Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

LaLaLoc: Latent Layout Localisation in Dynamic, Unvisited Environments

About

We present LaLaLoc to localise in environments without the need for prior visitation, and in a manner that is robust to large changes in scene appearance, such as a full rearrangement of furniture. Specifically, LaLaLoc performs localisation through latent representations of room layout. LaLaLoc learns a rich embedding space shared between RGB panoramas and layouts inferred from a known floor plan that encodes the structural similarity between locations. Further, LaLaLoc introduces direct, cross-modal pose optimisation in its latent space. Thus, LaLaLoc enables fine-grained pose estimation in a scene without the need for prior visitation, as well as being robust to dynamics, such as a change in furniture configuration. We show that in a domestic environment LaLaLoc is able to accurately localise a single RGB panorama image to within 8.3cm, given only a floor plan as a prior.

Henry Howard-Jenkins, Jose-Raul Ruiz-Sarmiento, Victor Adrian Prisacariu• 2021

Related benchmarks

TaskDatasetResultRank
Panorama image-to-map localizationZInD
Median Terr (<1m) [cm]10.65
6
Panorama image-to-map localizationStructured3D Furnishing-Level: Full
Median Terr (<1m) [cm]6.83
6
Floorplan LocalizationStructured3D 69
Acc (0.1m, 5°)91
5
Showing 3 of 3 rows

Other info

Follow for update