International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
area image and the total area image. And the deviation of the
residential area pixels presents the grey distribution consistency.
If the deviation is low, the grey distribution consistency is high
for the threshold calculation.
3a Original Image
3c Gauss Blur Deviation Image
3b Gauss Blur Image
Fig 3 Comparison of Gauss Blur Image
Table 2 Comparison of the statistic data in the original image and gauss blur images
Feature Value Max | Min Dev Aver | Entropy | Dif. Of Dev p of Dif. Of Entropy
L6 Total Area 255 0 41.27 128.7 7.30 ;
Original Image. metal Area | 255 | 0 [| 4973] 1269 | 682 8 ER n
Gauss Blur Total Area 180 58 19.03 128.9 6.53 4.63 21 0.70
Original Image Residential Area 162 64 14.40 | 120.8 5.83 ; :
Gauss Blur Total Area 100 38 12.04 57.4 6.27 730 26.5 205
Deviation Image Residential Area 95 74 4.74 83.9 4.22
As Table 2 shown, the difference values of statistic data of the 2.4 Residential Area Extraction from Texture Feature
gauss blur images lessen while the grey range is half of the
original image (the grey value range of original image is 0 to
255 while the grey value range of gauss blur deviation image is
only 74 to 95), thus the absolute difference of deviation
increases too, which means the gauss blur can further improve
the effect of the threshold selection. The most important point is
the high increasing of the average difference especially the
gauss blurring result of the deviation texture image (difference
of average is 26.5, the variation of the average between the
original image and gauss blur deviation image is 28.3 which is
large than the difference of the deviation and average in the
texture image, Section 2.2). In this step, the average can be used
as the threshold feature for the segmentation of the gauss blur
image to obtain best extraction result of the residential area.
Images
With the self-adaptive threshold, the coarse segmentation image
can be obtained. While the outer roads always connect to the
residential area and have similar feature to the roads inside the
residential area. Thus some outer roads are included in the
residential area. Skeleton processing is proposed to eliminate
the road from the residential area. The outer roads have low
width of skeleton, thus we can identify the outer roads with the
width of skeleton to obtain high precision border of the
residential area. Figure 4 is the whole processing flow chart of
the residential area semi-automatic extraction in the high-
resolution image
| Select Seed | [Select Processing Window |
Deviation Calculation
N
Deviation Image
Gauss Blurring
Gauss Blur Image
Iterate to get threshold
Including Road Neighbor
to Residential Area?
Y
| Obtain skeleton of the Region |
Vertical distance of pixel to skeleton
is less than the given value?
V Y
[pixels vertical to skeleton is non-residential pixels |
residential pixels
[Threshold to Gauss blur deviation image |
Region Growing
| Obtain Residential Arca |
[T RS
Pixels vertical to skeleton is
|
A
Segmentation End
s Extraction Board of Residential Ares |
Fig 4 Processing flow chart of the residential area semi-automatic extraction
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