Text2Relight: Creative Portrait Relighting with Text Guidance
Junuk Cha, Mengwei Ren, Krishna Kumar Singh, He Zhang, Yannick, Hold-Geoffroy, Seunghyun Yoon, HyunJoon Jung, Jae Shin Yoon, Seungryul Baek

TL;DR
Text2Relight introduces a novel pipeline for portrait relighting guided by text prompts, combining large language models, image generation, and diffusion models to achieve flexible, creative lighting modifications.
Contribution
The paper presents a new data synthesis pipeline and a diffusion-based model for text-guided portrait relighting, addressing the lack of large paired datasets for lighting-specific image editing.
Findings
Successfully generates diverse lighting effects from text prompts.
Achieves realistic relighting of portraits guided by natural language.
Demonstrates generalization to various creative lighting descriptions.
Abstract
We present a lighting-aware image editing pipeline that, given a portrait image and a text prompt, performs single image relighting. Our model modifies the lighting and color of both the foreground and background to align with the provided text description. The unbounded nature in creativeness of a text allows us to describe the lighting of a scene with any sensory features including temperature, emotion, smell, time, and so on. However, the modeling of such mapping between the unbounded text and lighting is extremely challenging due to the lack of dataset where there exists no scalable data that provides large pairs of text and relighting, and therefore, current text-driven image editing models does not generalize to lighting-specific use cases. We overcome this problem by introducing a novel data synthesis pipeline: First, diverse and creative text prompts that describe the scenes…
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Taxonomy
TopicsEducational Games and Gamification
MethodsSparse Evolutionary Training · Diffusion · ALIGN
