Transcript
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Abstract
Predictive models of animal distributions based on habitat can be used to assess the likely effects
of changes in landuse on a species. In this study we developed a model of the distribution of
buzzard nests in part of Argyll, Scotland. The model was tested on a further study site. . !abitat
was described in terms of vegetation cover, derived from satellite imagery, and topography, using
a digital terrain model to classify altitude, slope, aspect and ruggedness. This data base was
incorporated into a "eographical Information System. #. $nvironmental data, in the form of
areas and boundary lengths of vegetation types and landscape classifications, were e%tracted
from the data base for circular areas of various radii from the centre of &'' m grid cells covering
each study area. (e also included counts of buildings and lengths of roadways. ). *oth logistic
regression analysis and discriminant function analysis were used to produce classification
models, which assigned each grid cell a probability that it contained a buzzard nesting area. The
best predictive model was based on median altitude, total boundary length between all vegetation
categories, the amount of moorland and the length of boundary between pre+thicket forestry and
open ground. &. This model successfully reclassified -./ of grid cells in the areas from
which it was developed and .#&/ in a test area. Previous studies have fre0uently predicted the
distribution of species within the environment, but here we were able to predict the distribution
of nesting areas within the distribution of a species.
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Modelling landscape-scale habitat use using GIS and remotesensing: a case study with great bustards
Summary
1
Many species are adversely affected by human activities at large spatial scales and their conservation requires detailed information on
distributions. Intensive ground surveys cannot keep pace with the rate of land-use change over large areas and new methods are needed for
regional-scale mapping.
2
We present predictive models for great bustards in central pain based on readily available advanced very high resolution radiometer
!"#$%%& satellite imagery combined with mapped features in the form of geographic information system !'I& data layers. "s "#$%%
imagery is coarse-grained( we used a 12-month time series to improve the definition of habitat types. )he 'I data comprised measures of
pro*imity to features likely to cause disturbance and a digital terrain model to allow for preference for certain topographies.
+
We used logistic regression to model the above data( including an autologistic term to account for spatial autocorrelation. )he results from
models were combined using ,ayesian integration( and model performance was assessed using receiver operating characteristics plots.
ites occupied by bustards had significantly lower densities of roads( buildings( railways and rivers than randomly selected survey points.
,ustards also occurred within a narrower range of elevations and at locations with significantly less variable terrain.
/ogistic regression analysis showed that roads( buildings( rivers and terrain all contributed significantly to the difference between occupied
and random sites. )he ,ayesian integrated probability model showed an e*cellent agreement with the original census data and predicted
suitable areas not presently occupied.
0
)he great bustards distribution is highly fragmented and vacant habitat patches may occur for a variety of reasons( including the species
very strong fidelity to traditional sites through conspecific attraction. )his may limit recoloni3ation of previously occupied sites.
4
We conclude that "#$%% satellite imagery and 'I data sets have potential to map distributions at large spatial scales and could be applied
to other species. While models based on imagery alone can provide accurate predictions of bustard habitats at some spatial scales( terrain
and human influence are also significant predictors and are needed for finer scale modelling.
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Introduction
Many wild species are adversely affected by human-induced changes in land use that operate over very large spatial scales. 5or e*ample( in
6urope agricultural policy change and its consequent effects on farming practice have profoundly influenced many bird species !78onnor 9
hrubb 1:;0
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are needed for every grid square or pi*el covering the species distribution. $owever( it is likely to detect more subtle changes in distributions
than interpolation methods( providing the predictor variables are reasonably correlated with the habitat features chosen by the species being
mapped. 5ortunately( the digital data sets now available reasonably appro*imate some ecological requirements of the great bustard and
probably other species too. 7ur emphasis throughout was on the use of readily available data sets that later would permit scaling-up to the
national or regional scale.
7ur starting premise was that vegetation type( terrain characteristics and human disturbance determine bustard distributions in pain( factors
that may apply equally to other species. 'reat bustards favour open( steppe-like( landscapes comprising cerealBfallow rotations( a habitat
that is particularly under threat of intensification through irrigation under 6uropean Anion agricultural policy. Cumerous studies !/yon
1:;+>1&reported the absence of flocks within a band of
about 1 km around villages and busy roads. 5or other birds( strong effects of roads on breeding density and performance have been noted
!%ei@nen 9 5oppen 1::
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Methods
Study site
)he pilot study area measured c.120 K 1+2 km( centred on Madrid province( pain( with the lower right co-ordinate at 2L W( +:L: C
!5ig. 1&. It was chosen because accurate great bustard census data( geographic information system !'I& data coverages and satellite
imagery were readily available. )he area comprised N:O agricultural land( 2:N2O natural scrub or wooded cover( ;N2O forestry( N0O built
environment and the remaining 1N1O bare ground or open water !6uropean Anion 8orine /and 8over =ro@ect&. )he ma@ority of analyses
were confined to Madrid province itself because this was where bustard censuses were conducted but( where possible( models were
e*trapolated to the full study area !see later&.
