Enhancing digital road map with lane details extracted from large-scale stereo aerial imagery using object-oriented image analysis


Autoria(s): Jin, Hang; Li, Zhengrong; Feng, Yanming
Data(s)

01/10/2009

Resumo

Precise, up-to-date and increasingly detailed road maps are crucial for various advanced road applications, such as lane-level vehicle navigation, and advanced driver assistant systems. With the very high resolution (VHR) imagery from digital airborne sources, it will greatly facilitate the data acquisition, data collection and updates if the road details can be automatically extracted from the aerial images. In this paper, we proposed an effective approach to detect road lane information from aerial images with employment of the object-oriented image analysis method. Our proposed algorithm starts with constructing the DSM and true orthophotos from the stereo images. The road lane details are detected using an object-oriented rule based image classification approach. Due to the affection of other objects with similar spectral and geometrical attributes, the extracted road lanes are filtered with the road surface obtained by a progressive two-class decision classifier. The generated road network is evaluated using the datasets provided by Queensland department of Main Roads. The evaluation shows completeness values that range between 76% and 98% and correctness values that range between 82% and 97%.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/30111/

Relação

http://eprints.qut.edu.au/30111/1/c30111.pdf

http://www.ssc2009.com/

Jin, Hang, Li, Zhengrong, & Feng, Yanming (2009) Enhancing digital road map with lane details extracted from large-scale stereo aerial imagery using object-oriented image analysis. In Proceedings of Surveying and Spatial Sciences Institute Biennial International Conference, Adelaide Convention Centre, Adelaide, South Australia.

Direitos

Copyright 2009 [please consult the authors]

Fonte

Faculty of Science and Technology

Palavras-Chave #090905 Photogrammetry and Remote Sensing #090903 Geospatial Information Systems
Tipo

Conference Paper