A Comprehensive Review on Advanced Driver Assistance System
PDF
PDF

How to Cite

Ayyasamy, S. 2022. “A Comprehensive Review on Advanced Driver Assistance System”. Journal of Soft Computing Paradigm 4 (2): 69-81. https://doi.org/10.36548/jscp.2022.2.003.

Keywords

— Advanced Driver Assistance System (ADAS)
— warning system
— human machine interface
— crash detection
— collision warning and avoidance
Published: 16-07-2022

Abstract

In recent years, automotive industry is experiencing an unprecedented transformation with the rise of digital technologies. While in the past, acceleration, top speed, and mechanical design were the most essential factors for purchasing an automobile, electronics and software innovations define the characteristics of the future. One among such innovations is the Advanced Driver Assistance System (ADAS). This innovation is now considered as the major drive force of the automotive domain with the intelligent electronic and software architectures. ADAS is primarily designed with an objective to assist drivers by providing an alert/automate the manual tasks in any adverse conditions. ADAS functions will also have the capability to obtain the signals from roadways, Road Side Units (RSUs) and other vehicles. This research article attempts to provide a comprehensive review on the research developments and technologies used in design, development and implementation of advanced driver assistance systems. The sections included in the proposed study describe about the different ADAS methods such as adaptive and automated cruise control, smart navigation with collision warning and avoidance system, automated vehicle parking assistance and object detection. The primary goal of this research study is to achieve a collective knowledge of ADAS operational capabilities and limitations, as well as to suggest research requirements for future investigations.

