prospectr
packageprospectr
is becoming more and more used in spectroscopic applications, which
is evidenced by the number of scientific publications citing the package. This
package is very useful for singal processing and chemometrics in general as it
provides various utilities for pre–processing and sample selection of spectral
data. While similar functions are available in other packages, like signal
, the functions in this
package works indifferently for data.frame
, matrix
and vector
inputs.
Besides, several functions are optimized for speed and use C++ code through the Rcpp
and RcppArmadillo
packages.
Several spectroscopic techniques such as Near-Infrared (NIR) spectroscopy are
high–troughput, non–destructive and cheap sensing methods that has a range of
applications in agricultural, medical, food and environmental science. A number
of R
packages of interest for the spectroscopist is already available for
processing and analysis of spectroscopic data.
Since the publication of the special special Volume in Spectroscopy and Chemometrics in R (Mullen and Stokkum 2007) many spectroscopy-related packages have been released. Most of these packages can be found at the following CRAN task views:
In addition, Bryan Hanson provides a list of Free Open Source Software (FOSS) dedictaed to Spectroscopic applications in general (see https://bryanhanson.github.io/FOSS4Spectroscopy/).
prospectr
is becoming more and more used in spectroscopic applications, which
is evidenced by the number of scientific publications citing the package.
This package is very useful for singal processing and chemometrics in general as
provides various utilities for pre–processing and sample selection
of spectral data. Please use the following citation. Simply type and you will
get the info you need:
citation(package = "prospectr")
##
## To cite package 'prospectr' in publications use:
##
## Antoine Stevens and Leornardo Ramirez-Lopez (2022). An introduction
## to the prospectr package. R package Vignette R package version 0.2.6.
##
## A BibTeX entry for LaTeX users is
##
## @Manual{,
## title = {An introduction to the prospectr package},
## author = {Antoine Stevens and Leornardo Ramirez-Lopez},
## publication = {R package Vignette},
## year = {2022},
## note = {R package version 0.2.6},
## }
The aim of spectral pre-treatment is to improve signal quality before modeling as well as remove physical information from the spectra. Applying a pre-treatment can increase the repeatability/reproducibility of the method, model robustness and accuracy, although there are no guarantees this will actually work. The pre-processing functions that are currently available in the package are listed in Table 1.
Table 1. List of pre-processing functions
Function Name | Description |
---|---|
movav |
simple moving (or running) average filter |
savitzkyGolay |
Savitzky–Golay smoothing and derivative |
gapDer |
gap–segment derivative |
baseline |
baseline removal (similar to continuumRemoval ) |
continuumRemoval |
computes continuum–removed values |
detrend |
detrend normalization |
standardNormalVariate |
Standard Normal Variate (SNV) transformation |
msc |
Multiplicative Scatter Correction |
binning |
average a signal in column bins |
resample |
resample a signal to new band positions |
resample2 |
resample a signal using new FWHM values |
blockScale |
block scaling |
blockNorm |
sum of squares block weighting |
We show below how they can be used, using the Near-Infrared (NIR) dataset (NIRsoil) included in the package (Fernandez-Pierna and Dardenne 2008). Observations should be arranged row-wise.
library(prospectr)
data(NIRsoil)
# NIRsoil is a data.frame with 825 obs and 5 variables: Nt (Total Nitrogen),
# Ciso (Carbon), CEC (Cation Exchange Capacity), train (vector of 0,1
# indicating training (1) and validation (0) samples), spc (spectral matrix)
str(NIRsoil)
