Miracle: Facial feature extraction using active appearance model
Date of Publication
2011
Document Type
Bachelor's Thesis
Degree Name
Bachelor of Science in Computer Science
College
College of Computer Studies
Department/Unit
Computer Science
Thesis Adviser
Jocelynn W. Cu
Defense Panel Chair
Ethel Chua Joy Ong
Defense Panel Member
Arnulfo P. Azcarraga
Arturo Caronongan
Abstract/Summary
Emotion detection systems that use facial features as input have been around for quite some time. Determining emotions based on facial features sometimes mistake the emotion for another. The Active Appearance Model (AAM), which is a new technology, shows promising facial feature recognition that could be used to classify emotions based on facial input. Full frontal capture of images was taken as input, and the system identified the region of interest, where the face will be located, which was processed. Once the frames have been fed, it went through a series of image pre-processing. Each image in the AAM requires a total of 68 facial points, which are all relevant. The relevant points were taken from previous system, and other readings, which were used to prove AAMs capabilities over its predecessor, Activate Shape Model (ASM). These relevant facial points will make-up the relevant facial features which will be used for classifying emotions for future systems. Tests were also done, to show other capabilities and limitations of the AAM. The AAM does a better job in face tracking compared to ASM and the use of new features improved the accuracy of emotion classification.
Abstract Format
html
Language
English
Format
Accession Number
TU18498
Shelf Location
Archives, The Learning Commons, 12F, Henry Sy Sr. Hall
Physical Description
1v. various foliation : illustrations (some colored) ; 28 cm.
Recommended Citation
Caronan, G. T., Enriquez, C. T., Huang, Y., & Sia, S. (2011). Miracle: Facial feature extraction using active appearance model. Retrieved from https://animorepository.dlsu.edu.ph/etd_bachelors/11957