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Monitoring Drylands - Problems The Vegetation Problem

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Title: Monitoring Drylands - Problems The Vegetation Problem


1
  • Monitoring Drylands - Problems
  • The Vegetation Problem
  • Vegetation and Soil Signatures
  • Extracting Information
  • Vegetation Indices

2
Land Degradation Monitoring in Drylands
  • Land degradation is a complex ensemble of surface
    processes (e.g. wind erosion, water erosion, soil
    compaction, salinisation, and soil
    water-logging).
  • These can ultimately lead to "desertification".
  • As the increasing world population places more
    demands on land for food production etc., many
    marginal arid and semiarid lands will be at risk
    of degradation.
  • The need to maintain sustainable use of these
    lands requires that they be monitored for the
    onset of land degradation so that the problem may
    be addressed in its early stages.
  • Monitoring will also be required to assess the
    effectiveness of measures to control land
    degradation

3
Problems with Monitoring Dryland Vegetation
  • Remote sensing of arid regions is difficult and
    necessitates innovative techniques.
  • Desert plants typically manifest long periods of
    dormancy interspersed with brief "greenings"
    associated with storms or seasonal rainfall.
  • During these relatively short productive periods,
    the characteristic spectral features of desert
    plants change, as does total vegetation cover
  • Current long repeat times of Landsat and other
    present satellite sensors provide insufficient
    temporal resolution to reliably capture the
    short, but critical, greening.

4
Specific Challenges for Land Degradation
Monitoring
  • Arid region vegetation is intrinsically difficult
    to study remotely because
  • vegetative cover usually is sparse compared to
    soil background,
  • soil and plant spectral signatures tend to mix
    non-linearly, and
  • arid plants tend to lack the strong red edge
    found in plants of humid regions due to
    ecological adaptations to harsh desert
    environment
  • A very important result of these studies is that
    conventional vegetative red indices can be
    unreliable measures of arid region plant cover
    with potential for over- or underestimation of
    the actual vegetative cover.

5
Satellite Remote Sensing as a Monitoring Tool
Pros
  • The operational costs of satellite systems are
    significantly lower than for other platform types
    (e.g. aircraft).
  • Satellite systems provide automatically repeating
    coverage along predictable flight paths with
    little variance compared to aircraft flight
    lines. This provides the ability to track
    seasonal changes and, over a longer time scale,
    changes related to climatic variability.
  • This capability may also enable differentiation
    between anthropogenic land degradation and
    natural variations.
  • A satellite system also provides automatic
    coverage of much of the entire globe, and
    therefore, potentially, may enable some degree of
    global generalization.
  • Lastly, a satellite system monitoring drylands on
    a global scale has a greater potential for
    producing data useful for currently unanticipated
    needs than does dedicated airborne data
    collection.

6
Airborne Remote Sensing ?
  • Airborne remote sensing is not an efficient tool
    suitable for such monitoring for many reasons.
  • First, airborne sensors can only provide a
    relatively local view.
  • Each acquisition of data using an airborne system
    requires an active decision to fly the instrument
    over the target area.
  • It is extremely difficult to accurately reproduce
    flight lines, which dramatically increases the
    difficulty of analysing and interpreting the
    monitoring data.
  • Airborne instruments suffer through flight
    stresses each time that the instrument is flown,
    which can compound the difficulty of comparing
    data acquired at different times.
  • The operating expenses for an airborne instrument
    are very high

7
VEGETATION SIGNATURES
8
Vegetation Signatures
  • The most vital single parameter for dryland
    monitoring is the signature of vegetation cover.
  • Vegetation provides protection against
    degradation processes such as wind erosion, and
    subtle changes in vegetation are likely to be a
    precursor of wind erosion.
  • Decreasing vegetation cover, and changes in the
    population of the vegetation cover, (e.g., from
    creosote bush to bursage), are sensitive
    indicators of land degradation.
  • Vegetation reflects the hydrological aspects of
    arid regions, and provides an indicator of
    current and recent hydrological fluxes.

9
Signature Specifics
  • The 0.4-1.0 µm part of the electromagnetic
    spectrum contains the red edge feature of the
    green vegetation reflectance spectrum which is
    exploited by standard vegetation indices.
  • Laboratory and field spectra of some desert
    plants indicates that there are also interesting
    features in the 2.0--2.5 µm range related to leaf
    coatings, but the visible wavelength pigment
    features are more easy to sense.

