International Archives of Photogrammetry and Remote Sensing, Vol. 32, Part 7-4-3 W6, Valladolid, Spain, 3-4 June, 1999
evaluation of semi-automatic road extraction from aerial images.
This buffer method was modified for our purpose to assess the
quality of the delineated stand borders.
The principle of the buffer-method is described in Fig. 2.
Fig. 2. Matching principle of the delineated stand borders and
the reference geometry: buffer method after Heipke et
al. (1998).
In the first step, a buffer of constant predefined width (buffer
width) is constructed around the reference forest inventory
border (dotted box). The parts of the delineated geometry
(dotted line) within the buffer are considered as matched (see
Figure 2a). The matched extracted data are denoted as true
positive with length TP. The unmatched delineated data are
denoted as false positive with the length FP.
In the second step, matching is performed the other way round.
The buffer is now placed around the delineated border, and the
parts of the reference data lying within the buffer are considered
to be matched and called true negative with length TN (see
Figure 2b). The unmatched reference data are denoted as false
negative with the length FN.
Heipke et al. suggest to calculate this quality measure with the
intention to compare the results of different road extraction
methods, not as a perfect solution for quality assessment. As
quality measure, the authors defined:
Completeness = length of matched reference
length of reference
= TN / (TN + FN), optimum value is 1
Correctness = length of matched delineation
length of delineation
= TP / (TP + FP), optimum value is 1
Quality = length of matched delineation
length of delineation + length of unmatched ref.
= TP / (TP + FP + FN), optimum value is 1
For the above mentioned purpose, correctness is the most
important quality measure: it represents the percentage of
correctly delineated forest stand border, explicitly the percentage
of the delineated stand border within the buffer placed around
the reference. The quality is a more general measure of the final
result giving a combination of completeness and correctness in
one single expression.
3. RESULTS
All three sensor fusion methods (IHS, PCA, Brovey) showed a
synergy effect by combing high spectral and spatial satellite
data. The integration of high resolution data increased the
visible interpretability of multispectral data for updating forest
maps. This is caused by the improved recognition of linear
features like logging roads, stand borders and also textural
patterns.
For visual interpretation, the IHS transformation showed the
best colour differentiation (Figure 3). The visual impression of
the PCA transformation is similar to the IHS transformation.
Coniferous and deciduous trees can be detected very clearly.
Even clear-cuts appear in violet-red colours.
The result of the Brovey transformation showed comparatively
poor differentiation in brightness and tone. Although the
colouring is similar to a NIR image, the interpretability of
different forest types and age classes is more difficult. This is
also due to the high spectral resolution of the TM with three IR
bands.
Fig. 3. Fused images of KVR and AIF with 2m resolution.
Due to the good performance of the IHS transformation, the
applicability of sensor fusion techniques for forest inventory
mapping has been investigated with an IHS transformed product
of Landsat TM and IRS-1C pan [IHSTM], This product was
compared to an IHS transformed SPOT XS and PAN [IHS SP],
IRS-1C pan [Pan] alone, a B/W orthophoto [Ortho] and a
simulated QuickBird image [Qsim] with lm resolution (see
Table 4).
3.1. Visibility percentage
The first analysis step was to measure the visibility percentage
of forest stand borders in comparison to the official forest