from 1 to 10 scenes. Beyond NUM values of about 10 to 15
scenes, there appears to be little improvement in either mean
error or RMSE values.
that they are positive supports the previously described
observation that GDEM v2 has proportionally higher elevations
than SRTM in many forested areas.
Absolute vertical accuracy: GDEM v2 vs. GPS benchmarks
jncDEM 2
juNED
{0SRTM
Mean eror (meteis]
Develcped (75%) Open (21%) All (1C0%)
Land cover
GDEM v2 differences vs. other DEMs
© GDEMv2- NEC
| wODEMv2- SRTM
RMSE (meters)
Land cover
Figure 5. GDEM v2, NED, and SRTM mean errors by
aggregated land cover class.
Figure 7. GDEM v2-NED and GDEM v2-SRTM RMSE by
land cover class.
GDEM v2 error as a function of number of scenes
18.00
16.00
x
1400 » Mean erar (bias)
in NUM bin
12.00
10.00
Coum
Meters.
0 5 10 15 0 25 30 35 4C 45 50
Number of ASTER scenes
GDEM v2 differences vs. other DEMs
100
Mean difference (meters)
x a“ "d E SN sj
X & "
À $8 y o - e P = r $ SS SF = e aj
e « e & SF x p S G S
P d e # 9 © SF
A s Fa 9 9 g?
Cod +
Figure 6. GDEM v2 mean error and RMSE vs. number of
scenes used for elevation calculation.
3.2 Comparison vs. Other DEMs
The RMSE by land cover class (Figure 7) shows that in forested
classes, GDEM v2 and SRTM generally agree better (as
indicated by a smaller RMSE value) than GDEM v2 and NED.
This is expected, as both ASTER and SRTM are first return
systems that measure aboveground elevations in tall vegetation
canopies. As land cover becomes more open (for instance, the
six classes on the right side of the chart in Figure 7), the GDEM
v2-NED RMSE and GDEM v2-SRTM RMSE are nearly
equivalent as all three DEMs are measuring near ground level
elevations.
The chart of mean differences (Figure 8) supports previous
observations from the absolute vertical accuracy assessment. In
the forest classes (four classes on the left side of the chart in
Figure 8), the GDEM v2-NED mean differences are larger than
the GDEM v2-SRTM mean differences. Again, this is the
expected condition as NED by definition is a "bare earth"
elevation model (Gesch, 2007), and ASTER is a first return
system that measures canopy elevations in forested areas. Even
though the GDEM v2-SRTM mean differences for three forest
classes (mixed, deciduous, woody wetlands) are smaller than
the corresponding GDEM v2-NED mean differences, the fact
Figure 8. GDEM v2-NED and GDEM v2-SRTM mean
differences by land cover class.
The negative mean differences for both GDEM v2-NED and
GDEM v2-SRTM for the five open ground classes (shrub/scrub,
pasture/hay, barren land, cultivated crops,
grassland/herbaceous) on the right side of the chart in Figure 8
provide further evidence that GDEM v2 has an overall true
negative elevation bias. Both NED and SRTM exhibit a mean
error very close to zero for open ground land cover classes, so if
GDEM v2 was performing in the same way over those open
ground conditions the mean differences would be at or much
closer to zero.
4. CONCLUSION
The validation testing results reported here have raised several
important observations about the quality of elevation
measurements contained in GDEM v2:
e There is an improvement in overall RMSE of nearly two-
thirds of a meter (8.68 m vs. 9.34 m) when comparing the
measured accuracies of GDEM v2 and GDEM vl.
Likewise, there has also been an improvement in overall