Jahid H. Rony

Work place: Department of Computer Science and Engineering, Dhaka University of Engineering and Technology, Gazipur, Bangladesh

E-mail: 174067@student.duet.ac.bd

Website:

Research Interests: Machine Learning, IoT

Biography

Jahid H. Rony is currently pursuing his B.Sc. in Computer Science and Engineering degree from Dhaka University of Engineering & Technology (DUET), Gazipur. Jahid has been actively involved in various extracurricular activities during his studies. He is the President of DUET Robotics Club, where he leads a team of students in developing autonomous systems for various applications for the year of 2023. He is also the Newsletter Editor of IEEE DUET Student Branch, where he is responsible for managing and publishing newsletters to keep the members updated about the latest developments in the field of electrical and electronics engineering. During his undergraduate studies, he worked on developing machine learning models for automated audio classification, image processing and so on. His research interests include IoT, Robotics, Automation, Machine learning, and AI.

Author Articles
Drone Detection from Video Streams Using Image Processing Techniques and YOLOv7

By Muhammad K. Kabir Anika N. Binte Kabir Jahid H. Rony Jia Uddin

DOI: https://doi.org/10.5815/ijigsp.2024.02.07, Pub. Date: 8 Apr. 2024

For ensuring the safety issues, a country should establish a secure monitoring system around the most important places. Due to the huge development in unmanned aerial vehicles (UAV), drone detection is a vital part of the safety monitoring system for reducing threats from neighboring countries or terrorist groups. This paper presents a deep learning-based drone detection method. A You Only Look Once (YOLO) v7 architecture is used to train on the dataset. The training dataset consists of drone images in various environments. The trained model was tested on multiple videos of drones from YouTube. Experimental results demonstrate that the model exhibited a recall of 0.9656 and a precision of 0.9509. In addition, the performance of the model compares with the state-of-art models with YOLOv8, YOLO-NAS, Faster-RCNN architectures and it outperforms the other models by maintaining a more stable precision and recall curve.

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