This work is licensed under the Creative Commons Attribution 4.0 International License.
Lin, Y., Wang, P., & Ma, M. (2017, May). Intelligent transportation system (ITS): Concept, challenge and opportunity. In 2017 ieee 3rd international conference on big data security on cloud (bigdatasecurity), ieee international conference on high performance and smart computing (hpsc), and ieee international conference on intelligent data and security (ids) (pp. 167-172). IEEE.Search in Google Scholar
Telang, S., Chel, A., Nemade, A., & Kaushik, G. (2021). Intelligent transport system for a smart city. Security and privacy applications for smart city development, 171-187.Search in Google Scholar
Suryadithia, R., Faisal, M., Putra, A. S., & Aisyah, N. (2021). Technological developments in the intelligent transportation system (ITS). International Journal of Science, Technology & Management, 2(3), 837-843.Search in Google Scholar
Zhu, L., Yu, F. R., Wang, Y., Ning, B., & Tang, T. (2018). Big data analytics in intelligent transportation systems: A survey. IEEE Transactions on Intelligent Transportation Systems, 20(1), 383-398.Search in Google Scholar
Zhao, J., Hao, S., Dai, C., Zhang, H., Zhao, L., Ji, Z., & Ganchev, I. (2022). Improved vision-based vehicle detection and classification by optimized YOLOv4. IEEE Access, 10, 8590-8603.Search in Google Scholar
Song, H., Liang, H., Li, H., Dai, Z., & Yun, X. (2019). Vision-based vehicle detection and counting system using deep learning in highway scenes. European Transport Research Review, 11(1), 1-16.Search in Google Scholar
Chetouane, A., Mabrouk, S., Jemili, I., & Mosbah, M. (2022). Vision‐based vehicle detection for road traffic congestion classification. Concurrency and Computation: Practice and Experience, 34(7), e5983.Search in Google Scholar
Velazquez-Pupo, R., Sierra-Romero, A., Torres-Roman, D., Shkvarko, Y. V., Santiago-Paz, J., Gómez-Gutiérrez, D., ... & Romero-Delgado, M. (2018). Vehicle detection with occlusion handling, tracking, and OC-SVM classification: A high performance vision-based system. Sensors, 18(2), 374.Search in Google Scholar
Nixon, M., & Aguado, A. (2019). Feature extraction and image processing for computer vision. Academic press.Search in Google Scholar
Lentaris, G., Maragos, K., Stratakos, I., Papadopoulos, L., Papanikolaou, O., Soudris, D., ... & Furano, G. (2018). High-performance embedded computing in space: Evaluation of platforms for vision-based navigation. Journal of Aerospace Information Systems, 15(4), 178-192.Search in Google Scholar
Bailey, D. G. (2023). Design for embedded image processing on FPGAs. John Wiley & Sons.Search in Google Scholar
Katare, D., & El-Sharkawy, M. (2019, January). Embedded system enabled vehicle collision detection: an ANN classifier. In 2019 IEEE 9th Annual Computing and Communication Workshop and Conference (CCWC) (pp. 0284-0289). IEEE.Search in Google Scholar
Mhalla, A., Chateau, T., Gazzah, S., & Amara, N. E. B. (2018). An embedded computer-vision system for multi-object detection in traffic surveillance. IEEE Transactions on Intelligent Transportation Systems, 20(11), 4006-4018.Search in Google Scholar
Arabi, S., Haghighat, A., & Sharma, A. (2020). A deep‐learning‐based computer vision solution for construction vehicle detection. Computer‐Aided Civil and Infrastructure Engineering, 35(7), 753-767.Search in Google Scholar
Zhang, Y., Guo, Z., Wu, J., Tian, Y., Tang, H., & Guo, X. (2022). Real-time vehicle detection based on improved yolo v5. Sustainability, 14(19), 12274.Search in Google Scholar
Wei, Y., Tian, Q., Guo, J., Huang, W., & Cao, J. (2019). Multi-vehicle detection algorithm through combining Harr and HOG features. Mathematics and Computers in Simulation, 155, 130-145.Search in Google Scholar
Wang, H., Yu, Y., Cai, Y., Chen, X., Chen, L., & Liu, Q. (2019). A comparative study of state-of-the-art deep learning algorithms for vehicle detection. IEEE Intelligent Transportation Systems Magazine, 11(2), 82-95.Search in Google Scholar
Yang, Z., & Pun-Cheng, L. S. (2018). Vehicle detection in intelligent transportation systems and its applications under varying environments: A review. Image and Vision Computing, 69, 143-154.Search in Google Scholar
Sotomayor, D., Rosero, M. F., Benítez, D. S., & León, P. (2017, October). A real-time vehicle identification system implemented on an embedded ARM platform. In 2017 CHILEAN Conference on Electrical, Electronics Engineering, Information and Communication Technologies (CHILECON) (pp. 1-7). IEEE.Search in Google Scholar
Wu, H., Hua, Y., Zou, H., & Ke, G. (2022). A lightweight network for vehicle detection based on embedded system. The Journal of Supercomputing, 78(16), 18209-18224.Search in Google Scholar
Su, H., Dong, Z., Yang, F., & Lin, Y. (2021, January). Remote sensing vehicle detection based on embedded system. In Twelfth International Conference on Signal Processing Systems (Vol. 11719, pp. 8-15). SPIE.Search in Google Scholar
Hussain, B., Nawaz, S., & Yousaf, M. H. (2019). Visual vehicle detection scheme on low-powered embedded GPU. Journal of Intelligent & Fuzzy Systems, 36(2), 1867-1877.Search in Google Scholar
Krismadinata,Firstia Bevi Aulia,Ricky Maulana,Muldi Yuhendri,Maaspaliza Azri & Kannabiran Kanimozhi. (2023). Development of graphical user interface for boost converter employing visual studio. IOP Conference Series: Earth and Environmental Science(1).Search in Google Scholar
Wei Jiaxin,Yang Jin & Liu Xinyang. (2024). A text extraction framework of financial report in traditional format with OpenCV. Journal of Intelligent & Fuzzy Systems(4),8089-8108.Search in Google Scholar
Yue Qianqian,Hu Rui & Zhang Xiaoling. (2021). Analysis and Technology Realization of Power Grid Harmonic Detection System Based on ARM Embedded System. Journal of Physics: Conference Series(1).Search in Google Scholar