级无码视频在线观看| 成人三级视频在线播放| 亚洲一二区在线观看| 日本韩国欧美在线观看| 在线观看高清免费视频| 99久热在线精品视频| 欧美私人情侣网站| 男人j进女人j| 精品久久久久久中文字幕2017| 亚洲第一精品区| 妞干网在线观看视频| 亚洲一区日韩精品| 日韩欧美国产综合在线| 天堂一区在线观看| 霍思燕三级露全乳照| 潘金莲激情呻吟欲求不满视频| 国产成人一区二区三区别| 波多野结衣xxxx| 丁香花在线影院观看在线播放| 天天色综合天天色| 亚洲人成无码网站久久99热国产| 国产女同无遮挡互慰高潮91| 国产精品一区二区免费在线观看 | 国产又大又长又粗又黄| 黄色一级一级片| 日本香蕉视频在线观看| 天天色天天综合网| 国产综合免费视频| av影院在线播放| 久久久久久久久久毛片| 麻豆av免费在线| 精品丰满人妻无套内射| 亚洲免费av网| 一道本视频在线观看| 日韩欧美一区二| 无码人妻精品一区二区蜜桃百度| 国产视频1区2区3区| 久久婷婷国产精品| 色欲色香天天天综合网www| 欧美日韩久久婷婷| 韩国中文字幕av| 国产精品宾馆在线精品酒店| 成人免费看片'免费看| 国产又黄又爽免费视频| av中文字幕网址| 亚洲免费一级视频| 熟妇人妻无乱码中文字幕真矢织江| 久久99久久99精品| 小说区视频区图片区| 男生操女生视频在线观看| 国产精品涩涩涩视频网站| 欧美 日韩 亚洲 一区| 天天做天天躁天天躁| 三上悠亚免费在线观看| www.偷拍.com| 久久精品亚洲天堂| 亚洲第一天堂久久| 怡红院av亚洲一区二区三区h| 大西瓜av在线| 国产一区二区三区小说| 久青草视频在线播放| 欧美日韩dvd| 国产激情在线看| 狠狠噜天天噜日日噜| 97在线免费视频观看| 欧美日韩中文字幕在线播放| 今天免费高清在线观看国语| 中文字幕第一页亚洲| 精品国产无码在线| 久久视频免费在线| av一区二区三区免费观看| 黄色成人在线免费观看| 日本人体一区二区| 国产中文字幕二区| 精品人妻一区二区三区四区在线 | 黄色网zhan| 免费看黄色a级片| 波多野结衣与黑人| 大陆av在线播放| 国产日产欧美视频| 麻豆av免费在线| 日本黄大片一区二区三区| 日韩av影视大全| 国产精品videossex国产高清| 国产高清av在线播放| 精品国产免费av| 15—17女人毛片| 视频区 图片区 小说区| av电影一区二区三区| 人人妻人人澡人人爽欧美一区双| 缅甸午夜性猛交xxxx| 污污视频网站免费观看| 日韩 国产 一区| 波多野结衣av一区二区全免费观看| 精品欧美一区免费观看α√| 在线观看免费成人av| 999热精品视频| 久操网在线观看| 亚洲欧美日韩一级| 91视频成人免费| 欧美日韩成人免费视频| 校园春色 亚洲色图| 日本老太婆做爰视频| 日韩欧美视频网站| 国产色视频在线播放| 亚洲乱码日产精品bd在线观看| 免费在线观看亚洲视频| 伊人网在线综合| 免费看欧美黑人毛片| 久草综合在线观看| 黄色一级视频播放| 99蜜桃臀久久久欧美精品网站| 天天av天天操| 久久综合色视频| av噜噜在线观看| 一女被多男玩喷潮视频| 天天操精品视频| 亚洲美免无码中文字幕在线 | 日本成人黄色网| 中国一级黄色录像| 黄色片视频在线播放| 日本特黄在线观看| 黄色片久久久久| av中文字幕av| chinese少妇国语对白| 乱熟女高潮一区二区在线| 手机看片福利日韩| 国产精品videossex国产高清 | 玖玖精品在线视频| 欧美精品成人网| 国产精品自在自线| av之家在线观看| 99久久久无码国产精品性色戒| 青青青在线播放| 97干在线视频| 亚洲欧美日韩网站| 免费观看成人网| 久久av综合网| 99精品视频网站| 国内外成人免费在线视频| 久久久亚洲精品无码| 今天免费高清在线观看国语|