X-B8, 2012
bility that a differ-
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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B8, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
Table 1: Evaluation of texture analysis measures through £-tests and classification.
Blue band Green band Red band NIR band
Method | CART | p-value | CART | p-value | CART | p-value | CART | p-value
LE1 0.8429 | 1.66E-05 | 0.8571 | 2.03E-05 0.7 3.15E-08 | 0.6857 0.01
LE2 0.7 7.43E-06 | 0.7429 | 5.09E-06 | 0.8286 | 8.09E-09 | 0.6857 0.0156
LH1 0.7571 | 2.09E-19 | 0.7714 | 1.87E-16 | 0.6857 | 1.07E-04 | 0.6857 0.2447
LH2 0.7286 | 4.67E-09 | 0.7714 | 3.40E-11 | 0.6429 | 1.75E-13 | 0.6857 | 7.09E-04
LHR1 0.7286 | 2.50E-05 | 0.6857 | 1.32E-05 | 0.7143 | 3.50E-08 | 0.6857 | 2.31E-04
LHR2 0.6857 | 1.94E-06 0.6 4.75E-07 | 0.7143 | 2.77E-09 | 0.6429 | 1.46E-04
LHR3 0.6286 | 2.60E-03 | 0.6857 | 3.09E-05 | 0.6857 | 2.81E-07 | 0.6857 | 3.08E-03
LHR4 0.6857 | 3.35E-06 | 0.6571 | 1.65E-07 0.7 2.53E-09 | 0.6857 | 1.89E-04
LBP1 0.7571 | 8.71E-12 | 0.7429 | 4.02E-14 | 0.7714 | 2.67E-11 | 0.6857 0.8751
LBP2 0.7714 | 1.53E-08 | 0.7571 | 7.57E-11 0.8 9.95E-08 | 0.6857 0.0652
LBP3 0.7286 | 3.80E-08 | 0.7429 | 4.37E-09 | 0.6714 | 1.30E-07 | 0.6857 0.9499
LBP4 0.6714 | 1.37E-03 | 0.7857 | 6.00E-04 | 0.6857 | 7.00E-03 | 0.6857 0.3399
LTP1 0.8286 | 7.95E-17 | 0.9143 | 6.21E-19 | 0.7714 | 6.57E-16 | 0.6857 | 1.42E-02
LTP2 0.8 2.66E-14 | 0.9143 | 3.80E-15 | 0.8143 | 2.04E-14 | 0.6857 | 2.69E-02
LTP3 0.8143 | 2.42E-13 | 0.8143 | 2.91E-13 | 0.6571 | 9.75E-09 | 0.6857 0.0177
LTP4 0.6857 | 2.88E-02 | 0.6857 | 5.20E-02 | 0.6857 | 5.71E-02 | 0.6857 0.6509
LTBP1 | 0.7857 | 5.93E-14 | 0.8286 | 3.25E-15 | 0.8857 | 7.74E-15 | 0.6857 | 3.36E-03
LTBP2 0.9 4.94E-16 | 0.9857 | 6.23E-17 | 0.8286 | 1.99E-16 | 0.6857 | 6.28E-03
LTBP3 | 0.8571 | 7.09E-14 | 0.8714 | 1.14E-16 0.8 5.26E-18 | 0.6857 | 7.16E-03
LTBP4 | 0.8286 | 2.32E-17 | 0.9429 | 1.52E-21 | 0.8286 | 1.56E-16 | 0.6857 0.0109
with radius 1, LTBP2, having also a very low p-value and reach-
ing an accuracy of 98.5796. The local variance instance of 3 x 3
size window, LE1, shows a high classification rate in the green
and blue bands and outperforms the local entropy, local entropy
ratio and local binary patterns approaches. As previously, data
from the green band seem to provide the best classification for
almost all measures, apart from the local entropy ratio instances,
for which better classification rates are achieved in the red band.
Similarly to the t-tests, instances based on local ternary and the
modified local binary patterns in the green band are the top per-
forming ones, while data from the NIR band result in the lowest
classification performance for almost all measures.
In general, the lower the p-value of a method, the highest its clas-
sification rate. Therefore, comparing two measures, the one with
the lowest p-value is expected to provide the highest classifica-
tion accuracy. However, as seen in Table 1, this general idea is
not always true. This is caused by the random split of the data
into training and test data, where the existence of outliers may
influence the results of the t-test and classification to a different
degree.
5 CONCLUSIONS AND FUTURE WORK
Considering a multispectral Quickbird image as the only source
of data to discriminate between low and high vegetation habitats,
à series of texture analysis measures, quantifying the degree of
homogeneity of the texture, were proposed and evaluated. The
approach is based on the idea that the shorter and smaller the
vegetation, the more homogeneous the texture of the area will
appear. On the contrary, in areas with tall vegetation, inhomoge-
neous texture appears because vegetation canopy, tree trunks and
ground alternate.
Local variance, local entropy and local binary patterns served as
the basis for the extraction of the proposed measures. Several
Variations and different parameters were tested for each measure
for all the available Quickbird bands. It was found that, in gen-
eral, measures calculated from data from the green band outper-
formed the ones from the other bands. As far as the methods
are concerned, a modification of the local binary patterns ap-
proach, assigning a 0 value to the pixels differing within a pre-
defined range from the central pixel of the window under con-
sideration, the value of 1 otherwise, seemed to outperform the
other approaches in most bands. Among the tested instances of
the method, the rotation variant one with a window radius equal
to 1 calculated in the green band, was the most able to capture
local texture variations and showed the best classification results.
Some instances of another variation of the local binary patterns,
forming ternary numbers, performed similarly well.
In general, instances of different measures performed well in dis-
criminating habitats with vegetation lower or higher than 2m. The
results are promising for future extension to the discrimination
of more height categories. The efficiency of the measures with
other passive sensors can be part of future research tasks, as well
as their application to other spectral bands or combinations of
bands. The results encourage future research in texture analysis
methods as alternatives in vegetation height estimation without
the use of active sensors, such as LiDAR, or the need of exten-
sive field campaigns. This can reduce the cost of land cover and
habitat mapping through the use of less data and facilitate eco-
logical monitoring and environmental sustainability planning.
ACKNOWLEDGEMENTS
The work presented was supported by the European Union Sev-
enth Framework Programme FP7/2007-2013, SPA. 2010.1.1-04:
“Stimulating the development of 490 GMES services in specific
area”, under grant agreement 263435, project BIO_SOS: BIOdi-
versity Multi-Source Monitoring System: from Space To Species,
coordinated by CNR-ISSIA, Bari-Italy.
REFERENCES
Breiman, L., Friedman, J., Stone, C. J. and Olshen, R. A., 1984.
Classification and Regression Trees. Chapman & Hall/CRC,
Boca Raton, FL.