CVMay 24, 2025

Affective Image Editing: Shaping Emotional Factors via Text Descriptions

arXiv:2505.18699v18 citationsh-index: 14Int J Comput Vis
Originality Incremental advance
AI Analysis

This work addresses the limited focus on emotional understanding in image editing for users, representing an incremental advancement in the field.

The paper tackles the problem of text-driven image editing that incorporates users' emotional requests by introducing AIEdiT, which adaptively shapes emotional factors across images, and it demonstrates superior performance in reflecting these requests through extensive experiments.

In daily life, images as common affective stimuli have widespread applications. Despite significant progress in text-driven image editing, there is limited work focusing on understanding users' emotional requests. In this paper, we introduce AIEdiT for Affective Image Editing using Text descriptions, which evokes specific emotions by adaptively shaping multiple emotional factors across the entire images. To represent universal emotional priors, we build the continuous emotional spectrum and extract nuanced emotional requests. To manipulate emotional factors, we design the emotional mapper to translate visually-abstract emotional requests to visually-concrete semantic representations. To ensure that editing results evoke specific emotions, we introduce an MLLM to supervise the model training. During inference, we strategically distort visual elements and subsequently shape corresponding emotional factors to edit images according to users' instructions. Additionally, we introduce a large-scale dataset that includes the emotion-aligned text and image pair set for training and evaluation. Extensive experiments demonstrate that AIEdiT achieves superior performance, effectively reflecting users' emotional requests.

Foundations

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