Figure 1."ppro*imate location of the study site !bo*ed area& measuring 120 K 1+2 km in central pain( centred on Madrid province.
Gis coverages
?igiti3ed infrastructure maps were available from "utonomous 8ommunity of Madrid 8artographic ervice at 1 P 1>> >>> scale. )he data
were separated into four layers !roads( buildings( railways and river systems& using "rc#iew software !6%I 1::0&and then rasteri3ed to ;>-
m pi*els in Idrisi !6astman 1::&. )his resolution was chosen because a digital terrain model !?)M& was also available at this scale for the
province. We created new variables from each of the infrastructure layers by replacing the central pi*el of a 1+ K 1+-cell moving window with
the proportion of pi*els recording the feature of interest !)able 1&. )his is equivalent to calculating the percentage land cover of the feature at
;>-m resolution within a c.1-km2quadrat.
Variable Defnition
GIS layers
RoadsProportion of 80-m pixels in a 13 13-array containing roads. E!i"alent to t#e density of roads at 1$1-
%m resol!tion
&!ildings Proportion of 80-m pixels in a 13 13-array containing '!ildings or large '!ilt str!ct!res s!c# as air(elds
Rail)ays Proportion of 80-m pixels in a 13 13-array containing rail)ay trac%s
Ri"ers Proportion of 80-m pixels in a 13 13-array containing ri"ers
*ltit!de +#e altit!de in m recorded on t#e 80-m digital terrain model
+errain
"aria'ility ,
oe/cient of "ariation in altit!de in a -pixel array of 80-m pixels. eas!res "ariation in altit!de at
0$1-%m,resol!tion
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Variable Defnition
GIS layers
+errain
"aria'ility 81
oe/cient of "ariation in altit!de in a 2 2-pixel array of 80-m pixels. eas!res "ariation in altit!de at
0$,-%m,resol!tion
+errain
"aria'ility 12
oe/cient of "ariation in altit!de in a 13 13-pixel array of 80-m pixels. eas!res "ariation in altit!de at
1$1-%m,resol!tion
Slope slope. +#e maxim!m of eit#er t#e nort#4so!t# or east4)est slopes across a 3 3-pixel array
Satellite
imagery
567I mont#9+#e "al!e of t#e normali:ed di;erence "egetation index for eac# mont# 'ased on a maxim!m "al!e
composite of *7
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Bird census data
" complete great bustard census was conducted in March 1::4 for the whole of Madrid province. )he distribution of the species in the study
area was known from previous censuses !"lonso 9 "lonso 1::>( 1::0&. ?uring 1 week three teams each of two e*perienced observers
counted bustard flocks at the known breeding areas and also searched all other potential sites. In practice( birds sighted @ust beyond the
province boundary were also recorded. 7ne-hundred and three flocks !:0> birds& were first marked on field maps( then digiti3ed and the
point coverage rasteri3ed to ;>-m and 1N1-km resolutions( recording the presence of bustards in the pi*el. )his resulted in 41 pi*els with one
or more flocks at 1N1-km resolution( and :2 pi*els at ;>-m resolution. 5or comparison( we generated equivalent random point coverages(
stratifying them geographically both to sample the whole province and to reduce spatial autocorrelation !i.e. to reduce the probability of using
ad@acent pi*els&. )he number of random points selected is important because prevalence !i.e. the ratio of positive to negative pi*els& affects
the outcome of model performance testing in logistic regression as used here !5ielding 9 ,ell 1::4
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%esults of logistic regression models are often @udged as successful if predicted probabilities R >N correspond with observed occurrences
and values S >N with absences. $owever( this dichotomy is arbitrary and lacks any ecological basis< patches rated with a >N0 probability of
occurrence may in fact be unsuitable. )he more powerful approach used here is to assess model success across the full range of
dichotomies using receiver operating characteristics !%78& plots. %78 plots are widely used in clinical chemistry !,eck 9 hult3 1:;0N !for
a chance performance& to 1N> for a perfect fit. We generated %78 plots using = software and calculated the "A8 and its standard error
using a non-parametric approach. )he results are reported here as the "A8 U its standard error together with the significance of a test that
the area F >N( i.e. that the model results do not differ from chance.
)he probability surfaces derived from the two independent logistic regression models were combined using ,ayesian inference after first
resampling the 1N1-km surface to ;>-m resolution. )he technique permits prior probabilities !for e*ample derived from one model& to be
revised on the basis of new probabilities calculated from a second model. )he appropriate formula !from=ereira 9 Itami 1::1&isP
where PC?#Iis the probability derived from the C?#I model( and P'Iis the probability derived from the model based on 'I data layers.
