DASC: Towards A Road Damage-Aware Social-Media-Driven Car Sensing Framework for Disaster Response Applications
Md Tahmid Rashid, Daniel (Yue) Zhang, Dong Wang

TL;DR
DASC is a hybrid framework that combines social media signals and vehicular sensor networks to improve disaster response by accurately detecting and guiding vehicles to damaged roads, overcoming social sensing unreliability.
Contribution
The paper introduces DASC, a novel hybrid social-car sensing system that integrates social media and vehicular networks using game theory, feedback control, and MDP to enhance disaster response.
Findings
DASC outperforms VSN-only solutions in detection accuracy.
DASC effectively guides vehicles to damage sites with high efficiency.
The framework demonstrates robustness in real-world disaster scenarios.
Abstract
While vehicular sensor networks (VSNs) have earned the stature of a mobile sensing paradigm utilizing sensors built into cars, they have limited sensing scopes since car drivers only opportunistically discover new events. Conversely, social sensing is emerging as a new sensing paradigm where measurements about the physical world are collected from humans. In contrast to VSNs, social sensing is more pervasive, but one of its key limitations lies in its inconsistent reliability stemming from the data contributed by unreliable human sensors. In this paper, we present DASC, a road Damage-Aware Social-media-driven Car sensing framework that exploits the collective power of social sensing and VSNs for reliable disaster response applications. However, integrating VSNs with social sensing introduces a new set of challenges: i) How to leverage noisy and unreliable social signals to route the…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing · Human Mobility and Location-Based Analysis · Evacuation and Crowd Dynamics
