Semantic Match Consistency for Long-Term Visual Localization

  • Carl Toft ,
  • Erik Stenborg ,
  • Lars Hammarstrand ,
  • Lucas Brynte ,
  • ,
  • Torsten Sattler ,
  • Fredrik Kahl

2018 European Conference on Computer Vision |

Publication

Robust and accurate visual localization across large appearance variations due to changes in time of day, seasons, or changes of the environment is a challenging problem which is of importance to application areas such as navigation of autonomous robots. Traditional feature-based methods often struggle in these conditions due to the significant number of erroneous matches between the image and the 3D model. In this paper, we present a method for scoring the individual correspondences by exploiting semantic information about the query image and the scene. In this way, erroneous correspondences tend to get a low semantic consistency score, whereas correct correspondences tend to get a high score. By incorporating this information in a standard localization pipeline, we show that the localization performance can be significantly improved compared to the state-of-the-art, as evaluated on two challenging long-term localization benchmarks.