yunxiaoshi/Neural-IMage-Assessment
A PyTorch Implementation of Neural IMage Assessment
This tool helps photographers, marketers, or anyone working with visual content to automatically assess the aesthetic quality of images. You provide a set of images, and it outputs a predicted aesthetic rating for each, indicating how visually appealing or well-composed they are. This is ideal for quickly sifting through many photos to find the best ones.
582 stars. No commits in the last 6 months.
Use this if you need an automated way to score the aesthetic quality of a large collection of images, similar to how human raters would perceive them.
Not ideal if you need to understand specific artistic elements or require subjective, nuanced human judgment for image critique.
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Python
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Last pushed
Nov 10, 2021
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