Semantic signatures for large-scale visual localization

被引:0
|
作者
Li Weng
Valérie Gouet-Brunet
Bahman Soheilian
机构
[1] Hangzhou Dianzi University,Department of Automation (Artificial Intelligence)
[2] Univ. Gustave Eiffel,LaSTIG Lab.
[3] ENSG,undefined
[4] IGN,undefined
来源
关键词
Database search; Information retrieval; Visual localization; Semantic feature; Urban computing;
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暂无
中图分类号
学科分类号
摘要
Visual localization is a useful alternative to standard localization techniques. It works by utilizing cameras. In a typical scenario, features are extracted from captured images and compared with geo-referenced databases. Location information is then inferred from the matching results. Conventional schemes mainly use low-level visual features. These approaches offer good accuracy but suffer from scalability issues. In order to assist localization in large urban areas, this work explores a different path by utilizing high-level semantic information. It is found that object information in a street view can facilitate localization. A novel descriptor scheme called “semantic signature” is proposed to summarize this information. A semantic signature consists of type and angle information of visible objects at a spatial location. Several metrics and protocols are proposed for signature comparison and retrieval. They illustrate different trade-offs between accuracy and complexity. Extensive simulation results confirm the potential of the proposed scheme in large-scale applications. This paper is an extended version of a conference paper in CBMI’18. A more efficient retrieval protocol is presented with additional experiment results.
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页码:22347 / 22372
页数:25
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