Empreu aquest identificador per citar o enllaçar aquest ítem: http://elartu.tntu.edu.ua/handle/lib/34232
Registre complet de metadades
Camp DCValorLengua/Idioma
dc.contributor.advisorЛуцків, Андрій Мирославович-
dc.contributor.advisorLutskiv, Andriy-
dc.contributor.authorAboulfadel, Mohamed-
dc.date.accessioned2021-02-15T09:54:45Z-
dc.date.available2021-02-15T09:54:45Z-
dc.date.issued2021-01-
dc.date.submitted2021-01-
dc.identifier.citationАбуальфадел М. Розумний відео-дзвінок на основі Raspberry Pi / Абульфадел Мухамед // ТНТУ, ФІС, Тернопіль, 2021. 76 с.uk_UA
dc.identifier.urihttp://elartu.tntu.edu.ua/handle/lib/34232-
dc.description.abstractBeing a student of Computer Engineering gave me a chance to choose this project where im going to explain how I made a Smart Doorbell with Face recognition real-time. Using the Raspberry PI 3 model B+ and PI Camera. In The software part I used Python programing language to write my code and SQL for the Database.uk_UA
dc.description.tableofcontentsIntroduction. 1. Analysis of subject area. 2. Hardware components the smart door-bell with real-time face recognition. 3. Software smart door-bell with real-time face recognition. 4. Occupational safety and health. Conclusionsuk_UA
dc.language.isoenuk_UA
dc.publisherТернопільський національний технічний університет імені Івана Пулюяuk_UA
dc.subjectRaspberry Piuk_UA
dc.subjectOpenCVuk_UA
dc.subjectPythonuk_UA
dc.subjectreal-time face recognitionuk_UA
dc.titleРозумний відео-дзвінок на основі Raspberry Piuk_UA
dc.title.alternativeSmart door-bell based on Raspberry PIuk_UA
dc.typeBachelor Thesisuk_UA
dc.contributor.committeeMemberБоднарчук, Ігор Орестович-
dc.contributor.committeeMemberBodnarchuk, Ihor-
dc.coverage.placenameТернопільський національний технічний університет імені Івана Пулюяuk_UA
dc.format.pages76-
dc.subject.udc004.4uk_UA
dc.relation.references1. A. J. Colmenarez and T. S. Huang, “Face detection and recognition,” NATO ASI Series F Computer and Systems Sciences, vol. 11, no. 2, pp. 208–218, 1998. 2 .T. Kondo and H. Yan, “Automatic human face detection and recognition under non-uniform illumination,” Pattern Recognition, vol. 32, no. 10, pp. 1707–1718, 1999 3. L. H. Koh, S. Ranganath, and Y. V. Venkatesh, “An integrated automatic face detection and recognition system,” Pattern Recognition the Journal of the Pattern Recognition Society, vol. 35, no. 6, pp. 1259–1273, 2002. 4. S. Chaudhry and R. Chandra, “Face detection and recognition in an unconstrained environment for mobile visual assistive system,” Applied Soft Computing, vol. 53, pp. 168–180, 2017. 5. M. H. Siddiqi, R. Ali, A. M. Khan, E. S. Kim, G. J. Kim, and S. Lee, “Facial expression recognition using active contour-based face detection, facial movement-based feature extraction, and non-linear feature selection,” Multimedia Systems, vol. 21, no. 6, pp. 541–555, 2015. 6. S. Zhang, X. Zhu, Z. Lei, X. Wang, H. Shi, and S. Z. Li, “Detecting face with densely connected face proposal network,” Neurocomputing, vol. 284, pp. 119–127, 2018. 7. S. Madhavan and N. Kumar, “Incremental methods in face recognition: a survey,” Artificial Intelligence Review, vol. 284, no. 5, pp. 119–127, 2019. 8. Y. Zhang, Y. Huang, S. Yu, and L. Wang, “Cross-view gait recognition by discriminative feature learning,” IEEE Transactions on Image Processing, vol. 99, 9. H. Shao, S. Chen, J. Zhao, W. Cui, and Y. U. Tianshu, “Face recognition based on subset selection via metric learning on manifold,” Frontiers of Information Technology & Electronic Engineering, vol. 16, no. 12, pp. 102–118, 2015. 10. A. K. Bobak, A. J. Dowsett, and S. Bate, “Solving the border control problem: evidence of enhanced face matching in individuals with extraordinary face recognition skills,” PLoS One, vol. 11, no. 2, Article ID e0148148, 2016. 11. Z. Lu, X. Jiang, and A. Kot, “Feature fusion with covariance matrix regularization in face recognition,” Signal Processing, vol. 144, pp. 296–305, 2018. 12. B. Samik and D. Sukhendu, “Mutual variation of information on transfer-CNN for face recognition with degraded probe samples,” Neurocomputing, vol. 310, pp. 299–315, 2018. 13. A. Rikhtegar, M. Pooyan, and M. T. Manzuri-Shalmani, “GA-optimized structure of cnn for face recognition applications,” IET Computer Vision, vol. 10, no. 6, pp. 559–566, 2016. 14. Y. X. Yang, C. Wen, K. Xie, F. Q. Wen, G. Q. Sheng, and X. G. Tang, “Face recognition using the SR-CNN model,” Sensors, vol. 18, no. 12, p. 1, 2018. 15. Computer-associated health complaints and sources of ergonomic instructions in computer-related issues among Finnish adolescents: A cross-sectional study 16.Paula T Hakala, Lea A Saarni, Ritva L Ketola, Erja T Rahkola, Jouko J Salminen & Arja H Rimpelä BMC Public Health volume 10, Article number: 11 (2010)uk_UA
dc.identifier.citationenAboulfadel M. Smart door-bell based on Raspberry PI /Aboulfadel Mohamed// Ternopil Ivan Puluj National Technical University, Faculty of Computer Information Systems and Software Engineering //Ternopil, 2021 // p.76uk_UA
dc.contributor.affiliationТернопільський національний технічний університет імені Івана Пулюяuk_UA
dc.coverage.countryUAuk_UA
Apareix a les col·leccions:123 — Комп’ютерна інженерія (бакалаври)

Arxius per aquest ítem:
Arxiu Descripció MidaFormat 
Dipl_Aboulfadel-final.pdf2,54 MBAdobe PDFVeure/Obrir


Els ítems de DSpace es troben protegits per copyright, amb tots els drets reservats, sempre i quan no s’indiqui el contrari.

Eines d'Administrador