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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
ESTIMATING BIOCHEMICAL PARAMETERS OF TEA (CAMELLIA SINENSIS (L.))
USING HYPERSPECTRAL TECHNIQUES
Meng Bian ab” Andrew K. Skidmore ^ Martin Schlerf ^, Yanfang Liu *, Tiejun Wang b
? School of Remote Sensing and Information Engineering, Wuhan University, 129 LuoYuRoad, Wuhan, 430079, P.R.
China - bian@whu.edu.cn
? Faculty of Geo-Information Science and Earth Observation (ITC), University of Twente, P.O. Box 217, 7500 AE,
Enschede, The Netherlands - (skidmore, schlerf, tiejun)@itc.nl
* School of Resource and Environmental Science, Wuhan University, 129 LuoYuRoad, Wuhan, 430079, P.R. China -
yfliu610(2163.com
Working Group, Theme or Special Session: VIII/6: Agriculture, Ecosystems and Bio-Diversity
KEY WORDS: Agriculture, Quality, Hyper spectral, Estimation, Statistics
ABSTRACT:
Tea (Camellia Sinensis (L.)) is an important economic crop and the market price of tea depends largely on its quality. This research
aims to explore the potential of hyperspectral remote sensing on predicting the concentration of biochemical components, namely
total tea polyphenols, as indicators of tea quality at canopy scale. Experiments were carried out for tea plants growing in the field and
greenhouse. Partial least squares regression (PLSR), which has proven to be the one of the most successful empirical approach, was
performed to establish the relationship between reflectance and biochemical concentration across six tea varieties in the field.
Moreover, a novel integrated approach involving successive projections algorithms as band selection method and neural networks
was developed and applied to detect the concentration of total tea polyphenols for one tea variety, in order to explore and model
complex nonlinearity relationships between independent (wavebands) and dependent (biochemicals) variables. The good prediction
accuracies (r2 > 0.8 and relative RMSEP < 10 %) achieved for tea plants using both linear (partial lease squares regress) and
nonlinear (artificial neural networks) modelling approaches in this study demonstrates the feasibility of using airborne and space-
borne sensors to cover wide areas of tea plantation for in situ monitoring of tea quality cheaply and rapidly.
1. INTRODUCTION
Tea consumption is rising in recent years, for the special flavour
and the possible beneficial effects on human body.
Consequently, it has become increasingly important to be able
to give reliable estimates of the tea quality (Yan, 2007).
Traditional methods to determine tea quality is mainly handled
by tea experts, which may bring inconsistent and subjective
results, or based on wet chemical analysis, which is time and
labour consuming. Being effective and quantitative, the
development of new techniques using hyperspectral remote
sensing data has offered possibilities to estimate and monitor
vegetation quality in space and time (Knox et al, 2011;
Mutanga and Kumar, 2007).
Hyperspectral remote sensing techniques have been developed
from a laboratory-based near infrared spectroscopy (NIRS)
technique (Curran et al., 2001). The narrow sensitive band range
(10 nm or less) makes it possible to detect subtle variations in
the reflectance spectra, which are caused by differences in
biochemical composition and physiology of vegetation (Davey
et al., 2009; Schlerf et al., 2010). In recent years, researchers
have extended the technique of reflectance spectroscopy to
measure biochemical parameters of vegetation by field
Spectrometer or airborne or spaceborne sensors, trying to
explore the chemical variation of vegetation in a spatial context
(Curran, 1989; Schlerf et al., 2010; Skidmore et al., 2010).
Tea polyphenols compose of four main substances as catechins,
flavonoids, anthocyanins and phenolic acids, accounting for 20-
35% of the total dry matter. It contributes greatly to tea taste
and quality. In practice, people only pluck the young tender
buds and leaves for producing tea product with high-quality.
Compared with older leaves, this part of tea plant contains the
optimal ratio of polyphenols and amino acids, which forms the
special taste of tea beverage (Mitscher and Dolby 1997).
This research aims to estimate the concentrations of main tea
quality-related compounds (total tea polyphenols) using
reflectance spectroscopy for tea plants at canopy level. Both
linear (partial least regression) and nonlinear (artificial neural
network) regression methods have been attempted. To detect
whether the spectral-chemical relationships exist for the whole
tea species, partial least squares regression was performed to
establish the relationship between reflectance and biochemical
contents across different tea varieties. Furthermore, a hybrid
approach of neural network and successive projection
algorithms (variable selection) has been applied for the
estimation of total tea polyphenols for one tea variety planting
in a greenhouse.