An inventive arrangement for accident prevention detection and caution using image mining

  • Authors

    • Stephen raj. S
    • Sripriya. P
    2018-06-08
    https://doi.org/10.14419/ijet.v7i2.33.14860
  • Computer Vision, Tiredness Detection, Face Detection, Alerts.
  • Driver aware is more main cause for the majority accidents connected to motor vehicle crashes. Lethargic, tried, heavy-eyed driver identification methods can form the base of a classification to potentially decrease accidents linked to driver tiredness. It obtain visual cue such as eyelid progress, look movement, skull movement, and facial look that naturally distinguish the intensity of awareness of a human being are extract in actual time and analytically united to assume the exhaustion intensity of the driver. A probabilistic model is used for predict human being in-alertness based on the image cues obtained. The real-time use of several image cues and their regular arrangement yields a much more healthy and exact exhaustion and distress characterization than by a single image cue. Percent eye conclusion is also unwavering. It is deemed to be logically robust, dependable and faithful in exhaustion and fright categorization, finding and caution.

     

     

  • References

    1. [1] A. Amditis, M. Bimpas, G. Thomaidis, M. Tsogas, M. Netto, S.Mammar, A. Beutner, N. Möhler, T.Wirthgen, S. Zipser, A. Etemad,M. Da Lio, and R. Cicilloni, “A Situation-Adaptive Lane Keeping Support System: Overview of the SAFELANE approachâ€, in Proc. IEEE Trans. Intell. Transp. Syst., vol. 11, no. 3, September 2010.

      [2] Jaeik Jo, Ho Gi Jung, Kang Ryoung, Jaihie Kim, “Vision –based method for detecting driver drowsiness and distraction in driver monitoring systemâ€, in Proc. Optical Engineering, vol 15, no.12, December 2012.

      [3] Kohji Murata, Etsunori Fujita, Shigeyuki Kojima, Shinitirou Maeda, Yumi Ogura, Tsutomu Kamei, Toshio Tsuji, “Noninvasive Biological Sensor System for Detection of Drunk Drivingâ€, in Proc. IEEE Trans. Info. Tech. Biomedicine, vol. 15, no. 1, January 2011.

      [4] Paul Viola Michael J. Jones Daniel Snow,â€Detecting Pedestrians Using Patterns of Motion and Appearance†, in Proc. of the Ninth IEEE International Conference on Computer Vision (ICCV’03) 0-7695-1950-4/03.

      [5] Zibo Li, Guangmin Sun, Fan Zhang , Linan Jia, Kun Zheng, Dequn Zhaoâ€, “Smartphone Based Fatigue Detection System using Progressive Locating Methodâ€, in Proc.IET Intell. Transp. Syst., pp. 1–9, January 2015.

      [6] Bappaditya Mandal, Liyuan Li, Gang Sam Wang, and Jie Lin, “Towards Detection of Bus Driver Fatigue Based on Robust Visual Analysis of Eye Stateâ€, in Proc. IEEE Trans. Intell. Transp. Syst., vol. 18, no. 3, March 2013.

      [7] Behnoosh Hariri, Shabnam Abtahi, Shervin Shirmohammadi, Luc Martel., “Demo:Vision Based Smart in-Car Camera System for Driver Yawning Detectionâ€, in Proc. IEEE Trans. Intell. Transp. Syst., 2016.

      [8] P. M. Forsman, B. J. Vila, R. A. Short, C. G. Mott, and H. P. A. van Dongen,†Efficient Driver Drowsiness Detection at Moderate Levels of Drowsinessâ€, International Journal of Accident Analysis and Prevention, page no:341- 350, September 2012.

      [9] Vandna Saini, Rekha Saini, “Driver Drowsiness Detection System and Techniques: A Review“, in Proc of. IJCSIT Vol. 5 (3), 2014, 4245-4249.

      [10] Z. Zhu and Q. Ji, “Real Time and Non-intrusive Driver Fatigue Moni- toringâ€, in The 7th International IEEE Conference on Intelligent Trans- portation Systems, pp. 657-662, Oct. 2004.

      [11] A. B. Albu, B. Widsten, T. Wang, J. Lan and J. Mah, “A Computer Vision-Based System for Real-Time Detection of Sleep Onset in Fatigued Driversâ€, in 2008 IEEE Intelligent Vehicles Symposium, pp. 25-30, June 2008.

      [12] J. Lee, J. Li, L. Liu and C. Chen, “A Novel Driving Pattern Recognition and Status Monitoring Systemâ€, in First pacific rim symposium, PSIVT 2006, pp. 504-512, December 2006.

      [13] A. V. Desai and M. A. Haque, “Vigilance Monitoring for Operator Safety: A Simulation Study on Highway Drivingâ€, in Journal of Safety Research, Vol. 37, No. 2, pp. 139-147, 2006.

      [14] J. Krajewski, D. Sommer, U. Trutschel, D. Edwards and M. Golz, “Steering Wheel Behavior Based Estimation of Fatigueâ€, in Proceedings of the Fifth International Driving Symposium on Human Factors in Driver Assessment, Training and Vehicle Design, pp. 118-124.

      [15] “Saab AlcoKey Helps Driversâ€, http://www.saabnet.com/tsn/press/061013a.html.

      [16] A. Heitmann, R. Cuttkuhn, A. Aguirre, U. Trutschel and M. Moore-Ede, “Technologies for The Monitoring and Prevention of Driver Fatigueâ€, in Proceedings of the Fifth International Driving Symposium on Human Factors in Driver Assessment, Training and Vehicle Design, pp. 81-86.

      [17] V. D. Lecce and M. Calabrese, “Experimental System to Support Real- Time Driving Pattern Recognitionâ€, in Advanced Intelligent Computing Theories and Applications With Aspects of Artificial Intelligence Annals of Emergency Medicine, pp. 1192-1199, 2008.

      [18] Wikipedia, “GPS†entry, http://en.wikipedia.org/wiki/Global Positioning System.

      [19] M. Wilczkowiak, E. Boyer, and P. Sturm, “Camera Calibration and 3D Reconstruction from Single Images Using Parallelepipedsâ€, in Proceed- ings of ICCV, pp. 142-148, 2001.

  • Downloads

  • How to Cite

    raj. S, S., & P, S. (2018). An inventive arrangement for accident prevention detection and caution using image mining. International Journal of Engineering & Technology, 7(2.33), 657-659. https://doi.org/10.14419/ijet.v7i2.33.14860