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Cohen, Yafit
checked and defined between certain cluster and land-cover. If a checked cluster was found distinctive, i.e. relates to one
land cover type, (one-to-one relationships) a merging rule was formalized. If a checked cluster was found mixed, i.e.
relates to more than one land cover type (complex relationships), a hierarchic splitting rule generation process was
applied. Primarily, splitting potential, which lies in imagery properties was examined. Splitting criteria that could be
explained by environmental or agricultural effect were formalized for further classification. Only if splitting criteria based
on imagery data wasn’t sufficient were spatial properties examined. Actually, most splitting criteria combined imagery
and spatial constraints. By this mechanism each “mixed-cluster” was splitted into more distinguished sub-clusters, which
were then merged respectively with suitable land cover classes. Knowledge engineering was involved in order to make
retrieved relations concept a computer-usable knowledge. They were translated into formal binary rules. Basic rule format
used here is as follows:
IF <condition: C; and C, and …C,> Then «conclusion: Li?
where C; are logical constrains on one or more database features and L; are land cover types. Rule condition referred
firstly to a mixed cluster and then to a set of constraints. In the conclusion part each pixel was labeled with certain land
cover type whenever a set of conditions was true. Actually, the condition and the conclusion parts applied the splitting
and merging actions respectively. Most
knowledge-based systems in remote
sensing analysis utilize evidential
reasoning approach through
Dempster-Shafer theory of evidence
(for example: Lee et al, 1987;
Srinivasan, 1990; Kontoes et al., 1993;
Peddle, 1995). However, in this
framework no evidential values were
attached to rules and as a result no
separation was made between the =
knowledge base and the inference
mechanism and no confidence
calculations were made to evaluate each > s : t s
accepted recognition conclusion. Since Figure 3a. Evidential knowledge-based iterative
there were more than one rule that their classification mechanism
set of conditions were fulfilled in a
single pixel and lead to different m
land-cover, the rules were manually and Oefendes |
iteratively put in changing order till best
recognition was achieved. Figures 3a,b
describe evidential versus definite
knowledge-based iterative classification
mechanisms. Primarily, definitive
approach was applied in order to
examine the potential of multi-source
integration approach for crop YES
recognition in Mediterranean region.
Progressive process will include
evaluation of attached evidential values : : ; :
for each rule, and the application of an Figure 3b. Definite knowledge-based iterative
inference engine separated from the classification mechanism
knowledge base.
Knowledge base
(Evidential rules)
Inference engine
Change of
evaluation
values
Good
Recognition
quality
Change of
rules
Change of
rule
sequence
Good LE NO
Recognition
quality
Change of
rules
2.1.3 Examples of “split-and-merge” criteria extraction
Winter crops
Most winter crops are hardly irrigated as their development considerably depends on rainfall amounts and temporal
distribution. As a result their phenologies are similar and achieving high differentiation between them is not simple.
However, it seems that NDVI temporal values reflect real minor modifications between different winter crops’
phenologies that are not recognized in unsupervised classification. In order to trace these changes, statistical analysis of
mixed clusters was applied with ground reference samples and maximum and minimum values were found for
sub-clusters. Nevertheless, only modifications that reflect real differences between crops were then formulated into
splitting rules.
International Archives of Photogrammetry and Remote Sensing. Vol. XXXIII, Part B7. Amsterdam 2000. 283