Litcius/Paper detail

Mapping 3D visibility in an urban street environment from mobile LiDAR point clouds

Yi Zhao, Bin Wu, Jianping Wu, Song Shu, Handong Liang, Min Liu, Vladimir Badenko, Alexander Fedotov, Shenjun Yao, Bailang Yu

2020GIScience & Remote Sensing47 citationsDOI

Abstract

Visibility determination is a key requirement in a wide range of national and urban applications, such as national security, landscape management, and urban design. Mobile LiDAR point clouds can depict the urban built environment with a high level of details and accuracy. However, few three-dimensional visibility approaches have been developed for the street-level point-cloud data. Accordingly, an approach based on mobile LiDAR point clouds has been developed to map the three-dimensional visibility at the street level. The method consists of five steps: voxelization of point-cloud data, construction of lines-of-sight, construction of sectors of sight, construction of three-dimensional visible space, and calculation of volume index. The proposed approach is able to automatically measure the volume of visible space and openness at any viewpoint along a street. This approach has been applied to three study areas. The results indicated that the proposed approach enables accurate simulation of visible space as well as high-resolution (1 m × 1 m) mapping of the visible volume index. The proposed approach can make a contribution to the improvement of urban planning and design processes that aim at developing more sustainable built environments.

Topics & Concepts

VisibilityLidarPoint cloudRemote sensingMobile mappingComputer scienceGeographyComputer visionMeteorologyRemote Sensing and LiDAR Applications3D Surveying and Cultural HeritageImpact of Light on Environment and Health