Pemodelan Identifikasi Objek Kendaraan Bermotor Menggunakan Faster Region based Convolutional Neural Network (R-CNN) Berbasis Python
DOI:
https://doi.org/10.34151/jurtek.v17i1.4727Keywords:
Faster R-CNN, identification, traffic, vehiclesAbstract
The vehicles are currently experiencing a surge in number and variation. This is evident from the kinds of vehicles that are passing through the highway area. The rise in the number of motorized vehicles will surely give a squeeze to the traffic density. The increase in the number of motor vehicles is one of the biggest factors in the impact of the congestion. The congestion can also cause damage to the highway. It's supposed to be the focus of the local government in dealing with the problem. Each road point has its own potential, so it is necessary to have a calculation in identifying the number of vehicles and the type of vehicles that are slipped on the road. Motor vehicle identification can be solved using the Faster Region based Convolutional Neural Network approach. Faster R-CNN is a deep learning architecture used to detect inside computers. Research will run at several highway points to take samples of video at a certain time, for identified the type of vehicle. Vehicle labelling will facilitate the calculation of the number of vehicles crossing the road in a given unit of time. The vehicle identification needs are used to see the density of the highway so that it can help the local government in making the right decision or solution to reduce the traffic density. The results of research such as quantitative data can be easily used to give the right picture and decision.
Downloads
References
BPS, 2024. Badan Pusat Statistik. [Online] Available at: https://www.bps.go.id/id/statistics-table/3/VjJ3NGRGa3dkRk5MTlU1bVNFOTVVbmQyVURSTVFUMDkjMw==/jumlah-kendaraan-bermotor-menurut-provinsi-dan-jenis-kendaraan-unit-.html?year=2022
[Accessed 1 Juli 2024].
Jasman, P. & Hendri, H., 2022. Deteksi Objek Kereta Api menggunakan Metode Faster R-CNN dengan Arsitektur VGG 16. Multimedia Artificial Intelligent Networking Database, 7(1), pp. 21-36.
Mela , T. A., Fitri, U. & Dahnial, S., 2021. Sistem Deteksi dan Klasifikasi Jenis Kendaraan berbasis Citra dengan Menggunakan Metode Faster-RCNN pada Raspberry Pi 4B. Jurnal Pengembangan Teknologi Informasi dan Ilmu Komputer, 5(2), pp. 814-819.
Moch, D. L. Y., Wawan, S. & Yaya, W., 2021. Deteksi Sepeda Motor di Jalan Raya Menggunakan Faster R-CNN Berbasis VGG16. Jurnal APlikasi dan Teori Ilmu Komputer, 4(2), pp. 10-13.
Mohan, K. K., Sowmya, A., Jerusha, D. & Susmitha, D., 2021. Comparative Study of Vehicle Detection using SSD and Faster R-CNN. International Journal of Computer Science and Mobile Computing, 10(7), pp. 28-33.
Sunario, M. & Wulan , S. L., 2020. Deteksi Spoofing Wajah Menggunakan Faster R-CNN dengan Arsitektur Resnet50 pada Video. Junal Nasional Teknik Elektro dan Teknologi Informasi, 9(3), pp. 261-267.
Viky, P. S., Ulinnuha, L. & Ibrahim, 2023. Simulasi Detection Counter pada Objek Kendaraan Motor dan Mobil Menggunakan Metode Convolutional Neural Network Berbasis Python. Jurnal Ilmiah Wahana Pendidikan, 9(16), pp. 760-766.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2024 Rosalia Arum Kumalasanti, Erma Susanti
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
Jurnal Teknologi provides immediate open access to its content in order of making research freely available to the public to support a global exchange of knowledge. All articles published in this journal are free for everyone to read and download, under licence CC BY SA.
Benefits of open access for the author, include:
- Free access for all users worldwide.
- Authors retain copyright to their work.
- Increased visibility and readership.
- No spatial constraints.