Did It Change? Learning to Detect Point-Of-Interest Changes for Proactive Map Updates

CVPR 2019 Jerome Revaud Minhyeok Heo Rafael S. Rezende Chanmi You Seong-Gyun Jeong

Maps are an increasingly important tool in our daily lives, yet their rich semantic content still largely depends on manual input. Motivated by the broad availability of geo-tagged street-view images, we propose a new task aiming to make the map update process more proactive... (read more)

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