Nighttime Vehicle Detection for Intelligent Headlight Control

  • Authors:
  • Antonio López;Jörg Hilgenstock;Andreas Busse;Ramón Baldrich;Felipe Lumbreras;Joan Serrat

  • Affiliations:
  • Computer Vision Center and Computer Science Dept., Auton. Univ. of Barcelona,;Group Research, Volkswagen AG,;Business Team Surround Sensing, Carmeq GmbH,;Computer Vision Center and Computer Science Dept., Auton. Univ. of Barcelona,;Computer Vision Center and Computer Science Dept., Auton. Univ. of Barcelona,;Computer Vision Center and Computer Science Dept., Auton. Univ. of Barcelona,

  • Venue:
  • ACIVS '08 Proceedings of the 10th International Conference on Advanced Concepts for Intelligent Vision Systems
  • Year:
  • 2008

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Abstract

A good visibility of the road ahead is a major issue for safe nighttime driving. However, high beams are sparsely used because drivers are afraid of dazzling others. Thus, the intelligent automatic control of vehicles' headlight is of great relevance. It requires the detection of oncoming and preceding vehicles up to such a distance that only camera based approaches are reliable. At nighttime, detecting vehicles using a camera requires to identify their head or tail lights. The main challenge of this approach is to distinguish these lights from reflections due to infrastructure elements. In this paper we confront such a challenge by using a novel image sensor also suitable for other driver assistance applications. Different appearance features obtained from that sensor are used as input to a novel classifier---based module which, for each detected target, yields a degree of resemblance to a vehicle light. This resemblance is integrated in time using a novel temporal coherence analysis which allows to react in one single frame for targets that are clear vehicle lights, or in only a few frames for those whose type is more difficult to discern.