This content is not included in your SAE MOBILUS subscription, or you are not logged in.

Road Parameter-Based Driver Assistance System for Safe Driving

Journal Article
12-02-04-0019
ISSN: 2574-0741, e-ISSN: 2574-075X
Published December 17, 2019 by SAE International in United States
Road Parameter-Based Driver Assistance System for Safe Driving
Sector:
Citation: Addanki, S., Sowmya Vasuki, J., and Venkataraman, H., "Road Parameter-Based Driver Assistance System for Safe Driving," SAE Intl. J CAV 2(4):253-262, 2019, https://doi.org/10.4271/12-02-04-0019.
Language: English

References

  1. NSW Center for Road Safety https://roadsafety.transport.nsw.gov.au/speeding/index.html 2019
  2. European Commission https://ec.europa.eu/info/departments/mobility-and-transport_en 2019
  3. https://www.india.gov.in/topics/transport 2019
  4. WHO https://www.who.int/violence_injury_prevention/publications/road_traffic/en/ 2019
  5. Jenkins , A. Remote Sensing Technology for Automotive Safety Microwave Journal 50 12 24 65 2007
  6. https://www.rs-online.com/designspark/lidar-radar-digital-cameras-the-eyes-of-autonomous-vehicles 2019
  7. https://www.autopilotreview.com/lidar-vs-cameras-self-driving-cars/ 2019
  8. Alvarez , J.M. , Gevers , T. , Lecun , Y. , and Lopez , A.M. Road Scene Segmentation from a Single Image European Conference on Computer Vision Firenze, Italy 2012
  9. Oliveira , G.L. , Burgard , W. , and Brox , T. Efficient Deep Models for Monocular Road Segmentation International Conference on Intelligent Robots & Systems Daejeon, South Korea 2016 4885 4891
  10. Lu , H. , Li , B. , Zhu , J. , Li , Y. et al. Wound Intensity Correction and Segmentation with Convolutional Neural Networks Concurrency and Computation: Practice and Experience 29 6 e3927 2017 doi:10.1002/cpe.3927
  11. Steyer , R. 1998
  12. Yingxue , Z. Analysis of the Relation between Highway Horizontal Curve and Traffic Safety International Conference on Measuring Technology and Mechatronics Automation Zhangjiajie, China 3 2009
  13. Momeni , H. Manhattan, KS 2016
  14. Szegedy , C. , Vanhoucke , V. , Ioffe , S. , Shlens , J. , and Wojna , Z. Rethinking the Inception Architecture for Computer Vision IEEE Intern. Conference on Computer Vision and Pattern Recognition Nevada, USA 2016 2818 2826
  15. He , K. , Zhang , X. , Ren , S. , and Sun , J. Deep Residual Learning for Image Recognition IEEE International Conference on Computer Vision and Pattern Recognition Nevada, USA 2016 770 778
  16. Liu , S. and Deng , W. Very Deep Convolutional Neural Network Based Image Classification Using Small Training Sample Size 3rd IAPR Asian Conference on Pattern Recognition Kuala Lumpur, Malaysia 2015 730 734
  17. Anupoju, S. https://theconstructor.org/transportation/classification-of-roads/17470/ 2019
  18. Wikipedia https://en.wikipedia.org/wiki/Indian_road_network 2019
  19. Qin , Z. et al. Study of Vehicle Driving Characteristics and Safety on Different Asphalt Pavements Based on CarSim-MATLAB Co-Simulation DEStech Transactions on Materials Science and Engineering Lancaster, PA 2017 doi:10.12783/dtmse/ictim2017/9903
  20. Sotelo , M.A. , Rodriguez , F.J. , and Magdalena , L. Virtuous: Vision Based Road Transportation for Unmanned Operation on Urban-Like Scenarios IEEE Transactions on Intelligent Transportation Systems 5 2 69 83 2015
  21. Kong , H. , Audibert , J.Y. , and Ponce , J. General Road Detection from a Single Image IEEE Transactions on Image Processing 19 8 2211 2220 2010
  22. Holzmann , F. , Bellino , M. , Siegwart , R. , and Bubb , H. Predictive Estimation of the Road-Tire Friction Coefficient IEEE International Conference on Control Applications Munich, Germany 2006 885 890
  23. Omer , R. and Fu , L. An Automatic Image Recognition System for Winter Road Surface Condition Classification IEEE International Conference on Intelligent Transportation Systems Madeira Island, Portugal 2010 1375 1379
  24. Li , Z. et al. Automated Identification and Extraction of Horizontal Curve Information from Geographic Information System Roadway Maps Journal of the Transportation Research Board 2291 80 92 2012
  25. Boyali , A. , Mita , S. , and John , V. 2018
  26. Buda , M. , Maki , A. , and Mazurowski , M.A. A Systematic Study of the Class Imbalance Problem in Convolutional Neural Networks Computing Research Repository abs/1710.05381 2017
  27. Deng , J. , Dong , W. , Socher , R. , Li , L.J. , Li , K. , and Fei-Fei , L. ImageNet: A Large-Scale Hierarchical Image Database IEEE Intern. Conference on Computer Vision and Pattern Recognition Florida, USA 2009 248 255
  28. Geiger , A. , Lenz , P. , Stiller , C. , and Urtasun , R. Vision Meets Robotics: The KITTI Dataset International Journal of Robotics Research 32 11 1231 1237 2013
  29. Nolte M. , Kister , N. , and Maurer , M. 2018
  30. 2015
  31. Koopman , P. and Fratrik , F. Safe AI 2019: AAAI Workshop on Artificial Intelligence Safety 2019
  32. Wang , X. , Shrivastava , A. , and Gupta , A. A-Fast-RCNN: Hard Positive Generation via Adversary for Object Detection Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition 2018
  33. https://developers.google.com/machine-learning/crash-course/classification/accuracy 2019

Cited By