References

  1. Orlovska, Julia, Fjollë Novakazi, Bligård Lars-Ola, MariAnne Karlsson, Casper Wickman, and Rikard Söderberg. "Effects of the driving context on the usage of Automated Driver Assistance Systems (ADAS)-Naturalistic Driving Study for ADAS evaluation." Transportation research interdisciplinary perspectives 4 (2020): 100093.
  2. Li, Xinran, Kuo-Yi Lin, Min Meng, Xiuxian Li, Li Li, Yiguang Hong, and Jie Chen. "A Survey of ADAS Perceptions With Development in China." IEEE Transactions on Intelligent Transportation Systems (2022).
  3. Mishra, Madhusmita, and Abhishek Kumar. "ADAS Technology: A Review on Challenges, Legal Risk Mitigation and Solutions." Autonomous Driving and Advanced Driver-Assistance Systems (ADAS) (2021): 401-408.
  4. Tian, Jun, Shiwang Liu, Xunyu Zhong, and Jianping Zeng. "LSD-based adaptive lane detection and tracking for ADAS in structured road environment." Soft Computing 25, no. 7 (2021): 5709-5722.
  5. Gupta, Any, and Ayesha Choudhary. "Lane Detection, Prediction, and Path Planning." In Autonomous Driving and Advanced Driver-Assistance Systems (ADAS), pp. 149-166. CRC Press, 2021.
  6. Nakamura, Kazumasa; Ochiai, Takeshi; Tanigawa, Kou; , "Application of Microprocessor to Cruise-Control System," Industrial Electronics, IEEE Transactions on , vol.IE-30, no.2, pp.108-113, May 1983.
  7. Ciuffo, Biagio, Konstantinos Mattas, Michail Makridis, Giovanni Albano, Aikaterini Anesiadou, Yinglong He, Szilárd Josvai et al. "Requiem on the positive effects of commercial adaptive cruise control on motorway traffic and recommendations for future automated driving systems." Transportation research part C: emerging technologies 130 (2021): 103305.
  8. Teo, Ting Yau, Ricky Sutopo, Joanne Mun-Yee Lim, and KokSheik Wong. "Innovative lane detection method to increase the accuracy of lane departure warning system." Multimedia Tools and Applications 80, no. 2 (2021): 2063-2080.
  9. Fan, Lei, Qi Yang, Yang Zeng, Bin Deng, and Hongqiang Wang. "Real-Time Collision Warning and Status Classification Based Camera and Millimeter Wave-Radar Fusion." In CAAI International Conference on Artificial Intelligence, pp. 103-114. Springer, Cham, 2021.
  10. Zadry, Hilma Raimona, Hanida Abdul Aziz, Mirta Widia, Ezrin Hani Sukadarin, Hairunnisa Osman, Zulhaidi Mohd Jawi, and Muhammad Afif Rahman. "Traffic Accident in Indonesia and Blind Spot Detection Technology—An Overview." Human-Centered Technology for a Better Tomorrow (2022): 231-242.
  11. Lee, Youn Joo, Jae Kyu Suhr, and Ho Gi Jung. "Application requirement-driven automatic ISP parameter tuning for a rear view monitoring camera." IEEE Access 9 (2021): 82535-82549.
  12. Samara, Ghassan. "Lane prediction optimization in VANET." Egyptian Informatics Journal 22, no. 4 (2021): 411-416.
  13. Haque, Wasif Arman, Samin Arefin, A. S. M. Shihavuddin, and Muhammad Abul Hasan. "DeepThin: A novel lightweight CNN architecture for traffic sign recognition without GPU requirements." Expert Systems with Applications 168 (2021): 114481.
  14. Antony, Maria Merin, and Ruban Whenish. "Advanced driver assistance systems (ADAS)." In Automotive Embedded Systems, pp. 165-181. Springer, Cham, 2021.
  15. Boscher, Thomas, Adrian Günther, and Korbinian Scheck. "Evaluation Method for Manual and Automated Parking Maneuvers." ATZ worldwide 123, no. 12 (2021): 36-41.
  16. Khalid, Muhammad, Kezhi Wang, Nauman Aslam, Yue Cao, Naveed Ahmad, and Muhammad Khurram Khan. "From smart parking towards autonomous valet parking: A survey, challenges and future Works." Journal of Network and Computer Applications 175 (2021): 102935.
  17. Fitah, A., A. Badri, M. Moughit, and A. Sahel. "Performance of DSRC and WIFI for Intelligent Transport Systems in VANET." Procedia Computer Science 127 (2018): 360-368.
  18. Maalej, Yassine, and Elyes Balti. "Integration of Vehicular Clouds and Autonomous Driving: Survey and Future Perspectives." arXiv preprint arXiv:2201.02893 (2022).
  19. Möller, Dietmar PF, and Roland E. Haas. Guide to automotive connectivity and cybersecurity. Springer International Publishing, 2019.
  20. Haas, Roland Erik, Shambo Bhattacharjee, and Dietmar PF Möller. "Advanced driver assistance systems." In Smart Technologies, pp. 345-371. Springer, Singapore, 2020.
  21. Azizan, Mohd Amzar, Amirul Rohismadi, Nurhakimah Norhashim, and Nurizzati Norizan. "Development of user interface (UI) and user experience (UX) for smart alcohol detection system in public transportation." In Human-Centered Technology for a Better Tomorrow, pp. 453-463. Springer, Singapore, 2022.
  22. Johansson, Mikael, Fredrick Ekman, MariAnne Karlsson, Helena Strömberg, and Joakim Jonsson. "ADAS at work: assessing professional bus drivers’ experience and acceptance of a narrow navigation system." Cognition, Technology & Work (2022): 1-15.
  23. Narayanan, Prabhakaran, Sudhakar Sengan, Balasubramaniam Pudhupalayam Marimuthu, and Ranjith Kumar Paulra. "Novel collision detection and avoidance system for midvehicle using offset-based curvilinear motion." Wireless Personal Communications 119, no. 3 (2021): 2323-2344.
  24. Rajkar, Ajinkya, Nilima Kulkarni, and Aniket Raut. "Driver Drowsiness Detection Using Deep Learning." In Applied Information Processing Systems, pp. 73-82. Springer, Singapore, 2022.
  25. Arora, N. and Kumar, Y., 2022. Automatic vehicle detection system in Day and Night Mode: challenges, applications and panoramic review. Evolutionary Intelligence, pp.1-19.