| Literature DB >> 26824080 |
Dragan Ahmetovic1, Roberto Manduchi2, James M Coughlan3, Sergio Mascetti1.
Abstract
In this paper we propose a computer vision-based technique that mines existing spatial image databases for discovery of zebra crosswalks in urban settings. Knowing the location of crosswalks is critical for a blind person planning a trip that includes street crossing. By augmenting existing spatial databases (such as Google Maps or OpenStreetMap) with this information, a blind traveler may make more informed routing decisions, resulting in greater safety during independent travel. Our algorithm first searches for zebra crosswalks in satellite images; all candidates thus found are validated against spatially registered Google Street View images. This cascaded approach enables fast and reliable discovery and localization of zebra crosswalks in large image datasets. While fully automatic, our algorithm could also be complemented by a final crowdsourcing validation stage for increased accuracy.Entities:
Year: 2015 PMID: 26824080 PMCID: PMC4725710
Source DB: PubMed Journal: ASSETS