## 'data.frame': 825 obs. of 5 variables:
## $ Nt : num 0.3 0.69 0.71 0.85 NA ...
## $ Ciso : num 0.22 NA NA NA 0.9 NA NA 0.6 NA 1.28 ...
## $ CEC : num NA NA NA NA NA NA NA NA NA NA ...
## $ train: num 1 1 1 1 1 1 1 1 1 1 ...
## $ spc : num [1:825, 1:700] 0.339 0.308 0.328 0.364 0.237 ...
## ..- attr(*, "dimnames")=List of 2
## .. ..$ : chr [1:825] "1" "2" "3" "4" ...
## .. ..$ : chr [1:700] "1100" "1102" "1104" "1106" ...
Noise represents random fluctuations around the signal that can originate from the instrument or environmental laboratory conditions. The simplest solution to remove noise is to perform \(n\) repetition of the measurements, and the average individual spectra. The noise will decrease with a factor \(\sqrt{n}\). When this is not possible, or if residual noise is still present in the data, the noise can be removed mathematically.
A moving average filter is a column-wise operation which average contiguous wavelengths within a given window size.
# add some noise
<- NIRsoil$spc + rnorm(length(NIRsoil$spc), 0, 0.001)
noisy # Plot the first spectrum
plot(x = as.numeric(colnames(NIRsoil$spc)),
y = noisy[1, ],
type = "l",
lwd = 1.5,
xlab = "Wavelength",
ylab = "Absorbance")
<- movav(X = noisy, w = 11) # window size of 11 bands
X # Note that the 5 first and last bands are lost in the process
lines(x = as.numeric(colnames(X)), y = X[1,], lwd = 1.5, col = "red")
grid()
legend("topleft",
legend = c("raw", "moving average"),
lty = c(1, 1), col = c("black", "red"))
Savitzky-Golay filtering (Savitzky and Golay 1964) is a very common preprocessing technique. It fits a local polynomial regression on the signal and requires equidistant bandwidth. Mathematically, it operates simply as a weighted sum of neighbouring values:
\[ x_j\ast = \frac{1}{N}\sum_{h=-k}^{k}{c_hx_{j+h}}\]
where \(x_j\ast\) is the new value, \(N\) is a normalizing coefficient, \(k\) is the number of neighbour values at each side of \(j\) and \(c_h\) are pre-computed coefficients, that depends on the chosen polynomial order and degree (smoothing, first and second derivative).
# p = polynomial order w = window size (must be odd) m = m-th derivative (0 =
# smoothing) The function accepts vectors, data.frames or matrices. For a
# matrix input, observations should be arranged row-wise
<- savitzkyGolay(X = NIRsoil$spc[1, ], p = 3, w = 11, m = 0)
sgvec <- savitzkyGolay(X = NIRsoil$spc, p = 3, w = 11, m = 0)
sg # note that bands at the edges of the spectral matrix are lost !
dim(NIRsoil$spc)
## [1] 825 700
dim(sg)
## [1] 825 690
Taking (numerical) derivatives of the spectra can remove both additive and multiplicative effects in the spectra and have other consequences as well (Table 2).
Table 2. Pro’s and con’s of using derivative spectra.
Advantage | Drawback |
---|---|
Reduce of baseline offset | Risk of overfitting the calibration model |
Can resolve absorption overlapping | Increase noise, smoothing required |
Compensates for instrumental drift | Increase uncertainty in model coefficients |
Enhances small spectral absorptions | Complicate spectral interpretation |
Often increase predictive accuracy | Remove the baseline ! |
for complex datasets |
First and second derivatives of a spectrum can be computed with the finite difference method (difference between to subsequent data points), provided that the band width is constant:
\[ x_i' = x_i - x_{i-1}\]
\[ x_i'' = x_{i-1} - 2 \cdot x_i + x_{i+1}\]
In R, this can be simply achieved with the diff
function in base
:
# X = wavelength
# Y = spectral matrix
# n = order
<- t(diff(t(NIRsoil$spc), differences = 1)) # first derivative
d1 <- t(diff(t(NIRsoil$spc), differences = 2)) # second derivative
d2 plot(as.numeric(colnames(d1)),
1,],
d1[type = "l",
lwd = 1.5,
xlab = "Wavelength",
ylab = "")
lines(as.numeric(colnames(d2)), d2[1,], lwd = 1.5, col = "red")
grid()
legend("topleft",
legend = c("1st der", "2nd der"),
lty = c(1, 1),
col = c("black", "red"))
One can see that derivatives tend to increase noise. One can use gap derivatives or the Savitzky-Golay algorithm to solve this. The gap derivative is computed simply as:
\[ x_i' = x_{i+k} - x_{i-k}\]
\[ x_i'' = x_{i-k} - 2 \cdot x_i + x_{i+k}\]
where \(k\) is the gap size. Again, this can be easily achieved in R using the
lag
argument of the diff
function
# first derivative with a gap of 10 bands
<- t(diff(t(NIRsoil$spc), differences = 1, lag = 10)) gd1
For more flexibility and control over the degree of smoothing, one could however
use the Savitzky-Golay (savitzkyGolay
) and gap-segment derivative (gapDer
)
algorithms. The Gap-segment algorithms performs first a smoothing under a given
segment size, followed by a derivative of a given order under a given gap size.
