Authors :
Sumit Raj; Utkarsh Pratap Singh; Sumanth P N; Nayana C P
Volume/Issue :
Volume 9 - 2024, Issue 12 - December
Google Scholar :
https://tinyurl.com/y3tr7kcx
Scribd :
https://tinyurl.com/yc8kmpbs
DOI :
https://doi.org/10.5281/zenodo.14534530
Abstract :
The rapid progress in facial recognition
technology has broadened its use across multiple sectors,
with law enforcement and public safety being among the
primary areas of impact. This study presents an
innovative framework for identifying criminals and
missing persons by integrating two cutting-edge
technologies: FaceNet and MTCNN. FaceNet, a deep
learning-based model, produces high-dimensional facial
embeddings that capture unique facial features
consistently across various conditions, while MTCNN
performs real-time face detection, isolating facial regions
accurately to improve identification precision. The
combined application of FaceNet and MTCNN addresses
common challenges in facial identification, such as
changes in lighting, pose, and expression, providing law
enforcement with a robust tool to expedite investigations
and locate missing individuals. Through testing on diverse
datasets, this study assesses the system's effectiveness,
focusing on practical applicability and examining ethical
concerns, privacy protections, and potential societal
impacts. This research contributes to the ongoing
discussion on using advanced technologies responsibly to
enhance public safety and support law enforcement
efforts.
Keywords :
Artificial Intelligence, E-Learning, Deep Learning, Real-time Face Detection, Adaptive Learning, Natural Language Processing, Diverse Datasets, Learner Engagement, Identification System, Data Privacy.
References :
- Rajesh Kumar Tripathi, Anand Singh Jalal, Novel local feature extraction for age invariant face recognition, Expert Systems with Applications, Volume 175, 2021, 114786, ISSN 0957-4174https://doi.org/10.1016/j.eswa.2021.114786.
- Shtwai Alsubai, Monia Hamdi, Sayed Abdel-Khalek, Abdullah Alqahtani, Adel Binbusayyis, Romany F. Mansour, Bald eagle search optimization with deep transfer learning enabled age-invariant face recognition model, Image and Vision Computing,Volume 126, 2022, 104545, ISSN 0262- 8856, https://doi.org/10.1016/j.imavis.2022.104545.
- Jyothi S. Nayak, M. Indiramma. "An approach to enhance age invariant face recognition performance based on gender classification." Journal of King Saud University – Computer and Information Sciences, vol. 34, pp. 5183–5191, 2022.
- Z. An, W. Deng, J. Hu, Y. Zhong, Y. Zhao. "APA: Adaptive Pose Alignment for Pose-Invariant Face Recognition." IEEE Access , vol. 7, pp. 14653-14668, 2019.
- A. A M, A. G RAj, A. Devaraju C, S. B V. "Efficient Tracking of Missing Person Using AI." International Journal of Advanced Research in Computer and Communication Engineering , vol. 12, issue 5, pp. 1090-1094, 2023.
- Roshin John , Basil Kuriakose. "Face Detection and Tracking to Find the Missing Person," published in the International Journal of Research in Engineering, Science and Management , Volume 3, Issue 6, June 2020.
- W. K. Aljohani, R. A. Alshehri, et al., "Suhail: A Deep Learning-Based System for Identifying Missing People." Computer and Information Science, Vol. 16, No. 2; 2023.
- S. Sambolek, M. Ivašić-Kos, "Person Detection in Drone Imagery," Proceedings of the 2020 5th International Conference on Smart and Sustainable Technologies (SpliTech), 2020.
- Roshin John , Basil Kuriakose. "Face Detection and Tracking to Find the Missing Person," International Journal of Research in Engineering, Science and Management, Volume 3, Issue 6, June 2020. ISSN (Online): 2581-5792.
- V. Shelke, T. Bangera, et al., "Searchious: Locating Missing People Using an Optimised Face Recognition Algorithm." Proceedings of the 2021 5th International Conference on Computing Methodologies (ICCMC), 202
The rapid progress in facial recognition
technology has broadened its use across multiple sectors,
with law enforcement and public safety being among the
primary areas of impact. This study presents an
innovative framework for identifying criminals and
missing persons by integrating two cutting-edge
technologies: FaceNet and MTCNN. FaceNet, a deep
learning-based model, produces high-dimensional facial
embeddings that capture unique facial features
consistently across various conditions, while MTCNN
performs real-time face detection, isolating facial regions
accurately to improve identification precision. The
combined application of FaceNet and MTCNN addresses
common challenges in facial identification, such as
changes in lighting, pose, and expression, providing law
enforcement with a robust tool to expedite investigations
and locate missing individuals. Through testing on diverse
datasets, this study assesses the system's effectiveness,
focusing on practical applicability and examining ethical
concerns, privacy protections, and potential societal
impacts. This research contributes to the ongoing
discussion on using advanced technologies responsibly to
enhance public safety and support law enforcement
efforts.
Keywords :
Artificial Intelligence, E-Learning, Deep Learning, Real-time Face Detection, Adaptive Learning, Natural Language Processing, Diverse Datasets, Learner Engagement, Identification System, Data Privacy.