Full text: XVIIIth Congress (Part B3)

Summarizing, relatively simple tasks like outlining single, and 
completely visible roads can be performed successfully. If 
the algorithm can be formulated as a least squares estima- 
tion problem, quality descriptions can also be obtained. The 
more complicated tasks that relate to interpretation of junc- 
tions and the road context are far from being solved. It is 
also clear, however, that much of the available knowledge is 
not adequately modelled and, therefore, not available to the 
interpretation process. 
7 DISCUSSION 
The main issues raised in this paper were the different ways to 
describe and process uncertain data related to updating road 
databases. It was also shown that there are many reasons for 
the poor results in image interpretation. 
Many ways to describe and process uncertain data are based 
on probabilities and Bayes’ rule. Several alternatives, like cer- 
tainty factors, Dempster-Shafer theory, and possibility theory, 
have been applied successfully in some domains of Al, but 
may lead to wrong results in other applications. The need 
for conditional or prior probabilities is often mentioned as a 
disadvantage of Bayesian probabilistic reasoning, but, in gen- 
eral, the alternative strategies can not fill the gap of such 
a lack of (modeled) knowledge. Gathering this information 
remains important. Many claimed advantages of alternatives 
for probabilities, e.g. possibility theory, can also be realized 
with a probabilistic approach [Cheeseman, 1984]. 
Probabilities describe uncertainty, but probability numbers 
themselves are also uncertain. Especially intuitive heuristics 
will often only give us a rough idea about some probabil- 
ity number. The endorsement theory [Cohen, 1985] studies 
how to represent and reason with heuristic knowledge about 
uncertainty. An interesting analogy can be found between 
the concept of external reliability in least squares adjustments 
(the influence of an error in an observation onto the estimated 
unknowns) and the question how changes in probability dis- 
tributions affect the outcome of a reasoning process. 
Most algorithms for automatic road detection have very low 
success rates. The context of an old road database contains 
very useful knowledge to improve this. However, this knowl- 
edge is far from sufficient to solve image interpretation tasks. 
Much additional knowledge concerning the appearances of 
roads in aerial images and the context of roads will need to 
be modelled. 
Uncertainty plays an important role in this knowledge. Much 
of our knowledge is heuristic and therefore uncertain. This 
uncertainty needs to be described in order to properly reason 
with knowledge. In many cases conditional probabilities will 
be appropriate, e.g. P(road direction|terrain slope). 
Propagation of errors is also necessary. The purpose of error 
propagation is not only to assess the quality of the final re- 
sult, but also to value the correctness of intermediate results. 
The latter motive may be even more important. A sound in- 
terpretation can only be made when the quality of all data in 
all processing steps is known. If the results of some step are 
found to be uncertain, this knowledge can be used to formu- 
late multiple alternative hypotheses instead of only pursuing 
the most likely one. 
Modelling knowledge and propagating uncertainty are two 
complicated tasks. A lot of effort will be required to ob- 
tain satisfactory results in automatic image interpretation. It 
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B3. Vienna 1996 
therefore seems a good approach to first start with semi- 
automated methods and gradually increase the interpretation 
tasks of vision algorithms. 
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Cheeseman, P. [1986]: Probabilistic vsFuzzy Reasoning. In: 
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Gunst, M.E. de [1996]: Knowledge Based Updating of Road 
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