Here is an example of the use of the gapDer
function. For Savitzky-Golay and
gap-segment derivatives we refer the reader to Luo et al. (2005) and
Hopkins (2001) respectively.
# m = order of the derivative
# w = gap size
# s = segment size
# first derivative with a gap of 5 bands
<- gapDer(X = NIRsoil$spc, m = 1, w = 11, s = 5)
gsd1 plot(as.numeric(colnames(d1)),
1,],
d1[type = "l",
lwd = 1.5,
xlab = "Wavelength",
ylab = "")
lines(as.numeric(colnames(gsd1)), gsd1[1,], lwd = 1.5, col = "red")
grid()
legend("topleft",
legend = c("1st der","gap-segment 1st der"),
lty = c(1,1),
col = c("black", "red"))
Undesired spectral variations due to light scatter effects and variations in effective path length can be removed using scatter corrections.
Standard Normal Variate (SNV) is another simple way for normalizing spectra that intends to correct for light scatter. It operates row-wise:
\[ SNV_i = \frac{x_i - \bar{x_i}}{s_i}\]
<- standardNormalVariate(X = NIRsoil$spc) snv
According to Fearn (2008), it is better to perform SNV transformation after filtering (by e.g. Savitzky-Golay) than the reverse.
Along with SNV, MSC (Geladi, MacDougall, and Martens 1985) this is one of the most widely used pre-processing techniques in NIR spectroscopy (Rinnan, Van Den Berg, and Engelsen 2009). This is a normalization method that attempts to account for additive and multiplicative effects by aligning each spectrum (\(x_i\)) with an ideal reference one (\(x_r\)) as follows: \[x_i = m_i x_r + a_i\] \[MSC(x_i) = \frac{a_i - x_i}{m_i}\] where \(a_i\) and \(m_i\) are the additive and multiplicative terms respectively.
# X = input spectral matrix
<- msc(X = NIRsoil$spc, ref_spectrum = colMeans(NIRsoil$spc))
msc_spc
plot(as.numeric(colnames(NIRsoil$spc)),
$spc[1,],
NIRsoiltype = "l",
xlab = "Wavelength, nm", ylab = "Absorbance",
lwd = 1.5)
lines(as.numeric(colnames(NIRsoil$spc)),
1,],
msc_spc[lwd = 1.5, col = "red")
axis(4, col = "red")
grid()
legend("topleft",
legend = c("raw", "MSC signal"),
lty = c(1, 1),
col = c("black", "red"))
par(new = FALSE)
Since the MSC-corrected is based on a reference spectrum, it is necessary to
save this spectrum in order to apply the same type of processing to new spectra
later on. The following code shows how this can be done in prospectr
:
# a reference set of spectra
<- NIRsoil$spc[NIRsoil$train == 1, ]
Xr
# an "unseen" set of spectra
<- NIRsoil$spc[NIRsoil$train == 0, ]
Xu
# apply msc to Xr
<- msc(Xr)
Xr_msc
# apply the same msc to Xu
attr(Xr_msc, "Reference spectrum") # use this info from the previous object
<- msc(Xu, ref_spectrum = attr(Xr_msc, "Reference spectrum")) Xu_msc
The SNV-Detrend (Barnes, Dhanoa, and Lister 1989) further accounts for wavelength-dependent scattering effects (variation in curvilinearity between the spectra). After a SNV transformation, a 2\(^{nd}\)-order polynomial is fit to the spectrum and subtracted from it.
