TA-Dash: An Interactive Dashboard for Spatial-Temporal Traffic Analytics -- Demo Paper
July 31, 2020 Β· Declared Dead Β· π SIGSPATIAL/GIS
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Authors
Nicolas Tempelmeier, Anzumana Sander, Udo Feuerhake, Martin LΓΆhdefink, Elena Demidova
arXiv ID
2008.00002
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.SI
Citations
2
Venue
SIGSPATIAL/GIS
Last Checked
4 months ago
Abstract
In recent years, a large number of research efforts aimed at the development of machine learning models to predict complex spatial-temporal mobility patterns and their impact on road traffic and infrastructure. However, the utility of these models is often diminished due to the lack of accessible user interfaces to view and analyse prediction results. In this paper, we present the Traffic Analytics Dashboard ( TA-Dash), an interactive dashboard that enables the visualisation of complex spatial-temporal urban traffic patterns. We demonstrate the utility of TA-Dash at the example of two recently proposed spatial-temporal models for urban traffic and urban road infrastructure analysis. In particular, the use cases include the analysis, prediction and visualisation of the impact of planned special events on urban road traffic as well as the analysis and visualisation of structural dependencies within urban road networks. The lightweight TA-Dash dashboard aims to address non-expert users involved in urban traffic management and mobility service planning. The TA-Dash builds on a flexible layer-based architecture that is easily adaptable to the visualisation of new models.
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