Full text: Fusion of sensor data, knowledge sources and algorithms for extraction and classification of topographic objects

International Archives of Photogrammetry and Remote Sensing, Vol. 32, Part 7-4-3 W6, Valladolid, Spain, 3-4 June, 1999 
to information are defined in the following. These definitions 
are those used in information science and have been found in 
several publications (Bijaoui, 1981, Kanal and Rosenfeld, 
1981, Lillesand and Kiefer, 1994, Tou and Gonzalez, 1974). 
Measurements are primarily the output of a sensor. They are 
also called signal, or image in the 2-D case. The elementary 
support of the measurement is a pixel in the case of an image, 
and is called a sample in the general case. By extension, 
measurement denotes the raw information. For example, a 
verbal report is a piece of raw information, and may be 
considered as a signal. In remote sensing, in the visible range, 
the measurements are digital numbers that can be converted 
into radiances once the calibration operations are performed. If 
corrections for the sun angle are applied, one may get 
reflectances that are still considered as signal. 
An object is defined by its properties, e.g., its color, its 
materials, its shape, its neighborhood, etc. It can be a field, a 
building, the edge of a road, a cloud, an oceanic eddy, etc. For 
example, if a classification has been performed onto a 
multispectral image, the pixels belonging to the same class can 
be spatially aggregated. This results into a map of objects 
having a spatial extension of several pixels. By extension, the 
support of a signal (e.g., a pixel) may be considered as an 
object. 
An attribute is a property of an object. Feature is equivalent to 
attribute. For example, the classification of a multispectral 
image allocates a class to each pixel; this class is an attribute of 
the pixel. The equivalent terms label, category or taxon are also 
used in classification. Another well-known example is the 
spatial context of a pixel, computed by local variance, or 
structure function or any spatial operator. This operation can be 
extended to time context in the case of time-series of 
measurements. Equivalent terms are local variability, local 
fluctuations, spatial or time texture, or pattern. By extension, 
any information extracted from an image (or mono-dimensional 
signal) is an attribute for the pixel or the object. The 
aggregation of measurements made for each of the elements of 
the object (for example, the pixels or samples constituting the 
object), such as the mean value, is an attribute. Some authors 
call such attributes, derived from statistical operations on 
measurements, mathematical attributes. 
The properties of an object constitute the state vector of this 
object. This state vector describes the object, preferably in an 
unique way. The state vector is also called feature vector, or 
attribute vector. The common property of the elements of the 
state vector is that they all describe the same object. If the 
object is a pixel (or a sample), the state vector may contain the 
measurements as well as the attributes extracted from the 
processing of the measurements. 
Rules, like the syntax rules in language, define relationships 
between objects and their state vectors, and also between 
attributes of a same state vector. Rules may be state equations, 
or mathematical operations, or methods (that is a suite of 
operations, i.e. of elementary rules). They may be expressed in 
elaborated language. Known examples of such rules are those 
used in artificial intelligence and expert-systems. Decisions 
result from the application of rules on a set of rules, objects and 
state vectors. 
4. THE PROPERTY OF ALIGNMENT 
Several problems are to be solved prior to any process of fusion 
(see e.g., Castagnas 1995, Pau 1988). The information entering 
a fusion process should present several properties. They deal 
with either the selection of the representation space and the 
level of fusion, or with the processing to be applied onto the 
data. 
A common co-ordinate system (e.g., geographical space and 
time) should be found in which the sources data can be 
represented. This is called alignment, or conditioning, or 
positional data fusion. For example, geocoding the images is 
part of the alignment problem. Then, the images can be 
superimposed and mathematical operations can be performed at 
each pixel. 
The alignment problem is difficult and according to some 
authors (see e.g., Thomopoulos 1991; DSTO 1994), it 
differentiates data fusion from data concatenation. Data 
concatenation is accomplished easily and straightforward by 
juxtaposing all the data into the state vector, hence augmenting 
it. These data should be homogeneous. An example is given by 
a time-series of images from the geostationary satellite 
Meteosat. The raw data are processed by Eumetsat, and are 
spatially superimposable once delivered to the customer. In that 
case, at each pixel, one can define a state vector by the 
concatenation of all the observations made at this pixel in the 
period under concern. 
Data fusion requires conversion of the data into a common co 
ordinate frame before concatenation. Alignment should provide 
a general frame of referencing that can apply to homogeneous 
(commensurate) as well as heterogeneous (non-commensurate) 
data. This is a difficult problem, and there is no general theory. 
Even in the simple case of measurements of radiances, which 
are commensurate, it may still be not straightforward. Though 
having the same space reference, two sources may not refer to 
the same object (landscape). In the Meteosat case, the water 
vapour channel does not provide any information on the 
ground, while the visible and infrared channels do so. Another 
example from oceanography is the fusion of observations of sea 
surface temperature, which are relevant to the very surface of 
the ocean, and of ocean colour, which are depth-integrated. 
Data to be fused need to be relevant to the objectives of fusion 
process. Then, these data can be associated or concatenated into 
the state vector of the studied object (landscape). 
This concept of alignment is extended to a wider reference 
space (representation space) which also includes 
standardisation of units, calibration of sensors and atmospheric
	        
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