# X = input spectral matrix
# wav = band centers
<- detrend(X = NIRsoil$spc, wav = as.numeric(colnames(NIRsoil$spc)))
dt plot(as.numeric(colnames(NIRsoil$spc)),
$spc[1,],
NIRsoiltype = "l",
xlab = "Wavelength",
ylab = "Absorbance",
lwd = 1.5)
par(new = TRUE)
plot(dt[1,],
xaxt = "n",
yaxt = "n",
xlab = "",
ylab = "",
lwd = 1.5,
col = "red",
type = "l")
axis(4, col = "red")
grid()
legend("topleft",
legend = c("raw", "detrend signal"),
lty = c(1, 1),
col = c("black", "red"))
par(new = FALSE)
This method estimates the baseline of a given spectrum and subtract it from the
original spectrum. For this, the baseline
function comprises three basic steps:
The convex hull points of each spectrum are identified using the
grDevices::chull
function.
To obtain the baseline of each spectrum, the convex hull points are linearly interpolated to the same frequencies of the original spectra.
The baseline of each spectrum is subtracted from the original input spectrum.
data(NIRsoil)
<- as.numeric(colnames(NIRsoil$spc))
wav # plot of the 3 first absorbance spectra
matplot(wav,
t(NIRsoil$spc[1:3, ]),
type = "l",
ylim = c(0, .6),
xlab = "Wavelength /nm",
ylab = "Absorbance")
grid()
<- baseline(NIRsoil$spc, wav)
bs matlines(wav, t(bs[1:3, ]))
<- attr(bs, "baselines")
fitted_baselines matlines(wav, t(fitted_baselines[1:3, ]))
Centering and scaling tranforms a given matrix to a matrix with columns with zero mean (centering), unit variance (scaling) or both (auto-scaling):
\[ Xc_{ij} = X_{ij} - \bar{X}_{j} \]
\[ Xs_{ij} = \frac{X_{ij} - \bar{X}_{j}}{s_{j}} \]
where \(Xc\) and \(Xs\) are the mean centered and auto-scaled matrices, \(X\) is the input matrix, \(\bar{X}_{j}\) and \(s_{j}\) are the mean and standard deviation of variable \(j\).
In R, these operations are simply obtained with the scale
function. Other
types of scaling can be considered. Spectroscopic models can often be improved
by using ancillary data (e.g. temperature, …) (Fearn 2010). Due to the nature
of spectral data (multivariate), other data would have great chance to be
dominated by the spectral matrix and have no chance to contribute significantly
to the model due to purely numerical reasons (Eriksson et al. 2006). One can use
block scaling to overcome this limitation. It basically uses different weights
for different block of variables. With soft block scaling, each block is
scaled (ie each column divided by a factor) such that the sum of their variance
is equal to the square root of the number of variables in the block. With
hard block scaling, each block is scaled such that the sum of their variance
is equal to 1.
# X = spectral matrix type = 'soft' or 'hard' The ouptut is a list with the
# scaled matrix (Xscaled) and the divisor (f)
<- blockScale(X = NIRsoil$spc, type = "hard")$Xscaled
bs sum(apply(bs, 2, var)) # this works!
## [1] 1
he problem with block scaling is that it down-scale all the block variables to the same variance. Since sometimes this is not advised, one can alternatively use sum of squares block weighting . The spectral matrix is multiplied by a factor to achieve a pre-determined sum of square:
# X = spectral matrix targetnorm = desired norm for X
<- blockNorm(X = NIRsoil$spc, targetnorm = 1)$Xscaled
bn sum(bn^2) # this works!