,ayesian approaches to decision-making have previously been used as here by=ereira 9 Itami !1::1&( and in other ways in wildlife
distribution modelling by"spinall 9 #eitch !1::+&and)ucker et al. !1::4&.
Results
Univariate analyses
"t ;>-m resolution( neither the bustard locations nor the random points e*hibited significant spatial autocorrelation !Morans I S G>N>>>1 in
both cases&. 5ollowing 8liff 9 7rd !1:;1&we therefore compared site characteristics using standard t-tests ad@usted for unequal variance.
ites occupied by bustards had significantly lower densities of roads( buildings( railways and rivers than random points !)able 2&. 7f these(
the effect of buildings was particularly strong< bustards occurred at sites with a mean of only >N;O land cover by buildings( whereas random
sites averaged 1>NO !PS >N>>1&. )able 2gives the ranges for each variable within which bustards occurred and these are combined as a
threshold mask in 5ig. +a. )his clearly shows the elimination of the radiating network of roads and buildings from Madrid 8ity.
Variable Bustard sites Random points Adusted t!test Ran"e used by bustards
Roads 0$0,, = 0$0> 0$0>3 = 0$080 ,$,8? 041$0
&!ildings 0$008 = 0$0, 0$10 = 0$,1 >$3,??? 0418$3
Rail)ays 0$00 = 0$0,, 0$018 = 0$0, ,$0,? 0411$,
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Variable Bustard sites Random points Adusted t!test Ran"e used by bustards
Roads 0$0,, = 0$0> 0$0>3 = 0$080 ,$,8? 041$0
Ri"ers 0$0,8 = 0$0>> 0$03 = 0$0 3$11?? 041$
*ltit!de A3$2 = $2 A22$A = ,8$> >$1A??? 4A80 m
+errain "aria'ility , 0$>0 = 0$>13 0$2>2 = 0$81> >$1??? 041$0
+errain "aria'ility 81 0$8A1 = 0$ 1$18 = 1$0,A $1??? 04,$3A
+errain "aria'ility 12 1$13 = 0$>2 1$22 = 1$,A0 $>8??? 0$034,$81
Slope 3$08 = 3$0 $0 = A$2, 3$8??? 041,$2
Table #. $omparison o% %eatures around sites occupied by "reat bustards and &' random points (except
%or terrain variability and slope based on )' and )* sites+ respectively+ to eliminate ed"e e,ects-. Values
are means standard deviations and all t!tests are adusted %or si"nifcant une/ual variance
Figure . )hreshold masks for areas suitable for bustards !in black& based on !a& constraints of roads( buildings( railways and rivers(
and !b& with the addition of altitude and terrain variability.
,ustards occurred within a narrow range of elevations from 00 to 4;> m a.s.l.( whereas random points covered the range 2>B21: m a.s.l.
)he terrain surrounding bustard sites was also significantly less variable than that around random sites at all three scales e*amined
!)able 2&. )here was no obvious trend for a difference between the scales( although the significance of the difference between bustard and
random sites increased within window si3e. Asing 1+ K 1+ cells !about 1 km2&( bustards occurred at sites with up to 2N;O coefficient of
variation in altitude !mean 1N2O&( whereas random sites had up to N:O variability !mean 2N>O&. 8ombining the results for altitude and
terrain variability with the mask in 5ig. +ayields5ig. +b. )his indicates that only 21++ km2of the 0> km2!+2N0O& studied meets the
characteristics of infrastructure( elevation and river networks at sites used by bustards. 5urthermore( this area is fragmented into blocks by
the radiating networks from Madrid 8ity.
Predictive modelling using logistic regression
,uilding threshold masks !e.g.5ig. +&is a convenient way to define areas meeting criteria but suffers from failing to take into account
interactions between variables. Asing the 'I variables in )able 2!selecting terrain variability 10: for variation in elevation&( we built
predictive models for bustard presence using forward stepwise logistic regression. 7nly railways and slope were not included in the model
!at PS >N>& and all other variables were significant at PS >N>1 !)able +&. )he greatest contributions came from terrain variability
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!PS >N>>>1& and housing density !PS >N>>>2&. 7verall the %78 plot for the model !5ig. a& had an "A8 of >N;:; U >N>2+ and was highly
significant !PS >N>>1&. " simplified probability surface for bustard occurrence based on the significant 'I variables is shown in 5ig. . )here
are obvious similarities with5ig. +bbut the probability plot shows far more te*ture and greater weighting in the east-central and e*treme
south-west parts of the province.
