FisheyeMODNet: Moving Object Detection on Surround-view Cameras for Autonomous Driving

Marie Yahiaoui, Hazem Rashed, Letizia Mariotti, Ganesh Sistu, Ian Clancy, Lucie Yahiaoui, Senthil Yogamani

Research output: Contribution to conferencePaperpeer-review

Abstract

Moving Object Detection (MOD) is an important task for achieving robust autonomous driving. An autonomous vehicle has to estimate collision risk with other interacting objects in the environment and calculate an optional trajectory. Collision risk is typically higher for moving objects than static ones due to the need to estimate the future states and poses of the objects for decision making. This is particularly important for near-range objects around the vehicle which are typically detected by a fisheye surroundview system that captures a 360± view of the scene. In this work, we propose a CNN architecture for moving object detection using fisheye images that were captured in autonomous driving environment. As motion geometry is highly non-linear and unique for fisheye cameras, we will make an improved version of the current dataset public to encourage further research. To target embedded deployment, we design a lightweight encoder sharing weights across sequential images. The proposed network runs at 15 fps using Jetston Nvidia TX2 embedded GPU at accuracy of 40% IoU and 69.5% mIoU.
Original languageEnglish
DOIs
Publication statusPublished - 1 Jan 2019
Externally publishedYes
EventIMVIP 2019: Irish Machine Vision & Image Processing - Technological University Dublin, Dublin, Ireland
Duration: 28 Aug 201930 Aug 2019

Conference

ConferenceIMVIP 2019: Irish Machine Vision & Image Processing
Country/TerritoryIreland
CityDublin
Period28/08/1930/08/19

Keywords

  • Moving Object Detection
  • autonomous driving
  • collision risk
  • fisheye surroundview system
  • CNN architecture
  • fisheye images
  • embedded deployment
  • lightweight encoder

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