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SAMScore: A Semantic Structural Similarity Metric for Image Translation Evaluation

Authors :
Li, Yunxiang
Chen, Meixu
Yang, Wenxuan
Wang, Kai
Ma, Jun
Bovik, Alan C.
Zhang, You
Publication Year :
2023

Abstract

Image translation has wide applications, such as style transfer and modality conversion, usually aiming to generate images having both high degrees of realism and faithfulness. These problems remain difficult, especially when it is important to preserve semantic structures. Traditional image-level similarity metrics are of limited use, since the semantics of an image are high-level, and not strongly governed by pixel-wise faithfulness to an original image. Towards filling this gap, we introduce SAMScore, a generic semantic structural similarity metric for evaluating the faithfulness of image translation models. SAMScore is based on the recent high-performance Segment Anything Model (SAM), which can perform semantic similarity comparisons with standout accuracy. We applied SAMScore on 19 image translation tasks, and found that it is able to outperform all other competitive metrics on all of the tasks. We envision that SAMScore will prove to be a valuable tool that will help to drive the vibrant field of image translation, by allowing for more precise evaluations of new and evolving translation models. The code is available at https://github.com/Kent0n-Li/SAMScore.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.15367
Document Type :
Working Paper