Facial Feature Localization and Analysis Using Machine Learning
DOI:
https://doi.org/10.32628/CSEIT241061125Keywords:
Facial Feature Localization, Real-time Processing, Machine Learning, Key Facial Features, Detection, ApplicationAbstract
The facial feature localization system with machine learning (ML) is an innovative solution designed to accurately detect and locate key facial landmarks. By integrating advanced ML algorithms, the system processes images or video streams in real time to identify the positions of facial features such as the eyes, nose, mouth, and jawline. The ML component analyses the data to precisely locate these features, enabling applications in areas like facial expression analysis and biometric verification. This approach enhances accuracy by adapting to various lighting conditions, face orientations, and individual facial variations. The system’s scalability and flexibility further extend its utility, supporting diverse applications across industries like healthcare, security, and human-computer interaction. Overall, this project represents a significant advancement in facial feature localization, using IoT and ML to enable more effective and accurate facial analysis. By adapting to various lighting conditions, face orientations, and individual facial variations" to "by adapting to diverse lighting conditions, different face orientations, and individual facial variations, ensuring reliable performance in various environments.
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Jain, A. K., Ross, A., Sofer, N. C. (2011). Handbook of Face Recognition. Springer. Comprehensive guide on facial recognition techniques.
Zhao, W., Chellappa, R., Phillips, P. J., Rosenfeld, A. (2003). Face Recogni tion: A Literature Survey. ACM Computing Surveys, 35(4), 399-458. 3.
LeCun, Y., Bengio, Y., Hinton, G. (2015). Deep Learning. Nature, 521(7553), 436-444. Fundamental paper on deep learning techniques.
Masi, I., Wu, Y., Hassner, T., Vaisman, R. (2018). Deep Face Recognition: A Survey. arXiv:1804.06655. Survey of deep learning advancements in face recognition.
Yang, M. H., Zhang, J., Wang, Y. (2010). Face recognition based on robust PCA. In Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition.
Nguyen, A.T., Donnelly, K., Hill, L. (2018). Industry-specific interview prepa ration: Tailoring practice to career goals. Career Development Quarterly, 66(3), 222-234.
Huang, G. B., Wang, Y., Wu, W., Wu, X. (2008). Labeled faces in the wild: A database for studying face recognition in unconstrained environments.
Deng, J., Guo, J., Verbeek, J. (2019). ArcFace: Additive Angular Margin Loss for Deep Face Recognition. IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). This paper presents the ArcFace loss function, which improves the performance of deep face recognition models. [9] Taigman, Y., Yang, M., Ranzato, M., Wolf, L. (2014). DeepFace: Closing the gap to human-level performance in face verification. [10] Schroff, F., Kalenichenko, D., Philbin, J. (2015). FaceNet: A Unified Embed ding for Face Recognition and Clustering.
He, K., Zhang, X., Ren, S., Sun, J. (2016). Deep Residual Learning for Image Recognition.
Rosebrock, A. (2017). Deep Learning for Computer Vision with Python. PyImage Search.
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