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Issue No.06 - November/December (2009 vol.24)
pp: 62-65
Zhiheng Li , Tsinghua University
Li Li , Tsinghua University
Yi Zhang , Tsinghua University
ABSTRACT
<p>Visual sensing plays an essential role in intelligent vehicles. With the aid of visual sensors, driver assistance systems can alert the driver to dangerous situations or actions (such as swerving out of the lane or disregarding traffic signs or lights), or even independently take control of the vehicle. Future directions for research in this field include studying vision and motion in an integrated way; adapting vision to changes in road, lighting, and weather conditions; sharing data among vehicles and infrastructures; and testing vision on benchmark data sets.</p>
INDEX TERMS
Intelligent Transportation Systems, autonomous vehicles, vision sensing, vehicular vision systems, road condition identification, weather condition sensing, vision-testing benchmarks
CITATION
Zhiheng Li, Li Li, Yi Zhang, "IVS 09: Future Research in Vehicle Vision Systems", IEEE Intelligent Systems, vol.24, no. 6, pp. 62-65, November/December 2009, doi:10.1109/MIS.2009.119
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