CVMay 21, 2024

EmoEdit: Evoking Emotions through Image Manipulation

arXiv:2405.12661v327 citationsh-index: 23CVPR
Originality Incremental advance
AI Analysis

This addresses the challenge of precisely manipulating images to elicit emotional responses for applications in media and design, representing an incremental advance over existing color and style adjustments.

The paper tackles the problem of Affective Image Manipulation (AIM) by introducing EmoEdit, which incorporates content modifications to evoke specific emotions, achieving superior performance compared to state-of-the-art methods.

Affective Image Manipulation (AIM) seeks to modify user-provided images to evoke specific emotional responses. This task is inherently complex due to its twofold objective: significantly evoking the intended emotion, while preserving the original image composition. Existing AIM methods primarily adjust color and style, often failing to elicit precise and profound emotional shifts. Drawing on psychological insights, we introduce EmoEdit, which extends AIM by incorporating content modifications to enhance emotional impact. Specifically, we first construct EmoEditSet, a large-scale AIM dataset comprising 40,120 paired data through emotion attribution and data construction. To make existing generative models emotion-aware, we design the Emotion adapter and train it using EmoEditSet. We further propose an instruction loss to capture the semantic variations in data pairs. Our method is evaluated both qualitatively and quantitatively, demonstrating superior performance compared to existing state-of-the-art techniques. Additionally, we showcase the portability of our Emotion adapter to other diffusion-based models, enhancing their emotion knowledge with diverse semantics.

Foundations

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