Litcius/Paper detail

Self-Supervised Scale Recovery for Monocular Depth and Egomotion Estimation

Brandon Wagstaff, Jonathan Kelly

20212021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)30 citationsDOIOpen Access PDF

Abstract

The self-supervised loss formulation for jointly training depth and egomotion neural networks with monocular images is well studied and has demonstrated state-of-the-art accuracy. One of the main limitations of this approach, however, is that the depth and egomotion estimates are only determined up to an unknown scale. In this paper, we present a novel scale recovery loss that enforces consistency between a known camera height and the estimated camera height, generating metric (scaled) depth and egomotion predictions. We show that our proposed method is competitive with other scale recovery techniques that require more information. Further, we demonstrate that our method facilitates network retraining within new environments, whereas other scale-resolving approaches are incapable of doing so. Notably, our egomotion network is able to produce more accurate estimates than a similar method which recovers scale at test time only.

Topics & Concepts

Scale (ratio)MonocularArtificial intelligenceMetric (unit)Computer scienceConsistency (knowledge bases)Computer visionRetrainingPattern recognition (psychology)Artificial neural networkGeographyOperations managementCartographyInternational tradeEconomicsBusinessAdvanced Vision and ImagingOptical measurement and interference techniquesImage Processing Techniques and Applications
Self-Supervised Scale Recovery for Monocular Depth and Egomotion Estimation | Litcius