Face recognition that is invariant to pose and illumination is a problem solved effortlessly
by the human brain, but the computational details that underlie such efficient
recognition are still far from clear.
This thesis draws on research from psychology and neuroscience about face and object
recognition and the visual system in order to develop a novel computational
method for face detection, feature selection and representation, and memory structure
for recall.
A biologically plausible framework for developing a face recognition system will be
presented. This framework can be divided into four parts: 1) A face detection
system. This is an improved version of a biologically inspired feedforward neural
network that has modifiable connections and reflects the hierarchical and elastic
structure of the visual system. The face detection system can detect if a face is
present in an input image, and determine the region which contains that face. The
system is also capable of detecting the pose of the face. 2) A face region selection
mechanism. This mechanism is used to determine the Gabor-style features corresponding
to the detected face, i.e., the features from the region of interest. This
region of interest is selected using a feedback mechanism that connects the higher
level layer of the feedforward neural network where ultimately the face is detected to an intermediate level where the Gabor style features are detected. 3) A face recognition
system which is based on the binary encoding of the Gabor style features
selected to represent a face. Two alternative coding schemes are presented, using
2 and 4 bits to represent a winning orientation at each location. The effectiveness
of the Gabor-style features and the different coding schemes in discriminating faces
from different classes is evaluated using the Yale B Face Database. The results from
this evaluation show that this representation is close to other results on the same
database. 4) A theoretical approach for a memory system capable of memorising
sequences of poses. A basic network for memorisation and recall of sequences of
labels have been implemented, and from this it is extrapolated a memory model
that could use the ability of this model to memorise and recall sequences, to assist
in the recognition of faces by memorising sequences of poses.
Finally, the capabilities of the detection and recognition parts of the system are
demonstrated using a demo application that can learn and recognise faces from a
webcam.
Date of Award | 2015 |
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Original language | English |
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Awarding Institution | |
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Supervisor | Roman Borisyuk (Other Supervisor) |
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- Face recognition
- primary visual cortex modeling
- Computational Neuroscience
- Computer Vision
- low level features
- Hierarchical processing
- Face detection
- Face memory organization
Brain inspired approach to computational face recognition
da Silva Gomes, J. P. (Author). 2015
Student thesis: PhD