Full text: Technical Commission VII (B7)

    
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Additionally, at each date plant samples from selected plots 
were taken and dry biomass (stem and leaf) was measured. 
Thus, the statistical analyses are based on 22 values. A very 
good correlation between plant height and dry biomass was 
achieved (R>=0.88) and the regression line fits well (cf. 
Figure 6). 
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Mean plant height from CSM [cm] 
Figure 6. Regression of mean plant height calculated from 
CSM and biomass of stem and leaf (n-22). 
  
3.4 Monitoring Approach 
The change in plant height was monitored by the calculation of 
differences between each CSM, similar to the calculation of the 
plant height above the reference surface. In order to verify the 
results, the average manually measured plant growth was 
calculated and compared to the outcomes from the CSMs. The 
coefficient of determination (R?=0.86) is again very good. As it 
can be seen in Figure 7, the calculation of the regression line is 
based on values of a great range from 5 to 30 cm, which 
reinforces the plausibility. 
  
  
  
  
  
  
  
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Mean plant growth between two CSMs [cm] 
Figure 7. Regression of mean plant growth increase 
between two consecutive CSMs and average measured plant 
growth increase (n=36). 
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012 
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia 
4. DISCUSSION 
First of all, the data acquisition with the laser scanner in the 
field worked very well. A major advantage of the TLS system is 
the easily achievable and fast data acquisition of the whole 
field, compared to Casanova etal. (1998), using a hand-held 
radiometer. Anyway, an accurate differentiation between each 
plot is possible with a higher spatial resolution than achievable 
with ALS (McKinion et al., 2010). 
However, the compact and lightweight build-up of the Riegl 
VZ-1000 is therefore quite helpful. Ehlertetal. (2009) and 
Lumme et al. (2009) complain about problems with noise in the 
point clouds. This problem is always linked with TLS, due to 
wind and other effects. However, the time-of-flight scanner, 
used in this study, reduces this problem by the high measuring 
speed. Earlier studies with a comparable set-up 
(Hoffmeister et al., 2011), show already the usability of this 
method, but further improvement is still desirable. Nevertheless, 
some minor problems, like the transportation of the scanner on 
the dikes, have to be solved. 
For the registration and merging of the scan positions, RISCAN 
PRO offers appropriate tools. The indirect registration based on 
the tie points can be considerably improved by the ICP 
algorithm. By employing the MSA, the standard deviation error 
was decreased from 0.1 m to 0.05 m. Furthermore, filtering 
based on the reflectance was helpful to remove noise from the 
point clouds. Thus, the time consuming manual postprocessing 
was remarkably accelerated. Furthermore, the scan positions 
where the setting could be build up on the trailer, profit from 
the greater height. This could be seen e.g. in the CSMs of plot 
163 (cf. Figure 3). The plot was at the south edge of the 
investigated field, close to the scan positions with the trailer. 
Due to the higher perspective, the linear structure of the field is 
strongly visible. 
Beside the well working method, the results show that our 
approach seems to be suitable for rice growth monitoring. The 
good correlation between the mean plant height calculated from 
the CSMs and the manually measured plant height (R>=0.91) as 
well as the correlation with the dry biomass (R?-0.88) show the 
accuracy of the achieved models. However, the accuracy of the 
data is comparable with those from the mentioned studies with 
cereals (Ehlert et al., 2008; 2009). Moreover, the correlation 
concerning the plant growth (R2—0.86) confirms the suitability 
for the monitoring approach. The already mentioned study of 
Hoffmeister et al. (2011) with a comparable set-up, was carried 
out on sugar-beet fields. In contrast to rice, the more complex 
structure of the sugar-beet leaves impairs the correlation 
between mean height and dry biomass. 
Moreover, the spatial distribution of variances within the CSM 
of one plot and between different CSMs can be detected. First, 
the CSMs from various repetitions can be compared. Secondly, 
for monitoring, CSMs from several time steps can be compared 
to receive information about plant growth. Again, compared to 
the studies on sugar-beet fields (Hoffmeister et al., 2010; 2011) 
spatial differences in height were detectable as well. 
5. CONCLUSION AND OUTLOOK 
The results presented in this contribution show the applicability 
for accurate capturing and monitoring of rice growth in terms of 
changes in plant height and biomass. These spatial patterns of
	        
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