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Hi, thank you for all the great work with video restoration models.
I notice that you are also an author of the ReViD paper (https://arxiv.org/pdf/2208.11803v2.pdf), which contains a link to a github repo that appears to have been taken down. Is there any chance the source code is available somewhere else?
I'm also curious, would you recommend ReViD or RVRT to use for video denoising? Does RVRT run as fast as ReViD?
Thank you!
Carson
The text was updated successfully, but these errors were encountered:
Hi,
Sorry to disturb you. My task requires me to spare some time on the topic of video denoising. And I found that RVRT and VRT were worth trying. However, I haven't trained both methods yet due to the wrong format of my own datasets. If you run successfully, could you please give me a hand?
Actually, I'd like to talk about video denoising with you.
Last, best wishes to you!
Hi, thank you for all the great work with video restoration models.
I notice that you are also an author of the ReViD paper (https://arxiv.org/pdf/2208.11803v2.pdf), which contains a link to a github repo that appears to have been taken down. Is there any chance the source code is available somewhere else?
I'm also curious, would you recommend ReViD or RVRT to use for video denoising? Does RVRT run as fast as ReViD?
Hi, thank you for all the great work with video restoration models.
I notice that you are also an author of the ReViD paper (https://arxiv.org/pdf/2208.11803v2.pdf), which contains a link to a github repo that appears to have been taken down. Is there any chance the source code is available somewhere else?
I'm also curious, would you recommend ReViD or RVRT to use for video denoising? Does RVRT run as fast as ReViD?
Thank you!
Carson
The text was updated successfully, but these errors were encountered: