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Main Authors: Gambashidze, Alexander, Sobolev, Konstantin, Kuznetsov, Andrey, Oseledets, Ivan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.19948
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author Gambashidze, Alexander
Sobolev, Konstantin
Kuznetsov, Andrey
Oseledets, Ivan
author_facet Gambashidze, Alexander
Sobolev, Konstantin
Kuznetsov, Andrey
Oseledets, Ivan
contents Can Visual Language Models (VLMs) effectively capture human visual preferences? This work addresses this question by training VLMs to think about preferences at test time, employing reinforcement learning methods inspired by DeepSeek R1 and OpenAI O1. Using datasets such as ImageReward and Human Preference Score v2 (HPSv2), our models achieve accuracies of 64.9% on the ImageReward test set (trained on ImageReward official split) and 65.4% on HPSv2 (trained on approximately 25% of its data). These results match traditional encoder-based models while providing transparent reasoning and enhanced generalization. This approach allows to use not only rich VLM world knowledge, but also its potential to think, yielding interpretable outcomes that help decision-making processes. By demonstrating that human visual preferences reasonable by current VLMs, we introduce efficient soft-reward strategies for image ranking, outperforming simplistic selection or scoring methods. This reasoning capability enables VLMs to rank arbitrary images-regardless of aspect ratio or complexity-thereby potentially amplifying the effectiveness of visual Preference Optimization. By reducing the need for extensive markup while improving reward generalization and explainability, our findings can be a strong mile-stone that will enhance text-to-vision models even further.
format Preprint
id arxiv_https___arxiv_org_abs_2503_19948
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Test-Time Reasoning Through Visual Human Preferences with VLMs and Soft Rewards
Gambashidze, Alexander
Sobolev, Konstantin
Kuznetsov, Andrey
Oseledets, Ivan
Computer Vision and Pattern Recognition
Artificial Intelligence
Can Visual Language Models (VLMs) effectively capture human visual preferences? This work addresses this question by training VLMs to think about preferences at test time, employing reinforcement learning methods inspired by DeepSeek R1 and OpenAI O1. Using datasets such as ImageReward and Human Preference Score v2 (HPSv2), our models achieve accuracies of 64.9% on the ImageReward test set (trained on ImageReward official split) and 65.4% on HPSv2 (trained on approximately 25% of its data). These results match traditional encoder-based models while providing transparent reasoning and enhanced generalization. This approach allows to use not only rich VLM world knowledge, but also its potential to think, yielding interpretable outcomes that help decision-making processes. By demonstrating that human visual preferences reasonable by current VLMs, we introduce efficient soft-reward strategies for image ranking, outperforming simplistic selection or scoring methods. This reasoning capability enables VLMs to rank arbitrary images-regardless of aspect ratio or complexity-thereby potentially amplifying the effectiveness of visual Preference Optimization. By reducing the need for extensive markup while improving reward generalization and explainability, our findings can be a strong mile-stone that will enhance text-to-vision models even further.
title Test-Time Reasoning Through Visual Human Preferences with VLMs and Soft Rewards
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2503.19948