Abstract: (16530 Views)
In this paper, a new Hidden Markov Model (HMM)-based face recognition
system is proposed. As a novel point despite of five-state HMM used in pervious
researches, we used 7-state HMM to cover more details. Indeed we add two new face
regions, eyebrows and chin, to the model. As another novel point, we used a small number
of quantized Singular Values Decomposition (SVD) coefficients as features describing
blocks of face images. This makes the system very fast. The system has been evaluated on
the Olivetti Research Laboratory (ORL) face database. In order to additional reduction in
computational complexity and memory consumption the images are resized to 64×64 jpeg
format. Before anything, an order-statistic filter is used as a preprocessing operation. Then
a top-down sequence of overlapping sub-image blocks is considered. Using quantized SVD
coefficients of these blocks, each face is considered as a numerical sequence that can be
easily modeled by HMM. The system has been examined on 400 face images of the Olivetti
Research Laboratory (ORL) face database. The experiments showed a recognition rate of
99%, using half of the images for training. The system has been evaluated on 64×64 jpeg
resized YALE database too. This database contains 165 face images with 231×195 pgm
format. Using five training image, we obtained 97.78% recognition rate where for six
training images the recognition rate was 100%, a record in the literature. The proposed
method is compared with the best researches in the literature. The results show that the
proposed method is the fastest one, having approximately 100% recognition rate.
Type of Study:
Research Paper |
Received: 2008/10/07 | Accepted: 2013/12/30