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Main Authors: Koushik, Girish A., Nazarieh, Fatemeh, Birch, Katherine, Qian, Shenbin, Kanojia, Diptesh
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.18569
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author Koushik, Girish A.
Nazarieh, Fatemeh
Birch, Katherine
Qian, Shenbin
Kanojia, Diptesh
author_facet Koushik, Girish A.
Nazarieh, Fatemeh
Birch, Katherine
Qian, Shenbin
Kanojia, Diptesh
contents Visual metaphor generation is a challenging task that aims to generate an image given an input text metaphor. Inherently, it needs language understanding to bind a source concept with a target concept, in a way that preserves meaning while ensuring visual coherence. We propose a self-evaluating visual metaphor generation framework that focuses on metaphor alignment. Our self-evaluation approach combines existing metrics with our newly proposed metaphor decomposition score and a meaning alignment (MA) metric. Within this setup, we explore two novel approaches: a training-free pipeline that explicitly decomposes prompts into source-target-meaning (S-T-M) mapping for image synthesis, and a complementary training-based pipeline that improves alignment using our proposed self-evaluation reward schema, without any large-scale retraining. On the held-out test set, the training-free approach surpasses strong closed baselines (GPT-4o, Imagen) on decomposition, CLIP, and MA scores, with the training-based approach close behind. We evaluate our framework output using a user-facing study, and observed that participants preferred GPT-4o overall, while our training-free pipeline led open-source methods and edged Imagen on abstract metaphors. Our analyses show S-T-M prompting helps longer or more abstract metaphors, with closed models excelling on short, concrete cases; we also observe sensitivity to sampler settings. Overall, structured prompting and lightweight RL perform metaphor alignment well under modest compute, and remaining gaps to human preference appear driven by aesthetics and sampling.
format Preprint
id arxiv_https___arxiv_org_abs_2508_18569
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle The Mind's Eye: A Multi-Faceted Reward Framework for Guiding Visual Metaphor Generation
Koushik, Girish A.
Nazarieh, Fatemeh
Birch, Katherine
Qian, Shenbin
Kanojia, Diptesh
Computation and Language
Computer Vision and Pattern Recognition
Visual metaphor generation is a challenging task that aims to generate an image given an input text metaphor. Inherently, it needs language understanding to bind a source concept with a target concept, in a way that preserves meaning while ensuring visual coherence. We propose a self-evaluating visual metaphor generation framework that focuses on metaphor alignment. Our self-evaluation approach combines existing metrics with our newly proposed metaphor decomposition score and a meaning alignment (MA) metric. Within this setup, we explore two novel approaches: a training-free pipeline that explicitly decomposes prompts into source-target-meaning (S-T-M) mapping for image synthesis, and a complementary training-based pipeline that improves alignment using our proposed self-evaluation reward schema, without any large-scale retraining. On the held-out test set, the training-free approach surpasses strong closed baselines (GPT-4o, Imagen) on decomposition, CLIP, and MA scores, with the training-based approach close behind. We evaluate our framework output using a user-facing study, and observed that participants preferred GPT-4o overall, while our training-free pipeline led open-source methods and edged Imagen on abstract metaphors. Our analyses show S-T-M prompting helps longer or more abstract metaphors, with closed models excelling on short, concrete cases; we also observe sensitivity to sampler settings. Overall, structured prompting and lightweight RL perform metaphor alignment well under modest compute, and remaining gaps to human preference appear driven by aesthetics and sampling.
title The Mind's Eye: A Multi-Faceted Reward Framework for Guiding Visual Metaphor Generation
topic Computation and Language
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.18569