Wrong Way Vehicle Detection in Single and Double Lane
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Abstract
Wrong-way driving is one of the primary causes of traffic jams and accidents globally. It is possible to identify vehicles going the wrong direction, which lessens accidents and traffic congestion. Surveillance footage has become an important source of data due to the accessibility of less priced cameras and the expanding use of real-time traffic management systems. In this paper, we propose a technique for automatically identifying automobiles moving against traffic. Our system uses the You Only Look Once (CNN) algorithm to recognize and track vehicles from video inputs and the centroid tracking method to determine each vehicle's orientation inside a given region of interest (ROI) in order to identify vehicles traveling in the wrong direction. It functions in three steps. The Deep sort tracking method is particularly good in detecting and tracking objects, and the centroid tracking technique can effectively monitor the direction of travel. Experiments with a variety of traffic films show that the suggested method can detect and identify wrong-way moving vehicles in a variety of lighting and weather scenarios. The interface of the system is quite simple and easy to use.
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References
Road Traffic Injuries. Available online: https://www.who.int/news-room/fact-sheets/detail/road-traffic-injuries#:~{}:text= Road%20traffic%20injuries%20are%20the,pedestrians%2C%20cyclists%2C%20and%20motorcyclists (accessed on 6 August 2022).
P. Suttiponpisarna, C. Charnsripinyob, S. Usanavasinc, H. Nakaharad, “An Enhanced System for Wrong-Way Driving Vehicle Detection with Road Boundary Detection Algorithm,” International Conference on Industry Sciences and Computer Science Innovation., 2022, Procedia Computer Science 204 (2022) 164–171
Z. Rahman, A. M. Ami and M. A. Ullah, "A Real-Time Wrong-Way Vehicle Detection Based on YOLO and Centroid Tracking," 2020 IEEE Region 10 Symposium (TENSYMP), Dhaka, Bangladesh, 2020, pp. 916-920, doi: 10.1109/TENSYMP50017.2020.9230463.
Suttiponpisarn, Pintusorn, and Sasiporn Usanavasin. "An autonomous framework for real-time wrong-way driving vehicle detection from CCTV." PhD diss., Thammasat University, 2021.
S. Usmankhujaev, S. Baydadaev, and K. J. Woo, “Real-Time, Deep Learning Based Wrong Direction Detection,” Applied Sciences, vol. 10, no. 7, p. 2453, Apr. 2020, doi: 10.3390/app10072453.
M. Sheng, C. Liu, Q. Zhang, L. Lou and Y. Zheng, "Vehicle Detection and Classification Using Convolutional Neural Networks," 2018 IEEE 7th Data Driven Control and Learning Systems Conference (DDCLS), Enshi, China, 2018, pp. 581-587, doi: 10.1109/DDCLS.2018.8516099.
Q. Zou, H. Jiang, Q. Dai, Y. Yue, L. Chen and Q. Wang, "Robust Lane Detection From Continuous Driving Scenes Using Deep Neural Networks," in IEEE Transactions on Vehicular Technology, vol. 69, no. 1, pp. 41-54, Jan. 2020, doi: 10.1109/TVT.2019.2949603.
J. Wang, Y. Dong, S. Zhao, and Z. Zhang, “A High-Precision Vehicle Detection and Tracking Method Based on the Attention Mechanism,” Sensors, vol. 23, no. 2, p. 724, Jan. 2023, doi: 10.3390/s23020724.
Ha, Synh Viet-Uyen, et al. "Improved Optical Flow Estimation In Wrong Way Vehicle Detection." Journal of Information Assurance & Security 9.7 (2014).
G. Monteiro, M. Ribeiro, J. Marcos and J. Batista, "Wrongway Drivers Detection Based on Optical Flow," 2007 IEEE International Conference on Image Processing, San Antonio, TX, USA, 2007, pp. V - 141-V - 144, doi: 10.1109/ICIP.2007.4379785.
A. Osipov et al., “Deep Learning Method for Recognition and Classification of Images from Video Recorders in Difficult Weather Conditions,” Sustainability, vol. 14, no. 4, p. 2420, Feb. 2022, doi: 10.3390/su14042420.
Rakotondrajao, Fabien, and Kharittha Jangsamsi. "Road boundary detection for straight lane lines using automatic inverse perspective mapping." 2019 International Symposium on Intelligent Signal Processing and Communication Systems (ISPACS). IEEE, 2019.
Bie, Minglin, et al. "Real-time vehicle detection algorithm based on a lightweight You-Only-Look-Once (YOLOv5n-L) approach." Expert Systems with Applications 213 (2023): 119108.
P. Suttiponpisarn, C. Charnsripinyo, S. Usanavasin and H. Nakahara, "Detection of Wrong Direction Vehicles on Two-Way Traffic," 2021 13th International Conference on Knowledge and Systems Engineering (KSE), Bangkok, Thailand, 2021, pp. 1-6, doi: 10.1109/KSE53942.2021.9648579.
M. Joshi, B. ., & Bhavsar, H. . (2023). Deep Learning Technology based Night-CNN for Nightshade Crop Leaf Disease Detection. International Journal of Intelligent Systems and Applications in Engineering, 11(1), 215–227. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2461
Wang, Haikuan, et al. "A real-time safety helmet wearing detection approach based on CSYOLOv3." Applied Sciences 10.19 (2020): 6732.
Everingham, Mark, et al. "The pascal visual object classes (voc) challenge." International journal of computer vision 88 (2010): 303-338.
Everingham, Mark, et al. "The pascal visual object classes (voc) challenge." International journal of computer vision 88 (2010): 303-338.
Everingham, Mark, and John Winn. "The pascal visual object classes challenge 2012 (voc2012) development kit." Pattern Analysis, Statistical Modelling and Computational Learning, Tech. Rep 8.5 (2011).
Aslam, Asra, and Edward Curry. "A survey on object detection for the internet of multimedia things (IoMT) using deep learning and event-based middleware: approaches, challenges, and future directions." Image and Vision Computing 106 (2021): 104095.
Xue, Chennan, Huaguo Zhou, and Dan Xu. "Field implementation of directional rumble strips to deter wrong-way driving on freeways." Journal of transportation engineering, Part A: Systems 146.9 (2020): 04020090.
Chen, Lichao, et al. "Real-time Lane detection model based on non-bottleneck skip residual connections and attention pyramids." PloS One 16.10 (2021): e0252755.