10
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11
Extracting a vegetation signal
  • Current techniques of remotely measuring
    vegetation cover are based on the characteristics
    of humid vegetation with large leaf area, fairly
    continuous canopies, high chlorophyll content,
    and thin, translucent leaves.
  • Arid vegetation has special adaptations to the
    water and thermal stresses which occur in these
    regions.
  • The inability of arid region vegetation to
    regulate temperature through transpiration leads
    to small leaves and open canopies to improve the
    efficiency of cooling the leaves by moving air.
  • The small leaves reduce the amount of leaf area
    in arid vegetation, and the open canopies mean
    that a great deal of soil is visible through most
    arid vegetation canopies.

12
Extracting a vegetation signal (cont.)
  • Further compounding the problem is the fact that
    arid plants tend to have vertically oriented
    leaves to avoid direct sunlight during midday,
    which is when remote sensing observations are
    generally made in order to have the brightest
    lighting and the fewest shadows.
  • The edge-on view of these leaves means that
    little of the small amount of leaf area present
    in arid plants can be seen with remote sensing.
  • Other plants change the orientation of their
    leaves by rolling and unrolling or steering the
    leaves which has the same effect of reducing the
    leaf area visible to remote sensing.

13
Extracting a vegetation signal (cont.)
  • Many arid region plants have leaf hairs and
    coatings which alter the spectral properties of
    the leaves, and they often have less chlorophyll
    concentration than humid plants.
  • On a larger scale, desert shrubs, which are the
    dominant plant type in the vast majority of
    deserts around the world, are sparsely
    distributed.
  • This sparse distribution of shrubs, coupled with
    the open canopies of the shrubs means that
    variability of the soil background will be very
    significant in the reflected spectrum in arid
    regions.

14
Extracting a vegetation signal (cont.)
  • The nature of the soil noise,'' which is
    partially due to non-linear spectral mixing, will
    be different than that observed in humid regions
    because very little light physically passes
    through the leaves in arid plants, while
    significant amounts pass through humid plant
    leaves (Roberts et al., 1994).
  • There is high variability in the nature,
    appearance, and behaviour of arid vegetation with
    respect to recent rainfall.
  • There are also significant variations in the
    appearance of plants due to seasonal effects.
  • Lastly, spectral characteristics differ
    significantly between shrub types.

15
VEGETATION INDICES
16
  • The lower right boundary of this sort of plot is
    taken to be formed by pixels containing only bare
    soil, and this boundary is referred to as the
    soil line.
  • The tip opposite the soil line, which has high
    NIR reflectance and low red reflectance, is taken
    to be where pixels completely covered with
    vegetation plot on this diagram.
  • All pixels covered by a mixture of bare soil and
    vegetation will plot between these two extremes.
    This sort of figure is sometimes called a
    tasselled-cap, because of its shape.

17
Points to Note Soils
  • Soil components that affect spectral reflectance
    can be grouped into three components
  • Colour
  • Roughness
  • Water content
  • Roughness also has the effect of decreasing
    reflectance because of an increase in multiple
    scattering and shadowing.
  • Analysis has shown that for a given type of soil
    characteristic, variability in one wavelength is
    often functionally related to the reflectance in
    another wavelength.

18
Points to Note Soils
  • Thus, variation in any one soil parameter can
    give rise to a line on a 2D scattergram.
  • For RED-NIR scattergrams, this is termed the
    soil line, and is used as a reference point in
    most vegetation studies.
  • The problem is that real soil surfaces are not
    homogeneous, and contain a composite of several
    types of variation.
  • However, Jasinki and Eagleson (1989) showed that
    when experimentally varying three soil parameters
    together, the composite line is generally linear,
    but can exhibit scatter.

