LightViz: Autonomous Light-field Surveying and Mapping for Distributed Light Pollution Monitoring
Sheng-En Huang, Kazi Farha Farzana Suhi, Md Jahidul Islam

TL;DR
LightViz is an interactive software platform that automates high-resolution light pollution mapping, simulation, and policy support, validated through field data collection and case studies, advancing sustainable light pollution management.
Contribution
This work introduces LightViz, a novel platform that automates light-field data collection, simulation, and visualization for high-resolution light pollution monitoring and policy formulation.
Findings
High-resolution light-field maps generated in real-time.
Effective simulation of light sources and attenuation models.
Supported targeted light pollution mitigation policies.
Abstract
Existing technologies for distributed light-field mapping and light pollution monitoring (LPM) rely on either remote satellite imagery or manual light surveying with single-point sensors such as SQMs (sky quality meters). These modalities offer low-resolution data that are not informative for dense light-field mapping, pollutant factor identification, or sustainable policy implementation. In this work, we propose LightViz -- an interactive software interface to survey, simulate, and visualize light pollution maps in real-time. As opposed to manual error-prone methods, LightViz (i) automates the light-field data collection and mapping processes; (ii) provides a platform to simulate various light sources and intensity attenuation models; and (iii) facilitates effective policy identification for conservation. To validate the end-to-end computational pipeline, we design a distributed…
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Taxonomy
TopicsImpact of Light on Environment and Health · Remote Sensing in Agriculture
MethodsLocal Prior Matching
