Authors :
J. Dhanalakshmi; Ashok Kumar M; Shalini J; Soundharya Devi M
Volume/Issue :
Volume 9 - 2024, Issue 4 - April
Google Scholar :
https://tinyurl.com/bde3m9pm
Scribd :
https://tinyurl.com/56dkvsn2
DOI :
https://doi.org/10.38124/ijisrt/IJISRT24APR2690
Abstract :
Our project aims to leverage Convolutional
Neural Networks (CNNs) for the identification of missing
persons. CNNs, a class of deep learning algorithms
widely used in image recognition tasks, offer promising
potential in automating and enhancing the identification
process. The project aims to develop a robust system
using CNN models to match unidentified individuals
with missing person databases, improving identification
accuracy and providing closure.
The proposed approach demonstrates potential in
assisting law enforcement agencies and missing persons
organizations by providing a reliable and efficient means
of cross-referencing images from various sources, such
as surveillance footage, social media, and public records.
Additionally, the flexibility of CNNs allows for the
integration of other biometric markers, including
fingerprints and voice recognition, to increase the
accuracy and reliability of identifications.
This research underscores the importance of using
artificial intelligence and machine learning in social good
applications, highlighting the potential for technology to
play a transformative role in reuniting families and
bringing closure to unresolved cases. Future work will
focus on refining the model, enhancing privacy
protections, and ensuring ethical use in real-world
applications.
Keywords :
Automated Identification, Convolutional Neural Networks (CNNs), Deep Learning, Facial Recognition, Missing Person Identification, Pattern Recognition, Social Impact.
References :
- Artyani,I.(2019,0910).http://repository.uinjkt.ac.id/ds pace/bitstream/123456789/47930/1/ISMA%20ARTYAN I-FST.pdf. Diambil kembali dari UINJKT: http://repository.uinjkt.ac.id/dspace/bitstream/123456789/47930/1/ ISMA%20ARTYANI-FST.pdf
- Astuti, D. L. (2019, 08 01). klasifikasi ekspresi wajah menggunakan metode principal component analysis (pca) dan convolutional neural network (cnn). Diambilkembali dari RepositoryUnsri:http://repository. unsri.ac.id/6479/3/RA MA_55101_09042621721004_ 0004027101_0023027804_01_FRONT_REF.pdf
- Fahmi, K., Santosa , S., & Fanani , A. Z. (2015).optimasi parameter artificial neural network dengan menggunakan algoritma genetika untuk memprediksi nilai tukar rupiah. Jurnal Teknologi Informasi, 196-206.
- Fermansah , D. (2018, 01 20). Machine Learning. Diambil kembali dari Universitas Siliwang i: http://repositori.unsil.ac.id/233/6/bab%202.pdf
- Jiang, A., Yan, N., Wang, F., Huang, H., Zhu, H., & Wei, B. (2019). Visible Image Recognition of Power Transformer Equipment Based on Mask R-CNN. Sustainable Power and Energy Conference (iSPEC) (hal . 222-299). Beijing, China, China: IEEE.
Our project aims to leverage Convolutional
Neural Networks (CNNs) for the identification of missing
persons. CNNs, a class of deep learning algorithms
widely used in image recognition tasks, offer promising
potential in automating and enhancing the identification
process. The project aims to develop a robust system
using CNN models to match unidentified individuals
with missing person databases, improving identification
accuracy and providing closure.
The proposed approach demonstrates potential in
assisting law enforcement agencies and missing persons
organizations by providing a reliable and efficient means
of cross-referencing images from various sources, such
as surveillance footage, social media, and public records.
Additionally, the flexibility of CNNs allows for the
integration of other biometric markers, including
fingerprints and voice recognition, to increase the
accuracy and reliability of identifications.
This research underscores the importance of using
artificial intelligence and machine learning in social good
applications, highlighting the potential for technology to
play a transformative role in reuniting families and
bringing closure to unresolved cases. Future work will
focus on refining the model, enhancing privacy
protections, and ensuring ethical use in real-world
applications.
Keywords :
Automated Identification, Convolutional Neural Networks (CNNs), Deep Learning, Facial Recognition, Missing Person Identification, Pattern Recognition, Social Impact.