## [1] 1
To match the response of one instrument with another, a signal can be resampled
to new band positions by simple interpolation (resample
) or using full width
half maximum (FWHM) values (resample2
).
The continuum removal technique was introduced by Clark and Roush (1984) as an effective
method to highlight absorption features of minerals. It can be viewed as an
albedo normalization technique. This technique is based on the computation
of the continuum (or envelope) of a given spectrum. It is very similar to
baseline
, however it differs from it in the third step, in which instead of
a baseline subtraction it divides the original spectrum by its continuum as follows:
\[\phi_{i} = \frac{x_{i}}{c_{i}}; i=\left \{ 1,..., p\right\}\]
where \(x_{i}\) and \(c_{i}\) are the original and the continuum reflectance (or absorbance) values respectively at the \(i\)^th wavelength of a set of \(p\) wavelengths, and \(\phi_{i}\) is the final reflectance (or absorbance) value after continuum removal.
The continuumRemoval
function allows to compute the continuum-removed values
of either reflectance or absorbance spectra.
# type of data: 'R' for reflectance (default), 'A' for absorbance
<- continuumRemoval(X = NIRsoil$spc, type = "A")
cr # plot of the 10 first abs spectra
matplot(as.numeric(colnames(NIRsoil$spc)),
t(NIRsoil$spc[1:3,]),
type = "l",
lty = 1,
ylim = c(0,.6),
xlab="Wavelength /nm",
ylab="Absorbance")
matlines(as.numeric(colnames(NIRsoil$spc)), lty = 1, t(cr[1:3, ]))
grid()
Calibration models are usually developed on a representative portion of the data (training set) and validated on the remaining set of samples (test/validation set). There are several solutions for selecting samples, e.g.:
sample
function in base
)For selecting representative samples, the prospect
package provides functions
that use the third solution. The following functions are available:
naes
: k-means Sampling (Naes et al. 2002)
kenStone
: Kennard-Stone Sampling a.k.a. CADEX Sampling (Kennard and Stone 1969)
duplex
: Duplex Sampling (Snee 1977)
puchwein
: Factor Analysis Sampling (Puchwein 1988)
shenkWest
: SELECT Sampling (Shenk and Westerhaus 1991)
honigs
: Honigs Sampling (Honigs et al. 1985)
naes
)The \(k\)-means sampling simply uses \(k\)-means clustering algorithm. To sample a subset of \(n\) samples \(X_{tr} = \left \{ {x_{tr}}_{j} \right \}_{j=1}^{n}\), from a given set of \(N\) samples \(X = \left \{ x_i \right \}_{i=1}^{N}\) (note that \(N>n\)) the algorithm works as follows:
Perform a \(k\)-means clustering of \(X\) using \(n\) clusters.
Extract the \(n\) centroids (\(c\), or prototypes). This can be also the sample
that is the farthest away from the centre of the data, or a random selection.
See the method
argument in naes
Calculate the distance of each sample to each \(c\).
For each \(c\) allocate in \(X_{tr}\) its closest sample found in \(X\).
# X = the input matrix
# k = number of calibration samples to be selected
# pc = if pc is specified, k-mean is performed in the pc space
# (here we will use only the two 1st pcs)
# iter.max = maximum number of iterations allowed for the k-means clustering.
<- naes(X = NIRsoil$spc, k = 5, pc = 2, iter.max = 100)
kms # Plot the pcs scores and clusters
plot(kms$pc, col = rgb(0, 0, 0, 0.3), pch = 19, main = "k-means")
grid()
# Add the selected points
points(kms$pc[kms$model, ], col = "red", pch = 19)
kenStone
)To sample a subset of \(n\) samples \(X_{tr} = \left \{ {x_{tr}}_{j} \right \}_{j=1}^{n}\), from a given set of \(N\) samples \(X = \left \{ x_i \right \}_{i=1}^{N}\) (note that \(N>n\)) the Kennard-Stone (CADEX) sampling algorithm consists in Kennard and Stone (1969):
Find in \(X\) the samples \({x_{tr}}_1\) and \({x_{tr}}_2\) that are the farthest apart from each other, allocate them in \(X_{tr}\) and remove them from \(X\).
