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lighting-the-darkness-in-the-deep-learning-era-open's Issues

really nice platform

I think this platform makes people more convenient to implement using different kinds of method quickly, I want to ask a question of website building,Actually it is not about low light enhancement.

I wonder
how to build this user-friendly website (using API? or something, I am learning website building with HTTP CSS JS language)
how to deal with those uploaded images? save to local drive or directly delete it? (what if there are lots of images uploaded at the same time, then how to keep this website working instead of crashing )

some question

How to lighten black and white images with dark field noise
such as this
image

Downsampled output on LLIE-Platform

Hi, thank you for the great work of the LLIE-Platform! It is extremely helpful.

However, I found the resolution of the output image has been downsampled for all methods. Is it possible to output the original resolution as the input?

question on the paper

Dear professor:

Thank you for providing us the excellent paper as a reference.
The table 5 in your paper published on PAMI, the results of DRBN (PSNR, SSIM, LPIPS) are 15.125, 0.472, 0.316, respectively, but in official paper(From fidelity to perceptual quality: A semi-supervised approach for low-light image enhancement, web address: https://openaccess.thecvf.com/content_CVPR_2020/papers/Yang_From_Fidelity_to_Perceptual_Quality_A_Semi-Supervised_Approach_for_Low-Light_CVPR_2020_paper.pdf),the results are : 20.13, 0.82, 0.16).

So, the values is wrong in your paper?
Best regards,
Chris

about dataset

In addition to the datasets mentioned by the author, are there any other datasets with no more than 1k images?

When will the platform be re-opened?

Hi Prof Li,

Thanks for your extraordinary job on low-light enhancement! When will the helpful platform be re-opened?
Looking forward to your reply!

Best wishes,

LOE metrics

Hi! Thanks for the great survey!

I found the LOE (Lightness Order Error) metric is not available now. It seems that I do not have the corresponding permission. Could you please provide it? Or is there any other way I can get it?

问题

请问LOE评测指标matlab代码怎么拒绝访问?有无参考的LOE的具体代码?Python版本和Matlab版本的都可以。

Question about runtime measure

Thanks for your amazing works.

I'd like to know more about the code you used for measuring the running time.

If it is not convenient for you to release the time testing code:

  1. What is the input for each model? Is it 1200*900*3 as in ZeroDCE++?
  2. How did you measure the training time for each model? Did you use torch.cuda.Event for time testing, or some other methods?
  3. Did you use any other ways to ensure the fairness of the comparison?

I believe that posting these would be a great help for future works.

Looking forward to your reply.

A question about the platform

Hi ,
Thanks for your work. The platform covers 13 popular deep learning-based LLIE methods, where the results of any inputs can be produced through a user-friendly web interface. So what training sets were these 13 methods trained with? Did you retrain them?
Thank you for your reply.

平台无法访问

现在平台无法访问,需要学校WebVPN,请问什么时候开放呢?

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