ChangeDiff: A Multi-Temporal Change Detection Data Generator with Flexible Text Prompts via Diffusion Model
Qi Zang, Jiayi Yang, Shuang Wang, Dong Zhao, Wenjun Yi, Zhun Zhong

TL;DR
ChangeDiff is a novel diffusion-based data generator for semantic change detection that uses flexible text prompts and layout-to-image synthesis to produce diverse, high-quality change data, reducing reliance on manual annotation.
Contribution
The paper introduces ChangeDiff, a multi-temporal change detection data generator leveraging diffusion models with controllable text prompts and layout synthesis, addressing flexibility and data dependence issues.
Findings
Generated data improves change detection accuracy.
Enhanced temporal continuity and spatial diversity in synthetic data.
Code availability facilitates further research.
Abstract
Data-driven deep learning models have enabled tremendous progress in change detection (CD) with the support of pixel-level annotations. However, collecting diverse data and manually annotating them is costly, laborious, and knowledge-intensive. Existing generative methods for CD data synthesis show competitive potential in addressing this issue but still face the following limitations: 1) difficulty in flexibly controlling change events, 2) dependence on additional data to train the data generators, 3) focus on specific change detection tasks. To this end, this paper focuses on the semantic CD (SCD) task and develops a multi-temporal SCD data generator ChangeDiff by exploring powerful diffusion models. ChangeDiff innovatively generates change data in two steps: first, it uses text prompts and a text-to-layout (T2L) model to create continuous layouts, and then it employs layout-to-image…
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Code & Models
Videos
Taxonomy
TopicsComplex Network Analysis Techniques · Advanced Text Analysis Techniques · Innovation Diffusion and Forecasting
MethodsDiffusion · Focus
