International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B3. Istanbul 2004
frontal face images then the system can easily match it to the
database image.
e
Figure 3: Example of the images from ORL face database
Tables 1 to 3 shows sample of the results obtained. If the face
orientation of each sample image does not differ to much form its
frontal face images then the system can easily match it to the
database image. However if the sample images shows a high
variance in term of light illumination and the size of the face itself,
the accuracy of the system reduces.
Table 4 shows the overall result for all ten images for level 2
wavelet decomposition. The system accuracy which is calculated
is 86.25%. It can be seen that some tests showed 10094 accuracy,
but image 8 has showed low accuracy due to the factor mention
previously. Figures 4. 5 and 6 show the performance accuracy of
the proposed system using different wavelet multiresolution and
decompositions, also the accuracy and the efficient of the
proposed method using a different number of orientations.
Table 1
1
2
3
4
5
6
7
8
Table 2
el
22
e2 3
24
2:8
2 6
27
28
S Acc
Table 3
es
Image 4
I e4
4
e4
e4
e4
e4 Yes
e4 Yes
A 62.5%
Table 4
Images System Accuracy (%) for
level 2 Wavelet
Decomposition
Imagel 75
Image2 100
Image3 100
Image4 62.5
Image5 100
Image 6 87.5
Image 7 100
Image 8 37.5
Image 9 100
Image 10 100
Total 86.25
Accuracy
Accuracy of system according to level of Wavelet
100
90
80
70
60
50
40
30
20
10
Accuracy of matching
Figure 4: Accuracy based on Levels of Wavelet
Transform
71.25
1 2 3 4
Wavelet Decomposition level