of land covers. Each elements (i, j) of the time-domain co-
occurrence matrix is defined as probability that two pixels with
a specified time-separation delta-t in the same spatial position
have pixel value i and j. Conventional co-occurrence
matrix(that is spatial domain co-occurrence matrix) represents
spatial texture while the proposed time-domain co-occurrence
matrix represents time-series signature.
Figure 3a shows pixel values of annual time-series data
conceptual. The time-domain co-occurrence matrices shown in
Figure 3b are derived from this time-series data in the case of
one month separation. That is, a time-series changing pattern of
pixel values produces the corresponding probability distribution
pattern in the matrix. Time-domain co-occurrence matrix takes
advantage of robustness against data loss and noise derived
from cloud and undesirable fluctuation of calculated reflectance
values.
* Deciduous Forest * Desert
E
a &
0
= #
F (1 6,68 à 6 6 6,8 à 9
> 8 E
©
X i d
a
ge
a
JAN A
FEB à
MAR 4
APR A
MAY A
JUN A
UE =
AUG A
SEP i
SOU dj
NOV
DEC 4
(a) annual time-series
(b) time-domain co-occurrence matrices
Figure 3. Conceptual examples of time-domain co-
occurrence matrix.
In our experiments, two kinds of pixel value were examined.
The first one is surface reflectance. The second one is spectral
cluster that is extracted by clustering in seven spectral bands for
46 scenes data set. It is expected that spectral clusters absorb
undesirable fluctuation of surface reflectance. And time
separation delta-t from one to six months were examined in
order to search proper delta-t.
3.2 Classifier
The non-parametric minimum distance classifier was introduced
for time-domain co-occurrence matrix. Euclidean distance
dE(x,c) and cosine distance dn(x,c) between a pixel-x and a
training class-c were examined in this experiments. The
distance dE(x,c) and dn(x,c) are defined as Eq.(1) and Eq.(2),
respectively.
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
de(x,c)= } | 2) 2. (Maij) -MesCij))2
E à (D
S^ 3 Y" Maij) Mes ij)
dn(x,0)=— LS
2 12 we , 2 2 1 MG)
bz1
Q)
M,»(i.j) is a component (i, j) of the time-domain co-occurrence
matrix measured from band-b in time-series data set for a pixel-
X. M;p(i,j) is that measured from band-b time-series data set for
the training area of a class-c.
4. CLASSIFICATION EXPERIMENTS
4.1 Land Cover Category
Table 1 presents the land cover categories which are same with
IGBP Land cover categories. These 17 categories were used in
our classification experiments.
Table 1. Land cover categories(IGBP legend).
. Water EN
. Evergreen Needleleaf Forest
. Evergreen Broadleaf Forest
. Deciduous Need leaf Forest
. Deciduous Broadleaf Forest
. Mixed Forests
. Closed Shrublands
. Open Shrublands
9. Woody Savannas
© NN ON tA AW ON —
10. Savannas
11. Grasslands
12. Permanent Wetlands
13. Croplands
14. Urban and built-up
15. Cropland/Natural Vegetation Mosaic
16. Permanent snow and ice
17. Barren/Sparsely vegetated BE
4.2 Training and Accuracy Estimation
84 classification classes were prepared for IGBP 17 categories,
because each category consists of several classification classes.
About 9,000 pixels on the average for each class and about
400,000 pixels in total have been extracted as training data.
Figure 4 and Figure 5 show examples of training data for
"evergreen needleleaf forest" and " barren/sparsely vegetated”,
respectively. Figure 6 shows examples of obtained time-domain
co-occurrence matrix for "deciduous needleaf forest" and "
savannas".
(c)tim.
one
area
Figure
(c) tin
one pi
Figure
(a)"
Figure