Find in \(X\) the sample \({x_{tr}}_3\) with the maximum dissimilarity to \(X_{tr}\). Allocate \({x_{tr}}_3\) in \(X_{tr}\) and then remove it from \(X\). The dissimilarity between \(X_{tr}\) and each \(x_i\) is given by the minimum distance of any sample allocated in \(X_{tr}\) to each \(x_i\). In other words, the selected sample is one of the nearest neighbours of the points already selected which is characterized by the maximum distance to the other points already selected.
Repeat the step 2 n-3 times in order to select the remaining samples (\({x_{tr}}_4,..., {x_{tr}}_n\)).
The Kennard-Stone algorithm allows to create a calibration set that has a flat distribution over the spectral space. The metric used to compute the distance between points can be either the Euclidean distance or the Mahalanobis distance. One of the drawbacks of this algorithm is that it is prone to outlier selection (Ramirez-Lopez et al. 2014), therefore outlier analysis is recommended before sample selection.
Let’s see some examples…
# Create a dataset for illustrating how the calibration sampling
# algorithms work
<- data.frame(x1 = rnorm(1000), x2 = rnorm(1000))
X plot(X, col = rgb(0, 0, 0, 0.3), pch = 19, main = "Kennard-Stone (synthetic)")
grid()
# kenStone produces a list with row index of the points selected for calibration
<- kenStone(X, k = 40)
ken # plot selected points
points(X[ken$model,], col = "red", pch = 19, cex = 1.4)
# Test with the NIRsoil dataset
# one can also use the mahalanobis distance (metric argument)
# computed in the pc space (pc argument)
<- kenStone(X = NIRsoil$spc, k = 20, metric = "mahal", pc = 2)
ken_mahal # The pc components in the output list stores the pc scores
plot(ken_mahal$pc[,1],
$pc[,2],
ken_mahalcol = rgb(0, 0, 0, 0.3),
pch = 19,
xlab = "PC1",
ylab = "PC2",
main = "Kennard-Stone")
grid()
# This is the selected points in the pc space
points(ken_mahal$pc[ken_mahal$model, 1],
$pc[ken_mahal$model,2],
ken_mahalpch = 19, col = "red")
In cases where we have calibration samples which have been already pre-selected,
we can use the init
argument of the kenStone()
function. If we
want to force (because of convenience) a subset of observations in the
calibration set search we can initialize the Kennard-Stone algorithm with such
samples. For example:
# Indices of the initialization samples
<- c(486, 702, 722, 728)
initialization_ind <- kenStone(X = NIRsoil$spc, k = 20, metric = "mahal", pc = 2, init = initialization_ind)
ken_mahal_init
$model ken_mahal_init
## [1] 486 702 722 728 615 619 679 410 614 39 592 617 191 716 613 825 792 611 239
## [20] 640
# The pc components in the output list stores the pc scores
plot(ken_mahal_init$pc[,1],
$pc[,2],
ken_mahal_initcol = rgb(0, 0, 0, 0.3),
pch = 19,
xlab = "PC1",
ylab = "PC2",
main = "Kennard-Stone with 4 initialization samples")
grid()
# This is the selected points in the pc space
points(ken_mahal$pc[ken_mahal$model, 1],
$pc[ken_mahal$model, 2],
ken_mahalpch = 19, col = "red")
# Our initialization samples
points(ken_mahal$pc[initialization_ind, 1],
$pc[initialization_ind, 2],
ken_mahalpch = 19, cex = 1.5, col = "blue")
duplex
)The Kennard-Stone algorithm selects calibration samples. Often, we need also to select a validation subset. The DUPLEX algorithm (Snee 1977) is a modification of the Kennard-Stone which allows to select a validation set that have similar properties to the calibration set. DUPLEX, similarly to Kennard-Stone, begins by selecting pairs of points that are the farthest apart from each other, and then assigns points alternatively to the calibration and validation sets.
