were acquired between October 14th and 16th using the
FieldSpec Pro and FieldSpec Pro FR (ASD Inc., the U.S.),
portable hyperspectral sensors, while airborne hyperspectral
data were acquired in October 29th using the HyMap (HyVista
Corporation, Austraria), an airborne hyperspectral sensor.
The second field survey was conducted between the late August
and early September, which is around the same time as the
heading stage of wheat, of the year 2010 (Table 1). Ground-
based hyperspectral data were acquired between August 25th
and September 2nd using the FieldSpec 3 FR and FieldSpec Pro
FR, while airborne hyperspectral data were acquired in
September 6th using the HyMap.
Table 1: Data Used for this Study and Observation Date
Observation Date
Data Type -
First Survey Second Survey
FieldSpec 2009/10/14-2009/10/16 2010/08/25-2010/09/02
HyMap 2009/10/29 2010/9/6
Growth Conditions 2010/08/24-2010/09/06,
Data 2009/10/13:2000/10/15 2010/10/14-201010/19
Sample Analysis 2010/08/24-2010/09/06,
Data 2009/10/16:2009/10/20 2010/10/14-2010/10/19
3.1 Specifications of Ground-based Hyperspectral Data
To acquire ground-based hyperspectral data and conduct plant
sampling, the total 30 and 33 quadrats (10m by 10m) were
installed for the later grain filling and heading stage
observations respectively. In the field surveys, the reflectance
spectra were measured at northwest, southwest, and southeast
corners of each sample quadrat. To acquire typical spectral data,
two sets of ridge, furrow, ridge and furrow were repeatedly
measured from approximately 1m above a head of wheat
(Figure 2). The measurement wavelength ranged from 350nm to
2,500nm, and the wavelength resolution was 1nm.
N
2Rows 1
10m /
OO
2Rows 2RoWs Wheat heads
| pod About 4
A { YASDFOV 1m
400
OOo o
i 4 4
Figure 2: Overview of Quadrat (Left)
and Acquisition Method (Right)
3.2 Specifications of Airborne Hyperspectral Data
For the airborne surveys using the HyMap, the flight height was
2,250m, and the number of flight lines was nine. The
observation wavelengths ranged from 440 to 2,480nm. The
number of bands was 126, and the wavelength resolution was
approximately 20nm. The view angle was 60 degrees, and the
spatial resolution was about 4.2m.
3.3 Acquisition of Wheat Growth Conditions Data
For the later grain filling stage observation, the Leaf Area Index
(LAI) and wheat height were measured at each sample point of
the 30 quadrats around the same time as the ground-based
reflectance spectra measurement. Wheat samples were also
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B8, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
collected in the field. The number of wheat heads were counted,
and the wet and dry wheat weights were also measured. After
threshing, the wheat grain weight was measured, and 15
components, including the grain nitrogen content rate, were
analyzed.
For the heading stage observation, the LAI, SPAD values, and
wheat height were measured in the 33 quadrats around the same
time as the ground-based reflectance spectra measurement.
Wheat samples were also collected in the field. The number of
wheat heads was counted, and wet and dry wheat weights were
measured. After threshing, the wheat grain weight was
measured, and 17 components, including the leaf nitrogen
content rate, were analyzed. For the year 2010, wheat samples
were collected again from October 14th to 19th, which is during
the harvesting stage. The number of wheat heads, grain weight,
and biomass were measured, and 17 components, including the
grain nitrogen content rate, were analyzed.
4. METHODS
This study involved (1) estimation items selection, (2)
estimation equation derivation, (3) estimation accuracy
verification, and (4) estimation map development. Regarding
the estimation equation derivation, the PLS regression was used
for the heading stage observation only (Figure 3).
Growth
: Conditions Data
Field Spec (Heading & HyMap
Harvesting
Stages)
Correlation
Analysis
Preprocessing
Preprocessing Estimation Item (Geometric and
Nemo Selection atmospheric
pling corrections)
line Seas
Estimation Equation
Derivation (Known
Vegetation Index, NDSI,
Multi Regression, and
PLS Regression)
Estimation Equation
Derivation (Known
Vegetation Index, NDSI,
Multi Regression, and
PLS Regression)
gis Bee
Estimation Y
Accuracy pat
Verification Estimation Map
Development
Figure 3: Workflow of this Study
41 Estimation Items Selection
The sample wheat data were analyzed to examine correlations
between wheat features, and estimation items that are related to
the wheat yield, quality, and growth conditions were
determined. The sample wheat data of the heading stage were
collected around the same time as ground-based and airborne
hyperspectral data acquisition. The sample wheat data of the
harvesting stage were also analyzed to examine correlations,
and estimation items that are related to the wheat yield and
quality were estimated.
4.2 Estimation Methods
For the later grain filling stage observation, (1) known
vegetation index, (2) normalized differential spectral index
(NDSI) (Inoue et al., 2008), and (3) multi regression analysis
were examined. For the heading stage observation, (1) known
vegetation index, (2) NDSI, (3) multi regression analysis, and
(4) PLS regression analysis were examined. Using these
estimation methods, correlations between the reflectance
spectr:
selecte
equati
43 F
For e:
confoi
were (
44 E
For e:
confoi
were (