Towards pose-robust face recognition on video

Wibowo, Moh Edi (2014) Towards pose-robust face recognition on video. PhD thesis, Queensland University of Technology.


This thesis investigates face recognition in video under the presence of large pose variations. It proposes a solution that performs simultaneous detection of facial landmarks and head poses across large pose variations, employs discriminative modelling of feature distributions of faces with varying poses, and applies fusion of multiple classifiers to pose-mismatch recognition. Experiments on several benchmark datasets have demonstrated that improved performance is achieved using the proposed solution.

Impact and interest:

Search Google Scholar™

Citation counts are sourced monthly from Scopus and Web of Science® citation databases.

These databases contain citations from different subsets of available publications and different time periods and thus the citation count from each is usually different. Some works are not in either database and no count is displayed. Scopus includes citations from articles published in 1996 onwards, and Web of Science® generally from 1980 onwards.

Citations counts from the Google Scholar™ indexing service can be viewed at the linked Google Scholar™ search.

Full-text downloads:

244 since deposited on 04 Nov 2014
28 in the past twelve months

Full-text downloads displays the total number of times this work’s files (e.g., a PDF) have been downloaded from QUT ePrints as well as the number of downloads in the previous 365 days. The count includes downloads for all files if a work has more than one.

ID Code: 77836
Item Type: QUT Thesis (PhD)
Supervisor: Tjondronegoro, Dian W., Chandran, Vinod, & Himawan, Ivan
Keywords: Face, Video, Pose , Robust, Recognition, Biometric
Divisions: Current > QUT Faculties and Divisions > Science & Engineering Faculty
Institution: Queensland University of Technology
Deposited On: 04 Nov 2014 06:21
Last Modified: 24 Jun 2017 14:44

Export: EndNote | Dublin Core | BibTeX

Repository Staff Only: item control page