Proximate sensing: Inferring what-is-where from georeferenced photo collections

Author(s):  
Daniel Leung ◽  
Shawn Newsam
Computer ◽  
2010 ◽  
Vol 43 (6) ◽  
pp. 48-53 ◽  
Author(s):  
Michael Goesele ◽  
Jens Ackermann ◽  
Simon Fuhrmann ◽  
Ronny Klowsky ◽  
Fabian Langguth ◽  
...  

2018 ◽  
pp. 735-753
Author(s):  
Eugene Borovikov ◽  
Szilard Vajda ◽  
Michael Gill

Despite the many advances in face recognition technology, practical face detection and matching for unconstrained images remain challenging. A real-world Face Image Retrieval (FIR) system is described in this paper. It is based on optimally weighted image descriptor ensemble utilized in single-image-per-person (SIPP) approach that works with large unconstrained digital photo collections. The described visual search can be deployed in many applications, e.g. person location in post-disaster scenarios, helping families reunite quicker. It provides efficient means for face detection, matching and annotation, working with images of variable quality, requiring no time-consuming training, yet showing commercial performance levels.


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