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A Personalized Lane-Changing Model for Advanced Driver Assistance System Based on Deep Learning and Spatial-Temporal Modeling

  • Journal Article
  • 09-07-02-0009
  • ISSN: 2327-5626, e-ISSN: 2327-5634
Published November 14, 2019 by SAE International in United States
A Personalized Lane-Changing Model for Advanced Driver Assistance System Based on Deep Learning and Spatial-Temporal Modeling
Sector:
Citation: Gao, J., Yi, J., Zhu, H., and Murphey, Y., "A Personalized Lane-Changing Model for Advanced Driver Assistance System Based on Deep Learning and Spatial-Temporal Modeling," SAE Int. J. Trans. Safety 7(2):163-174, 2019.
Language: English

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