Welcome to Francis Academic Press

Academic Journal of Computing & Information Science, 2023, 6(9); doi: 10.25236/AJCIS.2023.060908.

Real-time Monitoring and Analysis of Computer Image Processing in Intelligent Transportation System

Author(s)

Tianbao Wu

Corresponding Author:
Tianbao Wu
Affiliation(s)

School of Information Science and Technology, Tan Kah Kee College, Xiamen University, Xiamen, Fujian, 363105, China

Abstract

As one of the foundations of building a "smart city", and as an effective means to improve the current transportation situation, which is particularly reflected in cities, intelligent transportation can provide great help for people's daily travel, but the development of intelligent transportation system (ITS) is accompanied by some problems and shortcomings. This article believed that computer image processing technology can be used to assist the real-time monitoring and analysis system in the system, helping it carry out daily traffic monitoring and management work. Computer image processing technology can improve image quality and even restore some damaged and incomplete images, making them easy to observe. It can also uses methods such as frame difference to analyze vehicle and road conditions in real-time, thereby locating and processing illegal vehicles, and improving road conditions.

Keywords

Computer Image Processing Technology, Intelligent Transportation System, Real-Time Monitoring and Analysis System, Frame Difference Method

Cite This Paper

Tianbao Wu. Real-time Monitoring and Analysis of Computer Image Processing in Intelligent Transportation System. Academic Journal of Computing & Information Science (2023), Vol. 6, Issue 9: 48-54. https://doi.org/10.25236/AJCIS.2023.060908.

References

[1] Njoku J N, Nwakanma C I, Amaizu G C, et al. Prospects and challenges of Metaverse application in data‐driven intelligent transportation systems. IET Intelligent Transport Systems, 2023, 17(1): 1-21.

[2] Ramesh T R, Vijayaragavan M, Poongodi M, et al. Peer-to-peer trust management in intelligent transportation system: An Aumann’s agreement theorem based approach. ICT Express, 2022, 8(3): 340-346.

[3] Khan M A, Ullah I, Alkhalifah A, et al. A provable and privacy-preserving authentication scheme for UAV-enabled intelligent transportation systems. IEEE Transactions on Industrial Informatics, 2021, 18(5): 3416-3425.

[4] Zhou L Q, Zhao C P, Zhang J, et al. Application and Prospect of Artificial Intelligence Real time Seismic Monitoring and Analysis System in China Earthquake Science Experimental Site. Earthquake, 2021, 41(3):1-21.

[5] Ferlin M A, Grochowski M, Kwasigroch A, et al. A comprehensive analysis of deep neural-based cerebral microbleeds detection system. Electronics, 2021, 10(18): 1-18.

[6] Chen Y, Zhou X. Research and implementation of robot path planning based on computer image recognition technology[C]//Journal of Physics: Conference Series. IOP Publishing, 2021, 1744(2): 1-5.

[7] Lopez-Marcano S, Brown C J, Sievers M, et al. The slow rise of technology: Computer vision techniques in fish population connectivity. Aquatic Conservation: Marine and Freshwater Ecosystems, 2021, 31(1): 210-217.

[8] Manoharan D J S. A novel user layer cloud security model based on chaotic Arnold transformation using fingerprint biometric traits. Journal of Innovative Image Processing, 2021, 3(1): 36-51.

[9] Black S, Phillips D, Hickey J W, et al. CODEX multiplexed tissue imaging with DNA-conjugated antibodies. Nature protocols, 2021, 16(8): 3802-3835.

[10] Hou Y, Li Q, Zhang C, et al. The state-of-the-art review on applications of intrusive sensing, image processing techniques, and machine learning methods in pavement monitoring and analysis. Engineering, 2021, 7(6): 845-856.

[11] Li X, Wang J C, Li Y S, Liu H Q. Exploration of vehicle-road integrated practical teaching platform based on intelligent transportation system. Experimental Technology and Management, 2019, 36(10):18-22.

[12] Wang J W, Wang M Q, Bao Z G. Implementation case of road condition information system of Xiamen Metro Line 1. Urban Rapid Rail Transit, 2018, 31(4):105-108.

[13] Li C Y, Zhao J, Liu J Q, Zhang Q, Han L. Blockchain-based taffic condition early-warning scheme for VANET. Chinese Journal of Network and Information Security, 2018, 4(7):39-47.

[14] Xie Q. Research and application of real-time monitoring and analysis system for urban rail transit vehicle status. Railway Locomotive & Car, 2019, 39(4):116-119.

[15] Hua L J, Xie Q, Liu C, LIu C, LIu F. Real-time Monitoring and Analysis System for Urban Rail Transit Vehicles. Urban Rapid Rail Transit, 2020, 33(1):134-138.

[16] Guo W, Zhang Y B, Zhou Y, Xu G F, Li G W. Rapid Deep-Sea Image Restoration Algorithm Applied to Unmanned Underwater Vehicles. Acta Optica Sinica, 2022, 42(4):1-15.

[17] Song R, Gao C. Application of Computer Image Processing Technology in Tea Picking Robot System. Journal of Agricultural Mechanization Research, 2023, 45(9):177-179.

[18] Zhang Y Z, Wang X. Design of pattern recognition system for laser remote sensing image based on feature vector extraction. Laser Journal, 2019, 40(4):68-73.

[19] Song T S. Research on the Application of Digital Image Processing Technology in Intelligent Transportation. Information recording materials, 2019, 20(4):86-88.

[20] Li C M, Y ang S, Yuan S L. Lane line tracking method combining frame difference method and window search. Journal of Terahertz Science and Electronic Information Technology, 2022, 20(4): 372-377.