DreamEdit: Subject-driven Image Editing
Tianle Li, Max Ku, Cong Wei, Wenhu Chen

TL;DR
DreamEdit introduces two novel subject-driven image editing tasks, provides a curated dataset, and proposes an iterative method to improve control over subject replacement and addition in images.
Contribution
The paper presents new subject-driven editing tasks, a curated dataset DreamEditBench, and a novel iterative method DreamEditor for improved image editing control.
Findings
Existing models are sensitive to shape and color differences.
Models struggle with blending subjects smoothly into backgrounds.
Performance varies with the difficulty level of the tasks.
Abstract
Subject-driven image generation aims at generating images containing customized subjects, which has recently drawn enormous attention from the research community. However, the previous works cannot precisely control the background and position of the target subject. In this work, we aspire to fill the void and propose two novel subject-driven sub-tasks, i.e., Subject Replacement and Subject Addition. The new tasks are challenging in multiple aspects: replacing a subject with a customized one can change its shape, texture, and color, while adding a target subject to a designated position in a provided scene necessitates a context-aware posture. To conquer these two novel tasks, we first manually curate a new dataset DreamEditBench containing 22 different types of subjects, and 440 source images with different difficulty levels. We plan to host DreamEditBench as a platform and hire…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Multimodal Machine Learning Applications · Visual Attention and Saliency Detection
