Range (m) eo6 eo7 eo8 eo9 | eo10
- 10.05 16.9 16.4 16.7 15.8 |. 17.1
+0.10 31.9 31.1 32.2... 31.4 | 32.1
ed 10.15 45.5 43.7| 46.2| 47.0| 46.6
10.20 56.7 5701 58.7| 59.0 | 59.0
Under -0.20 11.6 11.5 14.21 11:017 41:2
Over 40.20 31.7 | 31.5 | 296 | 300 | 298
Table 6 ERDAS DEM Comparison Statistics,
Beach Only (96 of beach points)
Range (m) | is01 | is02 | is03 | is04 | is05 | is06
10.05 84| 75 74! 93] 87! 104
+0.10 15.5 | 16.3 | 16.8 | 19.3 | 18.4 | 19.9
+0.15 23.4 | 24.2 | 26.2 | 27.8 | 28.7 | 30.1
+0.20 31.6 | 32.0 | 32.6 } 37.6 | 38.0 | 38.3
Under -0.20 | 33.5 | 29.4 | 27.8 | 23.0 | 21.8 | 20.6
Over +0.20 | 34.9 | 38.6 | 39.6 | 39.4 | 40.2 | 41.0
Table 7 ImageStation DEM Comparison Statistics,
Cliff Only (% of cliff points)
J ANR
eo1 eo2 eo3 eo4 eo5
+0.05 9.1 9.3 8.3 10.7 8.5
+0.10 17.8 17.0 14.9 |. 20.4 |- 17.8
10.15 27.8 24.7 22.9 28.1 | 26.9
+0.20 35.9 34.9 29.6 37.1 | 35.7
Under -0.20 21.6 21.5 28.7] 20.6] 212
Over «0.20 42.5 43.6 41.7 | 42.3 | 43.1
y Table 8 OrthoMAX DEM Comparison Statistics,
M Cliff Only (96 of cliff points)
ce
iff Range (m) eo6 eo7 eo8 eo9 | eo10
1e X 0.05 9.3 9.7 1.7 8.5 8.0
34 10.10 18.3 18.1 14.8 17.9: 16.3
+0.15 26.9 | 266 206 | 26.4 | 224
+0.20 36.0 86.31 28.6 3611| 31.1
Under -0.20 21.8 20.6 31.5] 22.3] 28.6
Over 40.20 42.2 43.1 39.9| 41.6| 40.3
Table 9 ERDAS DEM Comparison Statistics,
Cliff Only (96 of cliff points)
The optimum DEMs for the beach surface are is01, is02,
eo3 and eo10. Both is01 and is02 have been generated
using a flat terrain setting with a high and medium
smoothing factor, respectively. Not surprisingly, the
poorest ImageStation DEMs have been generated from
the Hilly and Mountainous settings. However, it can be
seen that is04 has similar statistics to both is01 and is02,
and has been generated from a Hilly setting, medium
Smooth parameter. The optimum ERDAS DEMs have
been generated using the larger template sizes and lower
parallax values (see Table 2 and 3).
)
1
6
0
7
1
9
The optimum DEMs for the cliff face are is06, eo4 with
slightly poorer results from is04, is05, eo6 and eo7. The
particular ImageStation DEMs have been generated from
both Hilly and Mountainous settings; the ERDAS DEMs
from smaller minimum and maximum template sizes.
923
However, it is interesting to note that an increase in the
maximum template size, eo4, and not the maximum
parallax, eo6, improved the overall correlation.
Northings |
1 Bottom of Cliff — gp
420500m 7] Top of Cliff Peg
TT Er TTT rT TT TT Tr TTT TTT]
539400m 539600m 539800m 534000m
Eastings
Figure 1 Height Difference Distribution Map (is01)
The Tables have shown the percentages of points within
various ranges but it is also important to identify the
distributions of the height differences. Figure 1 is a
typical example of the distribution of height differences
where the approximate top and bottom of the cliff line
have been identified. A full analysis of these distribution
plots is still in progress to identify the correlation between
the magnitude of the height difference and the
topography and image characteristics. It is interesting to
note from just this single example that there are areas
with greater than x0.2m. in all three coastal zones
(beach, cliff and cliff top).
5. CONCLUSIONS
The results from these simple investigations have
revealed some interesting general features of the
automated digital elevation modelling process. The
choice of parameter settings is important to achieve the
optimum results. Choosing the appropriate simple
terrain defining parameters in the ImageStation does
consistently improve the quality of the results. The
ERDAS system appears to be less predictable when
changing the variable parameters. However, the analysis
is still being undertaken.
The research project is to continue in greater detail to
establish some criteria for using these DEM processes in
the coastal zone. This analysis must be matched with
the practical requirements of the environmental scientists
and may result in a compromise in terms of a rapid data
capture and processing technique, and the quality of
result obtainable.
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B4. Vienna 1996