KDV-explorer

Autor: Ye Li, Shivansh Mittal, Pak Lon Ip, Tsz Nam Chan, Weng Hou Tong, Reynold Cheng, Leong Hou U
Rok vydání: 2021
Předmět:
Zdroj: Proceedings of the VLDB Endowment. 14:2655-2658
ISSN: 2150-8097
DOI: 10.14778/3476311.3476312
Popis: Kernel density visualization (KDV) is a commonly used visualization tool for many spatial analysis tasks, including disease outbreak detection, crime hotspot detection, and traffic accident hotspot detection. Although the most popular geographical information systems, e.g., QGIS, and ArcGIS, can also support this operation, these solutions are not scalable to generate a single KDV for datasets with million-scale data points, let alone to support exploratory operations (e.g., zoom in, zoom out, and panning operations) with KDV in near real-time (< 5 sec). In this demonstration, we develop a near real-time visualization system, called KDV-Explorer, that is built on top of our prior study on the efficient kernel density computation. Participants will be invited to conduct some kernel density analysis on three large-scale datasets (up to 1.3 million data points), including the traffic accident dataset, crime dataset and COVID-19 dataset. We will also compare the performance of our solution and the solutions in QGIS and ArcGIS.
Databáze: OpenAIRE