A Hybrid Deep Learning Model for Efficient Anomaly Detection in Video Surveillance Systems
- Authors
-
-
Abba M. BALA
Department of Computer Science, Faculty of Computing, Northwest University, Kano, Kano State, Nigeria
Author
-
Abdurrauf G. SHARIFAI
Department of Computer Science, Faculty of Computing, Northwest University, Kano, Kano State, Nigeria
Author
-
Umar S. HARUNA
Department of Cybersecurity, Faculty of Computing, Northwest University, Kano, Kano State, Nigeria
Author
-
- Keywords:
- CNN, ViT, Swin-Transformer, VAD, Attention Mechanism, Feature Fusion.
- Abstract
-
Traditional CNNs often face challenges in capturing long-range dependencies and contextual relationships within data, which limits their effectiveness in complex tasks like anomaly detection. To overcome these limitations, we propose an innovative enhanced attention-mechanism hybrid model that combines the strengths of CNNs with Transformer architecture. This hybrid model leverages the powerful feature extraction capabilities of four distinct CNN architectures, VGG16, DenseNet121, ResNet50, and MobileNetV2. To process the training data comprehensively, the extracted features are fused and passed through Swin Transformer which integrates attention mechanisms to capture long-range dependencies within the data effectively, and focuses on the most relevant regions of the input data. The effectiveness of this approach is evaluated on the UCF-Crime benchmark dataset using performance metrics such as ROC-AUC, achieving an outstanding accuracy of 99.2% surpassing existing state-of-the-art methods. Moreover, the model’s ability to handle complex video data and extract semantically rich features highlights its potential for real-time surveillance applications where timely and accurate anomaly detection is critical.
- References
- Downloads
- Published
- 02-03-2026
- Section
- Articles
- License
-
Copyright (c) 2026 FUDMA Journal of Engineering and Technology

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
How to Cite
Similar Articles
- Caleb A. ABORISADE, Jide E.T. AKINSOLA, Ifeoluwa M. OLANIYI, Fathia O. ONIPEDE, Emmanuel A. OLAJUBU, Ganiyu A. ADEROUNMU, Machine Learning-Based Polycystic Ovary Syndrome Generative Modelling via Ensemble Learning and Neural Networks for Infertility Prediction , FUDMA Journal of Engineering and Technology: Vol. 1 No. 1 (2025): July 2025
- Gregory T. AKAU, Abel AIROBOMAN, Nathaniel DALLA, Design and Implementation of IOT-Based Intravenous (IV) Bag Monitoring and Alert System , FUDMA Journal of Engineering and Technology: Vol. 1 No. 2 (2025): December 2025
- Damilare L. ADEKEYE, Isiyaku SALEH, Yemisi E. AKINSELI, Design and Implementation of an Automatic Gate for Cars at Railway Crossings , FUDMA Journal of Engineering and Technology: Vol. 1 No. 2 (2025): December 2025
- Tolulope S. FAWALE, Monday O. IMAFIDON, Chukwuemeka P. OGBU, Adoption of Non-Financial Motivational Strategies for Enhancing Productivity on Construction Sites in Edo State, Nigeria , FUDMA Journal of Engineering and Technology: Vol. 1 No. 2 (2025): December 2025
You may also start an advanced similarity search for this article.
