Real-Time Object Detection Using Deep Learning
Authors
Guide; Department of Information Technology, PES Modern College of Engineering, Pune, Maharashtra (India)
Students; Department of Information Technology, PES Modern College of Engineering, Pune, Maharashtra (India)
Students; Department of Information Technology, PES Modern College of Engineering, Pune, Maharashtra (India)
Students; Department of Information Technology, PES Modern College of Engineering, Pune, Maharashtra (India)
Students; Department of Information Technology, PES Modern College of Engineering, Pune, Maharashtra (India)
Article Information
DOI: 10.51244/IJRSI.2025.12110094
Subject Category: Computer Science
Volume/Issue: 12/11 | Page No: 1012-1016
Publication Timeline
Submitted: 2025-11-24
Accepted: 2025-11-30
Published: 2025-12-10
Abstract
Real-time object detection is a crucial task in computer vision, enabling intelligent systems to identify and classify multiple objects from visual data streams such as images and videos. Traditional detection methods relied heavily on manual feature extraction and suffered from limited scalability in dynamic environments. This paper presents an intelligent system for Real-Time Object Detection Using Deep Learning, utilizing the YOLOv8 (You Only Look Once) architecture integrated with a Flask-based web interface. The proposed system detects and labels multiple objects in live webcam feeds, video inputs, or static images with high accuracy and low latency. It leverages convolutional neural networks (CNNs) for feature extraction and performs training on a custom dataset enhanced through extensive data augmentation. This research demonstrates the potential of integrating deep learning with web-based technologies for real-world applications such as surveillance, industrial monitoring, and autonomous systems.
Keywords
YOLOv8, Object Detection, Deep Learning
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References
1. R. K. et al., “A Perspective Study of Real-Time Object Detection Using Deep Learning,” IEEE MITADTSoCiCon , 2024. [Google Scholar] [Crossref]
2. Mohammed Kawser Jahan et al., “Enhancing the YOLOv8 Model for Realtime Object Detection to Ensure Online Platform Safety,” Scientific Reports 15 (1), 2025. [Google Scholar] [Crossref]
3. U. Dwivedi et al., “Overview of Moving Object Detection Using YOLO Deep Learning Models,” IEEE ICDT, 2024. [Google Scholar] [Crossref]
4. S. Borkar et al., “Dynamic Approach for Object Detection Using Deep Reinforcement Learning,” IEEE SPACE, 2024. [Google Scholar] [Crossref]
5. Afdhal et al., “Real-Time Object Detection Performance of YOLOv8 Models for Self-Driving Cars,” IEEE COSITE, 2023. [Google Scholar] [Crossref]
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