SS-SFR: Synthetic Scenes Spatial Frequency Response on Virtual KITTI and Degraded Automotive Simulations for Object Detection

Daniel Jakab, Alexander Braun, Cathaoir Agnew, Reenu Mohandas, Brian Michael Deegan, Dara Molloy, Enda Ward, Anthony Scanlan, Ciarán Eising

Research output: Contribution to journalConference articlepeer-review

Abstract

Automotive simulation can potentially compensate for a lack of training data in computer vision applications. However, there has been little to no image quality evaluation of automotive simulation and the impact of optical degradations on simulation is little explored. In this work, we investigate Virtual KITTI and the impact of applying variations of Gaussian blur on image sharpness. Furthermore, we consider object detection, a common computer vision application on three different state-of-the-art models, thus allowing us to characterize the relationship between object detection and sharpness. It was found that while image sharpness (MTF50) degrades from an average of 0.245cy/px to approximately 0.119cy/px; object detection performance stays largely robust within 0.58%(Faster RCNN), 1.45%(YOLOF) and 1.93%(DETR) across all respective held-out test sets.

Original languageEnglish
Pages (from-to)110-117
Number of pages8
JournalIET Conference Proceedings
Volume2024
Issue number10
DOIs
Publication statusPublished - 2024
Event26th Irish Machine Vision and Image Processing Conference, IMVIP 2024 - Limerick, Ireland
Duration: 21 Aug 202423 Aug 2024

Keywords

  • Automotive Simulation
  • Gaussian Blur
  • Image Sharpness
  • Modulation Transfer Function(MTF)
  • Object Detection

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