19
Points to Note Vegetation Indices
  • There are three types of vegetation Index
    available
  • Simple, Intrinsic Indices
  • Indices which use a soil line
  • Atmospherically Corrected Indices

20
Points to Note Vegetation Indices
  • Within these, there have been four general
    approaches taken, based on the characteristics of
    the tasselled-cap.
  • The first approach is to measure the distance
    between where the pixel plots in the tasselled
    cap plot from the soil line. (The soil line is
    used because it is generally easier to find than
    the 100 vegetation point).
  • The second approach is to assume that the
    isovegetation lines all intersect at a single
    point.
  • The third approach is to recognise that lines do
    not intersect at a single point.
  • The final possibility is to assume that the
    isovegetation lines are non-linear.

21
Simple Vegetation Indices
  • As the first approximation, Jordan (1969)
    developed the ratio vegetation index
  • RVI NIR
  • RED
  • RVI itself is no longer generally used in remote
    sensing. Instead a index known as the normalized
    difference vegetation index (NDVI) is used.
  • NIR-RED RVI 1
  • NIRRED RVI - 1

22
  • Both RVI and NDVI basically measure the slope of
    the line between the origin of red-NIR space and
    the red-NIR value of the image pixel.

23
NDVI
  • The only difference between RVI and NDVI is the
    range of values that the two indices take one.
    The range from -1.0-1.0 for NDVI is easier to
    deal with than the infinite range of the RVI.
  • NDVI can also be considered to be an improvement
    of DVI which eliminates effects of broad-band
    red-NIR albedo through the normalization.
  • Crippen (1990) recognized that the red radiance
    subtraction in the numerator of NDVI was
    irrelevant, and he formulated the infrared
    percentage vegetation index (IPVI)
  • IPVI NIR ½ (NDVI1)
  • NIR RED
  • IPVI is functionally equivalent to NDVI and RVI,
    but it only ranges in value from 0.0-1.0.
  • It also eliminates one mathematical operation per
    image pixel which is important for the rapid
    processing of large amounts of data.

24
Soil Line ??
  • The soil line will be different for different
    areas (soil types) and the soil line will vary
    for different NIR and red band passes.
  • Table 9 gives the slope and intercept for the
    soil line calculated from AVIRIS data for
    different bandpasses.
  • The clear implication is that the only truly
    valid way of making use of a vegetation index
    which uses a soil line is to compute the soil
    line for each image.
  • If a good calibration is available, calculating
    the soil line for each target for each instrument
    once might suffice.
  • Of course, even the assumption that all of the
    bare soil spectra in a single image form a line
    may also be inaccurate.
  • Elvidge and Chen (1995) found that SAVI and PVI
    consistently provided better estimates of LAI and
    percent green cover than did NDVI or RVI.
  • They also found that there was a steady
    improvement in all of these vegetation indices as
    narrower and narrower bands were used for the
    near-infrared and red reflectances, with SAVI
    being the best index at the very narrowest
    bandwidth.
  • The advantage of narrow bands for use with
    vegetation indices provides additional arguments
    for the use of high spectral resolution remote
    sensing.

25
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26
Indices Using the Soil Line
NIR
Soil line
a
Red
  • The perpendicular vegetation index (PVI) of
    Richardson and Wiegand (1977) assumes that the
    perpendicular distance of the pixel from the soil
    line is linearly related to the vegetation cover.
    This index is calculated as follows
  • PVI NIR red - sin a (NIR) cos a (red)
  • where (NIR) is the near-infrared reflectance,
    (red) is the red reflectance and (a) is the angle
    between the soil line and the near-infrared axis.
    This means that the isovegetation lines (lines of
    equal vegetation) would all be parallel to the
    soil line.

27
Soil Adjusted VI
  • Huete (1988) suggested a new vegetation index
    which was designed to minimize the effect of the
    soil background, which he called the
    soil-adjusted vegetation index (SAVI). This
    vegetation index takes the form
  • SAVI NIR-RED (1L)
  • NIRREDL
  • Huete showed evidence that the isovegetation
    lines do not converge at a single point, and he
    selected the L-factor in SAVI based where lines
    of a specified vegetation density intersect the
    soil line.
  • The net result is an NDVI with an origin not at
    the point of zero red and near-infrared
    reflectances.

