Full text: Technical Commission III (B3)

  
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B3, 2012 
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia 
1.3 Research introduction 
The study site is in Tokyo, Japan. Because of the high density of 
population of Japan, the residential areas are full of houses. The 
houses connect each other and remain almost no space between 
them. Therefore, the biggest difficulty is separate the houses. 
Considering the house roof generally has some ridge or peak 
DSM is used to detect these local highest points which will be 
used to segment the houses. We have visual light air-born 
imagery with blue, green, red and near infrared spectrum. DSM 
for the same area is available and rectified with the imagery. 
A method of extracting and modelling 2D building outline is 
proposed in this paper, which is depicted generally in part 2. 
The segmentation of image-DSM pair to obtain the building 
objects will be described in part 3, while the outline modelling 
will be introduced in part 4. The result of the data of Tokyo 
using our method will be displayed in part 5. 
2. TECHNIQUE GLANCE 
For super cities like Tokyo, millions of houses require accurate 
yet efficient building extraction and modelling system. As we 
know, DSM provides orthogonal height values of the terrain 
which is not available by RGB image. It is free from color or 
material reflection. It makes things simple so that makes it free 
from misunderstood by non-uniform lighting, shade or shadow. 
Sometimes the simple one is the effective one. The question is, 
the spatial accuracy of the DSM is much lower than RGB 
images. Even for radar or LiDAR derived DSM, the accuracy is 
not as good as imagery because of lack of some details. For 
sophisticated building modelling, DSM singular is not enough. 
Efficient employing of image is necessary. Thus there are so 
many literatures about the integrated using of DSM and imagery 
(Rootensteiner 2003, Guo 2003, Franz 2003). We have matched 
image-DSM pair at hand. We can generate the candidate area of 
the buildings from DSM and project them to the image to 
search more accurate features of the buildings. 
We have studied a high efficient marker controlled watershed 
MCW and LSNAT segmentation on DSM which can extract 
both small dense houses and high or large buildings. This result 
will be used here as masks of grouping building parts PPOs 
derived from image. The grouping of PPOs guarantees the 
accurate edge and component of a building. Based on the 
building contour, a modeling process of corner extraction, 
orientation estimation, and refining line model is proposed. 
The technique can be described by the block diagram of Fig.1 
Building contour 
extraction Corner detection 
Polygon modeling 
  
  
  
bol Curvature breaks 1 
[ Mask generation ] at sigma ] ( Line model ] 
Curvature breaks Main orientation 
[Pro segmentation | | at 2*sizma ] estimation ] 
  
PPO grouping Midpcint refining 
Region fullness intercept 
processing correction 
Figure 1 Block diagram of 2D building outline modelling 
method 
42 
3. BUILDING EXTRACTION: BUILDING PPO 
GROUPING 
DSM only reflects height but no colour information and so 
never distracts the observers by the complex texture or colour 
variety for the off-terrain objects. Thus it is reasonable to use 
DSM to detect buildings which are higher above their 
neighbours. MCW is the best proper method for this goal. 
Because the accuracy of DSM in both planar and vertical 
direction is not compactable with visible image in the same 
resolution, the rough building extracted from DSM only give 
the approximated locations and shapes of the buildings. The 
more accuracy building contour is expected to be extracted from 
the image. Buildings extracted from DSM, called masks, are the 
references to group the segmentation objects into buildings. 
E. rs 
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eCognition:; 
Pure pixels. A 
“Mask of 
DSM 
      
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Figure 2 Flow chart graphic interpretation 
Small scale pixel aggregation on the image is employed to 
generate a basic pure pixel object (PPO), which should only 
cover one unique feature. Building blocks segmented by MCW 
are taken as masks to integrate the PPO to a building footprint. 
NDVI is used to remove vegetation objects from the PPO 
filtered by building masks. These integrated PPOs compose a 
building footprint which has quite high accuracy in terms of the 
shape, as shown in Fig.2. 
PPO: 
Pure pixel is a kind of relative concept. Generally it refers to 
pixels reflecting single attribute in a region. For example, an 
area of forests which contains a certain type of tree, or area 
which contains river water. In low or medium resolution remote 
sensed imagery, a lot of pixels reflect mixture of the spectrum of 
multiple terrain targets. In urban and high resolution imagery 
case, visual interpretation can easily recognize the pure pixels. 
If we define relatively small set of target, most pixels can be 
taken as pure pixel belonging to a certain class, such as roof, 
wall, road, road shoulder, line, bridge, tree, water, or band. 
Some uncertain pixels exist, normally not for building structure. 
Therefore, we can group the connecting identical pure pixels as 
a uniform area called pure pixel object (PPO), and process the 
image in term of these PPO to reduce the computation load and 
random error caused by single pixel. To do this, we employed a 
well known software of object-oriented segmentation named 
eCognition in small scale threshold. eCognition merges a pair of 
neighbouring objects with the least dissimilarity in sense of 
spectrum and shape in each iteration, when pixel is taken as the 
initial object. The whole image pixels will be grouped as many 
objects of uniform features. Greater threshold gives larger 
average size of the objects and less number of them. Of course, 
objects under small threshold are more likely "pure". RGB 
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