FisheyeDistanceNet: Self-Supervised Scale-Aware Distance Estimation Using Monocular Fisheye Camera for Autonomous Driving

Varun Ravi Kumar1, Sandesh Athni Hiremath2, Markus Bach1, Stefan Milz1, Christian Witt1, Clément Pinard3, Senthil Yogamani4, Patrick Mäder5

  • 1Valeo
  • 2Valeo Schalter und Sensoren
  • 3Ensta Paris
  • 4Valeo Vision Systems
  • 5Technische Universität Ilmenau

Details

09:45 - 10:00 | Mon 1 Jun | Room T14 | MoA14.3

Session: Omnidirectional Vision

Abstract

Fisheye cameras are commonly used in applications like autonomous driving and surveillance to provide a large field of view greater tha 180degrees. However, they come at the cost of strong non-linear distortion which require more complex algorithms. In this paper, we explore Euclidean distance estimation on fisheye cameras for automotive scenes. Obtaining accurate and dense depth supervision is difficult in practice, but self-supervised learning approaches show promising results and could potentially overcome the problem. We present a novel self-supervised scale-aware framework for learning Euclidean distance and ego-motion from raw monocular fisheye videos without applying rectification. While it is possible to perform piece-wise linear approximation of fisheye projection surface and apply standard rectilinear models, it has its own set of issues like re-sampling distortion and discontinuities in transition region. To encourage further research in this area, we will release this dataset as part of our WoodScape dataset. We further evaluated the proposed algorithm on the KITTI dataset and obtained state-of-the-art results comparable to other self-supervised monocular methods.