DamageArbiter: A CLIP-Enhanced Multimodal Arbitration Framework for Hurricane Damage Assessment from Street-View Imagery
Yifan Yang, Lei Zou, Wenjing Gong, Kani Fu, Zongrong Li, Siqin Wang, Bing Zhou, Heng Cai, Hao Tian

TL;DR
This paper introduces DamageArbiter, a CLIP-enhanced multimodal framework that improves accuracy, interpretability, and robustness in hurricane damage assessment from street-view images by arbitration of model disagreements.
Contribution
The study presents a novel arbitration framework combining unimodal and multimodal models with CLIP, significantly enhancing damage assessment accuracy and interpretability over traditional models.
Findings
DamageArbiter increased accuracy from 74.33% to 82.79%.
It reduced overconfidence errors in visual models.
The framework improved reliability in ambiguous disaster scenarios.
Abstract
Analyzing street-view imagery with computer vision models for rapid, hyperlocal damage assessment is becoming popular and valuable in emergency response and recovery, but traditional models often act like black boxes, lacking interpretability and reliability. This study proposes a multimodal disagreement-driven Arbitration framework powered by Contrastive Language-Image Pre-training (CLIP) models, DamageArbiter, to improve the accuracy, interpretability, and robustness of damage estimation from street-view imagery. DamageArbiter leverages the complementary strengths of unimodal and multimodal models, employing a lightweight logistic regression meta-classifier to arbitrate cases of disagreement. Using 2,556 post-disaster street-view images, paired with both manually generated and large language model (LLM)-generated text descriptions, we systematically compared the performance of…
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Taxonomy
TopicsPublic Relations and Crisis Communication · Disaster Management and Resilience · Flood Risk Assessment and Management
