ChangeQuery: Advancing Remote Sensing Change Analysis for Natural and Human-Induced Disasters from Visual Detection to Semantic Understanding

Multimodal Optical + SAR instruction-following framework for all-weather disaster assessment.

Dongwei Sun, Jing Yao (Senior Member, IEEE), Kan Wei, Xiangyong Cao, Chen Wu (Member, IEEE), Zhenghui Zhao, Pedram Ghamisi (Senior Member, IEEE), Jun Zhou (Fellow, IEEE), Jon Atli Benediktsson (Life Fellow, IEEE) | Xi'an Jiaotong University

Abstract

Rapid situational awareness is critical in post-disaster response. While remote sensing damage assessment is evolving from pixel-level change detection to high-level semantic analysis, existing vision-language methodologies still struggle to provide actionable intelligence for complex strategic queries. They remain severely constrained by unimodal optical dependence, a prevailing bias towards natural disasters, and a fundamental lack of grounded interactivity. To address these limitations, we present ChangeQuery, a unified multimodal framework designed for comprehensive, all-weather disaster situation awareness. To overcome modality constraints and scenario biases, we construct the Disaster-Induced Change Query (DICQ) dataset, a large-scale benchmark coupling pre-event optical semantics with post-event SAR structural features across a balanced distribution of natural catastrophes and armed conflicts. Furthermore, to provide the high-quality supervision required for interactive reasoning, we propose a novel Automated Semantic Annotation Pipeline. Adhering to a "statistics-first, generation-later" paradigm, this engine automatically transforms raw segmentation masks into grounded, hierarchical instruction sets, effectively equipping the model with fine-grained spatial and quantitative awareness. Trained on this structured data, the ChangeQuery architecture operates as an interactive disaster analyst. It supports multi-task reasoning driven by diverse user queries, delivering precise damage quantification, region-specific descriptions, and holistic post-disaster summaries. Extensive experiments demonstrate that ChangeQuery establishes a new state-of-the-art, providing a robust and interpretable solution for complex disaster monitoring.

Optical + SAR fusion for all-weather response
Instruction-following VLM for structured change insights
DICQ dataset covering natural & man-made disasters

Demo Video

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Figures

Overview of ChangeQuery pipeline
Overview of ChangeQuery pipeline.
DICQ dataset overview
DICQ coverage across disasters.
Structured annotation example
Structured annotation example.
Dataset visualization
Dataset visualization snapshots.
Dataset statistics
Statistics vs. other RS datasets.
DICQ statistics
Event split and modality mix.
Data auto pipeline
Automated data pipeline.
ChangeQuery framework
Model framework design.
Qualitative results
Qualitative results across disasters.

BibTeX

@article{sunchangequery,
  title={ChangeQuery: Advancing Natural and Human-induced Disaster Change Analysis from Visual Detection to Semantic Understanding},
  author={Dongwei Sun and Jing Yao and Kan Wei and Xiangyong Cao and Chen Wu and Zhenghui Zhao and Pedram Ghamisi and Jun Zhou and Jon Atli Benediktsson},
  journal={Conference/Journal Name},
  year={2026}
}