International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B3. Istanbul 2004
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ised-ECHO performance and the feature-map
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Figure 4. Ssuperv
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Classification accuracy is dependent on both the classification
algorithm and the training sample set, furthermore, it is slightly
dependent on the window size. The performance of the object-
feature is compared with the performance of the original pixel-
features from the same scene, when the M.L. Bayes Gaussian
decision rule is selected.
Spectral information of surrounding pixels is correlated with the
centred pixel under consideration. In object detection the
spectral features of adjacent pixels are considered using
neighbouring information; thus the object-feature which we
represent them in this experiment only by (S <L) built upon
both spectral and contextual information. Therefore, it is
expected that the classification accuracy to be higher by using
object-feature rather than the individual pixel-feature (notice
that we did not consider effect of V in the classification of
object-feature using M.L. decision rule). Tables | and 2 show,
by using the object-feature, for example, the wheat field
classified better than when the pixel-features are used for its
classification. A test for robustness of the path hypothesis and
accuracy of the unity relation shows that the functional based
on path-hypothesis, can detect a single randomly selected pixel
in a relatively large soybean field which is replaced by a pixel
from some other ground cover types, see Figure 5.
5. SUMMARY AND CONCLUSION
In order to reduce data redundancy in multispectral imagery we
have proposed a model, based on a scene object- description,
for multispectral image representation. We have developed an
on-line unsupervised object-feature extraction algorithm (called
AMICA) which detects the objects by using the unity relation
based on the path-hypothesis. The unity relation among the
pixels of an object can be defined with regard to the: adjacency
relation, spectral-feature and spatial-feature characteristics in an
object. Based on the path-hypothesis the data read sequentially
into the system. The unity relation between a current pixel and
the path-segments (objects in the observation space) are
examined, the current pixel may be merged into an appropriate
object or it will initiate a new object. An object is represented
by a relevant object-feature set. AMICA is implemented to real
multispectral image data. The performance of the object-
features is compared with the performance of the original pixel-
feature. Three different evaluation strategies (overall
misplacement error, feature classification performance and
subjective object appearance) are selected for comparative
feature evaluation using the pixel-features and the object-
features. The experimental results indicate that data volume is
reduced by a significant amount (the size of the feature-space
for scene representation is reduced by a factor more than 25
which is data dependent). In addition, the accuracy of
information extracted from the object-features (as measured by
classification accuracy) is greater than obtained when using the
original pixel-features.
The correlation among the adjacent pixels in the image data
appears in the form of redundancy in the spectral-spatial
features. Spectral information of surrounding pixels is
correlated with the centred pixel under consideration. In object
detection the spectral features of adjacent pixels are considered
using neighbouring information. Therefore, it is expected that
the classification accuracy to be higher by using object-feature
rather than the individual pixel-feature. The improvement of the
classification performance is consequence of incorporation of
the spatial information in the object-feature extraction decision
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