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A fundamental question! #59
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Hi, mr-Mojo and arianaa30 |
Hi @guantinglin, I think that NIMA might be insensitive to lightning and brightness change in images. I confirmed this observation by testing with different implementations from GitHub and my own research. The difference in prediction score is probably due to changes in contrast etc., that come with brightness changes. |
NIMA also provides a technical score for things like brightness, contrast, and PSNR-like quality of images. That's a different one from Aescetics. |
@arianaa30 Have u figure out? |
No I didn't dig more into this after that. What I did figure out was it
gives higher rates to faces and natural images in general. Maybe not really
darkness/brightness. I didn't test the latter.
…On Wed, Dec 16, 2020, 9:43 PM H3c ***@***.***> wrote:
@arianaa30 <https://github.com/arianaa30> Have u figure out?
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I just downloaded your latest release package. And simply running
evaluate_mobilenet.py
on these two images (replacedimg_path = 'images/girl1.jpg'
):While there is a huge difference visually, the good photo's score is even lower! Am I missing any configurations?!
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