28
TSAVI
  • For high vegetation cover, the value of L is 0.0,
    and L is 1.0 for low vegetation cover.
  • For intermediate vegetation cover L0.5, and that
    is the values which is most widely used. The
    appearance of L in the multiplier causes SAVI to
    have a range identical to the of NDVI (-1.0 -
    1.0).
  • Huete (1988) suggested that SAVI takes on both
    the aspects of NDVI and PVI.
  • A further development of this concept is the
    transformed SAVI (TSAVI) Baret and Guyot, 1991),
    defined as
  • TSAVI a(NIR-aR-b)/Ra(NIR-b) 0.08(1a2)
  • Where a and b are, respectively, the slope and
    intercept of the soil line (NIRsoil aRsoil b),
    and the coefficient value 0.08 has been adjusted
    to minimise soil effects

29
MSAVI
  • Qi et al. (1994a) further developed a vegetation
    index which is basically a version of SAVI where
    the L-factor is dynamically adjusted using the
    image data.
  • They referred to this index as the Modified Soil
    Adjusted Vegetation Index or MSAVI. The factor L
    is given by the following expression
  • L 1 - (2 x slope x NDVI x WDVI)
  • where WDVI is the Weighted Difference Vegetation
    of Clevers (1988) which is functionally
    equivalent to PVI and calculated as follows
  • WDVI NIR - (slope x RED)
  • Qi et al. (1994a) also created an iterated
    version of this vegetation which is called
    MSAVI2
  • MSAVI2 1/2 ((2(NIR1)) - (((2NIR)1)2 -
    8(NIR-red))1/2).

30
Atmospherically Corrected Indices
  • In order to reduce the dependence of the NDVI on
    the atmospheric properties, Kaufman and Tanere
    (1992) proposed a modification to the formulation
    of the index, introducing the atmospheric
    information contained in the BLUE channel,
    defining
  • ARVI (NIR RB) / (NIRRB)
  • Where RB is a combination of the reflectances in
    the Blue (B) and Red (R) channels
  • RB R ? (B-R)
  • And ? depends on the aerosol type (a good value
    is ? 1 when the aerosol model is not available)
  • The authors emphasise the fact that this concept
    can be applied to other indices. SAVI can be
    changed to SARVI by changing R to RB.
  • However, Myneni and Asrar (1994) noted that
    although SAVI and ARVI correct for soil and
    atmospheric effects independently, they fail to
    do so when applied simultaneously.

31
Atmospherically Corrected Indices
  • Pinty and Verstraete, (1992) proposed a new index
    to account for soil and atmospheric effects
    simultaneously.
  • This is a non-linear index called GEMI
  • GEMI n(1-0.25n) (R-0.125)/(1-R)
  • Where n
  • 2(NIR2-R2) 1.5NIR 0.5R / (NIR R 0.5)
  • This index is seemingly transparent to the
    atmosphere, and represents plant information at
    least as well as NDVI but is complicated, and
    difficult to use and interpret.

32
Which One to Use ?
  • In a simulation study, Rondaux et al., (1996)
    found that an optimised SAVI (OSAVI), where the
    value of X was tuned to 0.16 easily out-performed
    all other indices for application to agricultural
    surfaces.
  • They found that a locally tuned SAVI (MSAVI) was
    more appropriate for all other applications.
  • However, in Niger, Leprieur et al (1996) found
    GEMI to be less sensitive to the atmosphere
    however, they found it incapable of dealing with
    variations in soil reflectance.
  • They suggest that the use of MSAVI with an
    accurate atmospheric correction is essential or
    perhaps using a combination of GEMI and MSAVI.

33
Overall
  • One important difficulty which has been
    encountered in using the vegetation indices which
    attempt to minimize the effect of a changing soil
    background is an increase in the sensitivity to
    variations in the atmosphere (Leprieur et al.,
    1994 Qi et al., 1994b).
  • There have been several approaches in the
    development of vegetation indices which are less
    sensitive to the atmosphere, such as the
    Atmospherically Resistant Vegetation Index (ARVI)
    of Kaufman and Tanré (1992) and the Global
    Environmental Monitoring Index (GEMI) of Pinty
    and Verstraete (1991).
  • Chehbouni has data demonstrating that GEMI is
    highly sensitive to soil noise.
  • Qi et al. (1994b) demonstrated that soil noise
    caused GEMI to violently break down at low
    vegetation covers, and that all of the vegetation
    indices designed to minimize the effect of the
    atmosphere have increased sensitivity to the
    soil, which makes these indices completely
    unsuitable for arid regions.
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