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Autori principali: Luzi, Lorenzo, Jenne, Helen, Murray, Ryan, Marrero, Carlos Ortiz
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2310.20636
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author Luzi, Lorenzo
Jenne, Helen
Murray, Ryan
Marrero, Carlos Ortiz
author_facet Luzi, Lorenzo
Jenne, Helen
Murray, Ryan
Marrero, Carlos Ortiz
contents The rapid advancement of Generative Adversarial Networks (GANs) necessitates the need to robustly evaluate these models. Among the established evaluation criteria, the FréchetInception Distance (FID) has been widely adopted due to its conceptual simplicity, fast computation time, and strong correlation with human perception. However, FID has inherent limitations, mainly stemming from its assumption that feature embeddings follow a Gaussian distribution, and therefore can be defined by their first two moments. As this does not hold in practice, in this paper we explore the importance of third-moments in image feature data and use this information to define a new measure, which we call the Skew Inception Distance (SID). We prove that SID is a pseudometric on probability distributions, show how it extends FID, and present a practical method for its computation. Our numerical experiments support that SID either tracks with FID or, in some cases, aligns more closely with human perception when evaluating image features of ImageNet data. Our work also shows that principal component analysis can be used to speed up the computation time of both FID and SID. Although we focus on using SID on image features for GAN evaluation, SID is applicable much more generally, including for the evaluation of other generative models.
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id arxiv_https___arxiv_org_abs_2310_20636
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Using Skew to Assess the Quality of GAN-generated Image Features
Luzi, Lorenzo
Jenne, Helen
Murray, Ryan
Marrero, Carlos Ortiz
Computer Vision and Pattern Recognition
Machine Learning
The rapid advancement of Generative Adversarial Networks (GANs) necessitates the need to robustly evaluate these models. Among the established evaluation criteria, the FréchetInception Distance (FID) has been widely adopted due to its conceptual simplicity, fast computation time, and strong correlation with human perception. However, FID has inherent limitations, mainly stemming from its assumption that feature embeddings follow a Gaussian distribution, and therefore can be defined by their first two moments. As this does not hold in practice, in this paper we explore the importance of third-moments in image feature data and use this information to define a new measure, which we call the Skew Inception Distance (SID). We prove that SID is a pseudometric on probability distributions, show how it extends FID, and present a practical method for its computation. Our numerical experiments support that SID either tracks with FID or, in some cases, aligns more closely with human perception when evaluating image features of ImageNet data. Our work also shows that principal component analysis can be used to speed up the computation time of both FID and SID. Although we focus on using SID on image features for GAN evaluation, SID is applicable much more generally, including for the evaluation of other generative models.
title Using Skew to Assess the Quality of GAN-generated Image Features
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2310.20636