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Evaluating Semantic Variation in Text-to-Image Synthesis: A Causal Perspective

Authors :
Zhu, Xiangru
Sun, Penglei
Song, Yaoxian
Xiao, Yanghua
Li, Zhixu
Wang, Chengyu
Huang, Jun
Yang, Bei
Xu, Xiaoxiao
Publication Year :
2024

Abstract

Accurate interpretation and visualization of human instructions are crucial for text-to-image (T2I) synthesis. However, current models struggle to capture semantic variations from word order changes, and existing evaluations, relying on indirect metrics like text-image similarity, fail to reliably assess these challenges. This often obscures poor performance on complex or uncommon linguistic patterns by the focus on frequent word combinations. To address these deficiencies, we propose a novel metric called SemVarEffect and a benchmark named SemVarBench, designed to evaluate the causality between semantic variations in inputs and outputs in T2I synthesis. Semantic variations are achieved through two types of linguistic permutations, while avoiding easily predictable literal variations. Experiments reveal that the CogView-3-Plus and Ideogram 2 performed the best, achieving a score of 0.2/1. Semantic variations in object relations are less understood than attributes, scoring 0.07/1 compared to 0.17-0.19/1. We found that cross-modal alignment in UNet or Transformers plays a crucial role in handling semantic variations, a factor previously overlooked by a focus on textual encoders. Our work establishes an effective evaluation framework that advances the T2I synthesis community's exploration of human instruction understanding. Our benchmark and code are available at https://github.com/zhuxiangru/SemVarBench .<br />Comment: The only change in the current version update is the replacement of the template with a more precise one

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.10291
Document Type :
Working Paper