Litcius/Paper detail

On the Uncertainty of Self-Supervised Monocular Depth Estimation

Matteo Poggi, Filippo Aleotti, Fabio Tosi, Stefano Mattoccia

202018 citationsDOIOpen Access PDF

Abstract

Self-supervised paradigms for monocular depth estimation are very appealing since they do not require ground truth annotations at all. Despite the astonishing results yielded by such methodologies, learning to reason about the uncertainty of the estimated depth maps is of paramount importance for practical applications, yet uncharted in the literature. Purposely, we explore for the first time how to estimate the uncertainty for this task and how this affects depth accuracy, proposing a novel peculiar technique specifically designed for self-supervised approaches. On the standard KITTI dataset, we exhaustively assess the performance of each method with different self-supervised paradigms. Such evaluation highlights that our proposal i) always improves depth accuracy significantly and ii) yields state-of-the-art results concerning uncertainty estimation when training on sequences and competitive results uniquely deploying stereo pairs.

Topics & Concepts

MonocularComputer scienceGround truthArtificial intelligenceEstimationTask (project management)Machine learningSupervised learningEngineeringArtificial neural networkSystems engineeringAdvanced Vision and ImagingImage Processing Techniques and ApplicationsOptical measurement and interference techniques
On the Uncertainty of Self-Supervised Monocular Depth Estimation | Litcius