<- duplex(X = X, k = 15) # k is the number of selected samples
dup plot(X, col = rgb(0, 0, 0, 0.3), pch = 19, main = "DUPLEX")
grid()
# calibration samples
points(X[dup$model, 1], X[dup$model, 2], col = "red", pch = 19)
# validation samples
points(X[dup$test,1], X[dup$test,2], col = "dodgerblue", pch = 19)
legend("topright",
legend = c("calibration", "validation"),
pch = 19,
col = c("red", "dodgerblue"))
shenkWest
)The SELECT algorithm (Shenk and Westerhaus 1991) is an iterative procedure which selects the
sample having the maximum number of neighbour samples within a given distance
(d.min
argument) and remove the neighbour samples of the selected sample
from the list of points. The number of selected samples depends on the chosen
treshold (default = 0.6). The distance metric is the Mahalanobis distance
divided by the number of dimensions (number of pc components) used to compute
the distance. Here is an example of how the shenkWest
function might work:
<- shenkWest(X = NIRsoil$spc, d.min = 0.6, pc = 2)
shenk plot(shenk$pc, col = rgb(0, 0, 0, 0.3), pch = 19, main = "SELECT")
grid()
points(shenk$pc[shenk$model,], col = "red", pch = 19)
puchwein
)The Puchwein algorithm is yet another algorithm for calibration sampling (Puchwein 1988) that create a calibration set with a flat distribution. A nice feature of the algorithm is that it allows an objective selection of the number of required calibration samples with the help of plots. First the data is usually reduced through PCA and the most significant PCs are retained. Then the mahalanobis distance (\(H\)) to the center of the matrix is computed and samples are sorted decreasingly. The distances betwwen samples in the PC space are then computed.
Here are the steps followed by the algorithm:
Step 1. Define a limiting distance.
Step 2. Find the sample with` \(\max(H)\).
Step 3. Remove all the samples which are within the limiting distance away from the sample selected in step 2.
Step 4. Go back in step 2 and find the sample with \(\max(H)\) within the remaining samples.
Step 5. When there is no sample anymore, go back to step 1 and increase the limiting distance.
<- puchwein(X = NIRsoil$spc, k = 0.2, pc =2)
pu plot(pu$pc, col = rgb(0, 0, 0, 0.3), pch = 19, main = "puchwein")
grid()
points(pu$pc[pu$model,],col = "red", pch = 19) # selected samples
par(mfrow = c(2, 1))
plot(pu$leverage$removed,pu$leverage$diff,
type = "l",
xlab = "# samples removed",
ylab="Difference between th. and obs sum of leverages")
# This basically shows that the first loop is optimal
plot(pu$leverage$loop,nrow(NIRsoil) - pu$leverage$removed,
xlab = "# loops",
ylab = "# samples kept", type = "l")
par(mfrow = c(1, 1))
honigs
)The Honigs algorithm selects samples based on the size of their absorption features (Honigs et al. 1985). It can works both on absorbance and continuum-removed spectra. The sample having the highest absorption feature is selected first. Then this absorption is substracted from other spectra and the algorithm iteratively select samples with the highest absorption (in absolute value) until the desired number of samples is reached.
# type = "A" is for absorbance data
<- honigs(X = NIRsoil$spc, k = 10, type = "A")
ho # plot calibration spectra
matplot(as.numeric(colnames(NIRsoil$spc)),
t(NIRsoil$spc[ho$model,]),
type = "l",
xlab = "Wavelength", ylab = "Absorbance")
# add bands used during the selection process
abline(v = as.numeric(colnames(NIRsoil$spc))[ho$bands], lty = 2)