International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B1. Istanbul 2004
Figure 3. Sample points imposed on a sampled image.
3.2 Bidirectional dataset
As the end product, a large amount of directionally defined data
was generated. A single entry in a dataset consists of the
following data: sensor id (1-9), camera and sample point
locations, slope, aspect, sampled intensity, sensor azimuth,
nominal measuring angle, sun azimuth, sun zenith angle,
measuring azimuth, measuring zenith angle, relative azimuth
(sun-camera), brdf azimuth, brdf zenith angle, sun azimuth and
sun zenith angle relative to surface normal, measuring azimuth
and measuring zenith angle relative to surface normal, relative
azimuth using the inclined surface and finally the primary and
secondary classes according to the corresponding
classifications.
The total amount of data was 4.3Gbytes of ASCII files named
according to date, the sensor bandwidth, and the flight strip
number. The wavelength range of the data extends from 395 to
1015 nanometres and the radiometric resolution of the data is 8
bits.
a b
Figure 4. Bidirectional effect for (a) pine and (b) spruce copse
using the HRSC-A based data set. Surface normalised sun
zenith in (a) 90° and in (b) 60° (blue circle).
Figure 5. Grey level variation of spruce, birch and pine as
function of viewing angle. Sun zenith angle 50 degrees.
In figures 4 and 5, some of the sampled target reflectance
anisotropy are presented. In these presentations the surface
compensated BRDF is used, an eight bit image DN as a
anisotropy unit. Presentations show potential of providing
additional information for tree species determination.
3.3 Analysis of accuracy
Because of the short image acquisition period of a single strip,
the sun movements during the image acquisition can considered
to be constant. Due to this assumption and the distance from the
feasibility point used in sun angle calculations the maximum
azimuth error was estimated to be 0.30° and the zenith angle
error to be 0.06° at the both ends of an image strip. For the
selected intensive areas errors are obviously smaller.
The accuracy of the viewing direction is a function of the
accuracy of the attitude data of the sensor. Sensor attitude was
systematically corrected, based on empirical measures, on an
average of 0.80° for pitch and 0.20° for yaw, most likely due to
the map projection. The need could not be specified exactly,
however, and must thus be included as a source of uncertainty
in the data. The linear densification of the positioning and
attitude data adds some minor uncertainty to the viewing
direction. This is considered to lie within acceptable limits
relative to the imaginable range of applications using the data.
The surface normal direction is more problematic. The angular
behaviour of the calculated slope and aspect layers were studied
using surface normal vectors for the two sequential digital
surface models. Surface normal vectors were constructed at
each point and the angular difference was calculated. In Figure
6, this difference is represented by means of a raster image. The
calculated mean difference was 9.2? and the standard deviation
15.1?. At maximum, the obtained angular difference was 164.8?
for some forest pixels.
Figure 6. Surface normal uncertainty.
The surface normal uncertainty is mainly caused by the
smoothness of the terrain models, e.g. the model fills in small
gaps between trees and other structures. The edges between
forests and low vegetation seems also to be problematic.
The angular variability was most prominent in forested areas,
while for farmlands and water areas it was much smaller. This is
due both to mutual occlusion and shadowing of trees, which
affect the DSM processing, and to the automatic-image-based
DSM creation itself. The spatial and height resolutions of the
DSM also play a role in this behaviour.
4. CONCLUSIONS
In this study, multi angular HRSC-A images and digital surface
models were used in examination of bidirectional reflectance
from multi angular high-resolution HRSC-A images. Method
uses high-resolution DSM to approximate the orientation of the
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