Rethinking FID
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Rethinking FID
Overview :
This paper proposes a new metric for evaluating image generation models. It highlights the issues with the Frechet Inception Distance (FID) metric and introduces a new metric called CMMD. Extensive experiments demonstrate that the FID metric may be unreliable for evaluating text-to-image models, while the CMMD metric can more reliably assess image quality.
Target Users :
This evaluation metric can be applied to evaluate the quality of any image generation model, helping researchers and developers choose better models.
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Features
Evaluate the quality of image generation models
Compare the performance of different models
Assess the consistency of models under different sample sizes
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