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From stixels to asteroids: towards a collision warning system using stereo vision

Authors :
Willem P. Sanberg
Gijs Dubbelman
Peter H.N. de With
Mobile Perception Systems Lab
Video Coding & Architectures
Source :
IS&T Electronic Imaging: Autonomous Vehicles and Machines, IS&T Electronic Imaging, Electronic Imaging
Publication Year :
2019
Publisher :
Society for Imaging Science and Technology (IS&T), 2019.

Abstract

This paper explores the use of stixels in a probabilistic stereo vision-based collision-warning system that can be part of an ADAS for intelligent vehicles. In most current systems, collision warnings are based on radar or on monocular vision using pattern recognition (and ultra-sound for park assist). Since detecting collisions is such a core functionality of intelligent vehicles, redundancy is key. Therefore, we explore the use of stereo vision for reliable collision prediction. Our algorithm consists of a Bayesian histogram filter that provides the probability of collision for multiple interception regions and angles towards the vehicle. This could additionally be fused with other sources of information in larger systems. Our algorithm builds upon the disparity Stixel World that has been developed for efficient automotive vision applications. Combined with image flow and uncertainty modeling, our system samples and propagates asteroids, which are dynamic particles that can be utilized for collision prediction. At best, our independent system detects all 31 simulated collisions (2 false warnings), while this setting generates 12 false warnings on the real-world data.

Details

Language :
English
Database :
OpenAIRE
Journal :
IS&T Electronic Imaging: Autonomous Vehicles and Machines, IS&T Electronic Imaging, Electronic Imaging
Accession number :
edsair.doi.dedup.....d7acfb66d67264dfeee0c29afaf0cb99