Full text: Proceedings, XXth congress (Part 4)

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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004 
  
- Terrain: the digital terrain data including Digital 
Elevation Model derived from high-resolution remote 
sensing data covered with orthoimages; 
> Buildings: including the spatial location and attributes 
such as the height of the building and so on; 
- Vegetation: including the elevated vegetation just as a 
tree or forest, and the ground land use information; 
- Time stamp: the time state and its changes 
corresponding to the spatial model; 
- Objects attributes: the ground objects states description; 
And the above factors will be discussed in reconstructing 
spatio-temporal model from airborne SAR images. 
3. TGIS-SURPPORTED SPATIAL MODEL CELL 
3.1 Spatio-temporal model cell conception 
A Temporal Geographic Information System (TGIS) is more 
truthful in the simulation of real world phenomena because it 
includes more real world dimensions of space, time, and 
attribute than a static GIS. At the present, in China, land use 
changes is very rapid and wide, thus the renewing Land Use 
Dynamic Monitoring Database (LUDMD) using remote sensing 
imagery is a frequent process. And so, the LUDMD may be 
researched as a TGIS. 
The object-oriented spatio-temporal model based on space and 
time cube pointed by Worboys, 1992, has considered the 
changes of space, with the absence of attributes changes. This 
paper expands the thought and puts forward the object-oriented 
spatio-temporal cell based on real terrain surface segments. The 
real terrain surface will be segmented into many facets in 
conception, conformed with the ground altitude and the 
attributes with time stamp of objects including the space 
location distribution, height, state and so on, to form a spatio- 
temporal model cell. The whole spatio-temporal model 
comprised of many spatio-temporal cells, which can be 
reconstructed from high-resolution remote sensing data such as 
airborne SAR images and essential GIS data. 
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3.2 Space and time representation 
The three elements of spatio-temporal model cell include the 
space distribution, time information and object attributes. And 
the spatial and temporal changes of the cell are described as a 
4.5 dimension variable, that is, space with 3 dimensions, time 
with 1 dimension, and the attributes 0.5 dimension. Each object 
in the cell can be represented with the formula as follows: 
  
Qs FX. YT.) (1) 
Where 
I = identity code, corresponding to the spatio-temporal model 
cell 
X, Y, Z- three axis of spatial location coordinates system, 
which represents the object spatial distribution, size, shape, and 
topology relations with the others 
T- time information 
A= attributes information of objects. 
In the 4.5D representation, X, Y, Z and T coordinates axis are 
perpendicular with each other, and show the characteristic 
continuous changes of the spatial location and time state for a 
object. But, the attributes are not rigorously dimension and has 
not obviously continuous development, so can be processed as 
0.5D. 
For the objects reconstructed from remote sensing images, the 
unit of X-axis is meter, so as Y and Z. Resolution is the amount 
of detail used to represent an image. Temporal resolution is 
dependent on sampling frequency or the temporal scale at 
which a phenomenon operates. We define the unit of T axis is 
the day, because the airborne SAR system can provide us with 
enough time resolution in day. And, there is the formula as 
follows: 
Zell ZT, i025... ©) 
Where 
i-order of the time interval. 
The values of T are between the two threshold values, TB, the 
beginning time for the object come into being, and TE, the end 
time for it dieing out. Likely, the attributes values are between 
AB and AE, which represent respectively the beginning and 
ending attribute of the object, with a discrete value. 
3.3 Model cell basic relations and accuracy analysis 
Each cell in the spatio-temporal model is defined by a 
succession of periods indicating different landscape states, 
which are time stamped by the day that it represents. Although 
it is difficult to describe directly the relations between those 
cells, we can study the projection of the objects in the cell on 
the axes to open out it. 
Thc projection of a object on X, Y, Z-axes show the spatial 
location, and the changes, including the engendering, dieing, 
extending, deflating, and moving of spatial attributes over time, 
will form a continuous process which is the spatial connection 
relationship between two adjacent model cells when 
reconstructed from two temporal high-resolution airborne SAR 
images. 
On the other hand, the projection of an object on T-axis has the 
form of time interval. An example is a remote sensing image 
time and the time when the same image is recorded could be 
defined by a linear relationship. And each time interval can be 
expressed with (T;, Tis) in two nearby model cells. 
In addition, the relations between attributes of model cells are 
more complicated, which will include the changes including 
land use types in the regions, ownerships of the buildings and 
so on. 
As a simulation process, from static to dynamic state, the 
spatio-temporal model reconstruction brings the problem of the 
accuracy standard. And three types of potential errors have been 
identified: temporal, spatial and attributes classification 
assignment. Moreover, remote sensing images are often used to 
assess change. For example, In order to detect change between 
two images, A and B, subtract A from B to produce a sparse 
 
	        
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