Acceso abierto

Deep Learning-Driven Real-Time Facial Expression Tracking and Analysis in Virtual Reality

  
03 sept 2024

Cite
Descargar portada

Taskiran, M., Kahraman, N., & Erdem, C. E. (2020). Face recognition: Past, present and future (a review). Digital Signal Processing, 106, 102809. Search in Google Scholar

Kortli, Y., Jridi, M., Al Falou, A., & Atri, M. (2020). Face recognition systems: A survey. Sensors, 20(2), 342. Search in Google Scholar

Yu, J., & Wang, Z. (2017). A video-based facial motion tracking and expression recognition system. Multimedia Tools and Applications, 76, 14653-14672. Search in Google Scholar

Khan, M., Chakraborty, S., Astya, R., & Khepra, S. (2019, October). Face detection and recognition using OpenCV. In 2019 International Conference on Computing, Communication, and Intelligent Systems (ICCCIS) (pp. 116-119). IEEE. Search in Google Scholar

Andriana, D., Prihatmanto, A. S., Hidayat, E. M. I., & Machbub, C. (2017). Combination of face and posture features for tracking of moving human visual characteristics. International Journal on Electrical Engineering and Informatics, 9(3), 616-631. Search in Google Scholar

Chen, L., Shao, Y., Mei, Y., Chu, H., Chang, Z., Zhan, H., ... & Yang, G. (2019, May). Using KCF and face recognition for outdoor target tracking UAV. In Tenth International Conference on Graphics and Image Processing (ICGIP 2018) (Vol. 11069, pp. 153-158). SPIE. Search in Google Scholar

Chrysos, G. G., Antonakos, E., Snape, P., Asthana, A., & Zafeiriou, S. (2018). A comprehensive performance evaluation of deformable face tracking “in-the-wild”. International Journal of Computer Vision, 126, 198-232. Search in Google Scholar

Bah, S. M., & Ming, F. (2020). An improved face recognition algorithm and its application in attendance management system. Array, 5, 100014. Search in Google Scholar

Schofield, D., Nagrani, A., Zisserman, A., Hayashi, M., Matsuzawa, T., Biro, D., & Carvalho, S. (2019). Chimpanzee face recognition from videos in the wild using deep learning. Science advances, 5(9), eaaw0736. Search in Google Scholar

Bours, C. C. A. H., Bakker-Huvenaars, M. J., Tramper, J., Bielczyk, N., Scheepers, F., Nijhof, K. S., ... & Buitelaar, J. K. (2018). Emotional face recognition in male adolescents with autism spectrum disorder or disruptive behavior disorder: an eye-tracking study. European child & adolescent psychiatry, 27, 1143-1157. Search in Google Scholar

Hoo, S. C., & Ibrahim, H. (2019). Biometric‐Based Attendance Tracking System for Education Sec tors: A Literature Survey on Hardware Requirements. Journal of Sensors, 2019(1), 7410478. Search in Google Scholar

Killioğlu, M., Taşkiran, M., & Kahraman, N. (2017, January). Anti-spoofing in face recognition with liveness detection using pupil tracking. In 2017 IEEE 15th International Symposium on Applied Machine Intelligence and Informatics (SAMI) (pp. 000087-000092). IEEE. Search in Google Scholar

Do, N. T., Kim, S. H., Yang, H. J., Lee, G. S., & Na, I. S. (2018, February). Face tracking with convolutional neural network heat-map. In Proceedings of the 2nd International Conference on Machine Learning and Soft Computing (pp. 29-33). Search in Google Scholar

Sawhney, S., Kacker, K., Jain, S., Singh, S. N., & Garg, R. (2019, January). Real-time smart attendance system using face recognition techniques. In 2019 9th international conference on cloud computing, data science & engineering (Confluence) (pp. 522-525). IEEE. Search in Google Scholar

Arsenovic, M., Sladojevic, S., Anderla, A., & Stefanovic, D. (2017, September). FaceTime—Deep learning based face recognition attendance system. In 2017 IEEE 15th International symposium on intelligent systems and informatics (SISY) (pp. 000053-000058). IEEE. Search in Google Scholar

Patel, V. G., & Suthar, A. (2018). Human Face Detection and Tracking. International Journal of Computer Engineering & Technology, 9(4), 187-195. Search in Google Scholar

Lin, C. C., & Hung, Y. (2018). A prior-less method for multi-face tracking in unconstrained videos. In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (pp. 538-547). Search in Google Scholar

Niranjan, D. K., & Rakesh, N. (2021). Smart Surveillance System by Face Recognition and Tracking Using Machine Learning Techniques. In Computational Vision and Bio-Inspired Computing: ICCVBIC 2020 (pp. 1-14). Springer Singapore. Search in Google Scholar

Weng, Z., Zhuang, H., Li, H., Ramalingam, B., Mohan, R. E., & Lin, Z. (2022). Online Multi-Face Tracking With Multi-Modality Cascaded Matching. IEEE Transactions on Circuits and Systems for Video Technology. Search in Google Scholar

Lei, Z., Zhang, X., Yang, S., Ren, Z., & Akindipe, O. F. (2020). RFR-DLVT: a hybrid method for real-time face recognition using deep learning and visual tracking. Enterprise Information Systems, 14(9-10), 1379-1393. Search in Google Scholar

Zhang, C., Li, T., Li, B., & Ye, X. (2018, July). Face recognition and tracking system based on embedded platform. In 2018 10th International Conference on Modelling, Identification and Control (ICMIC) (pp. 1-5). IEEE. Search in Google Scholar

Lian, Z., Shao, S., & Huang, C. (2020). A real time face tracking system based on multiple information fusion. Multimedia Tools and Applications, 79(23), 16751-16769. Search in Google Scholar

Li, X., & Lang, J. (2018, May). Simple real-time multi-face tracking based on Convolutional neural networks. In 2018 15th Conference on Computer and Robot Vision (CRV) (pp. 337-344). IEEE. Search in Google Scholar

Zichen He & Danian Li.(2024).Real-time segmentation of short videos under VR technology in dynamic scenes.Journal of Intelligent Systems(1), Search in Google Scholar

Zhaotan Gao,Ruiqi Jiang,Menghan Deng,Can Zhao,Zian Hong,Liyan Shang... & Zhigao Hu.(2024). Tunable Negative and Positive Photoconductance in Van Der Waals Heterostructure for Image Preprocessing. Advanced materials (Deerfield Beach, Fla.)e2401585-e2401585. Search in Google Scholar

Gadal Sébastien & Gloaguen Thomas.(2024).Performance of Landsat 8 OLI and Sentinel 2 MSI Images Based on MNF Versus PCA Algorithms and Convolution Operators for Automatic Lithuanian Coastline Extraction.SN Computer Science(3), Search in Google Scholar

Ishak Pacal,Melek Alaftekin & Ferhat Devrim Zengul.(2024).Enhancing Skin Cancer Diagnosis Using Swin Transformer with Hybrid Shifted Window-Based Multi-head Self-attention and SwiGLU-Based MLP..Journal of imaging informatics in medicine Search in Google Scholar

Wang Lixiong,Liu Hanjie,Pan Zhen,Xu Ye,Fan Dian,Zhou Ciming & Li Yuan.(2023).Temperature demodulation for optical fiber F-P sensor based on DBNs with ensemble learning.Optics and Laser Technology Search in Google Scholar