SOTAVerified

Learning to Align Semantic Segmentation and 2.5D Maps for Geolocalization

2017-07-01CVPR 2017Unverified0· sign in to hype

Anil Armagan, Martin Hirzer, Peter M. Roth, Vincent Lepetit

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

We present an efficient method for geolocalization in urban environments starting from a coarse estimate of the location provided by a GPS and using a simple untextured 2.5D model of the surrounding buildings. Our key contribution is a novel efficient and robust method to optimize the pose: We train a Deep Network to predict the best direction to improve a pose estimate, given a semantic segmentation of the input image and a rendering of the buildings from this estimate. We then iteratively apply this CNN until converging to a good pose. This approach avoids the use of reference images of the surroundings, which are difficult to acquire and match, while 2.5D models are broadly available. We can therefore apply it to places unseen during training.

Tasks

Reproductions