0odel Predictor variable $oecient 2tandard error
GIS data layers 80-m resol!tion9 Roads B10$2A?? 3$A8
&!ildings B,$20??? A$13
Ri"ers B2$8?? 3$A>
*ltit!de B0$002??? 0$003
+errain "aria'ility 12 B1$1>??? 0$,2
onstant9 2$,??? ,$08
567I data 1$1-%m resol!tion9 567I Can!ary9 0$1,? 0$0
567I 5o"em'er9 B0$31??? 0$08
567I *pril9 4 567I C!ly9 0$08?? 0$03
onstant9 ,3$,?? 8$2,
Table '. 2ummary results o% the lo"istic re"ression analyses. The si"nifcance o% the coecients was
assessed usin" the 3ald statistic
Figure !. %78 plots for !a& logistic regression model with five 'I variables( !b& logistic regression model based on C?#I( !c&
autologistic regression model based on C?#I( and !d& ,ayesian integrated model incorporating both the 'I variables and the
autologistic C?#I model.
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Figure ". implified probability surface for the occurrence of great bustards based on logistic regression analysis of five 'I
variables.
We built a separate model based on the satelli te data at 1N1-km resolution. )he stepwise inclusion of the e*planatory variables resulted in the
selection of three C?#I variables for January( Covember and the contrast "pril minus July !)able +&. Cone of the quadratic terms was
significant. )he model %78 plot !5ig. b&had an "A8 of >N:+ U >N>22 and was highly significant !PS >N>>1&. )he resultant probability surface
is shown in5ig. 0. "lthough this model of habitat suitability was derived by analysing only the presence or absence of bustards( the
probabilities also relate to the numbers of birds present !5ig. 4&. Most points lie beneath the diagonal from bottom left to top right( indicating
that large numbers of birds only occur in pi*els with high predicted probabilities.
Figure #. implified probability surface for the occurrence of great bustards based on logistic regression analysis of temporal C?#I
signatures.
Figure $. %elationship between the predicted probability of occurrence generated by logistic regression analysis of presenceB
absence data and the number of bustards recorded.
We took account of autocorrelation in the model based on the satellite data by including an autologistic term< the regression coefficients
stabili3ed within five iterations to produce5ig. ;.8omparing this with5ig. 4reveals the down weighting of isolated pi*els previously defined
as suitable( and the consolidation of the larger suitable habitat blocks. )he %78 plot for the autologistic model !5ig. c&differed very little
from the standard C?#I model !"A8 F >N:+ U >N>22( PS >N>>1&. )he 1N1-km2resolution probability surface in5ig. ;was resampled to ;>-m
resolution in order to combine it with the thresholds imposed by infrastructure and natural features !i.e.5ig. +&. )aking an arbitrary lower
threshold of >O probability of occurrence from the habitat suitability map !5ig. ;&alone yielded an area of :42 km2or 1N:O of the province.
)his provides an estimate of the area of the province with vegetation inde* signatures comparable to those used by bustards. When
combined with5ig. +b( however( this falls to 4> km2or ;N4O of the province !5ig. :&. )he difference between these two values !>> km2& is
the amount of apparently suitable habitat that bustards are unlikely to use due to pro*imity to unfavourable landscape
elements. 5igure :!area 4> km2& is the area of Madrid province that cannot be distinguished from sites occupied by bustards using 'I and
remote sensing( based on simple threshold mapping.
Figure %. implified probability surface for the occurrence of great bustards based on autologistic regression analysis of temporal
C?#I signatures. Cote how in comparison with5ig. 0the image shows better definition of core areas.
Figure &. )hreshold map for the occurrence of great bustards based on the limits from5ig. +band habitat suitability R >N from 5ig. 4.
?efined in this way( ;N4O of the province could be used by great bustards.
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"n alternative approach is to combine the two probability surfaces based on feature data !5ig. & and C?#I !5ig. ;&using ,ayesian
integration !see the Methods&. "s5ig. represents largely fi*ed features of the landscape today( we regarded these as prior probabilities that
may be refined by consideration of 5ig. ;which represents land cover based on green biomass. )he ,ayesian integrated probability model
!5ig. 1>&showed an e*cellent agreement with the original census data !simplified in 5ig. 11for ease of display& and had an %78 "A8 value
of >N:0: U >N>1+( PS >N>>1 !5ig. d&.
Figure 1'. ,ayesian integrated probability map for the occurrence of great bustards in central pain.
Figure 11. =redicted probabilities of occurrence R >N4 from the ,ayesian integrated model overlaid with the recorded locations of
great bustard flocks. Cote that flocks observed beyond the province boundary are ad@acent to areas predicted to be highly suitable
for bustards.
(iscussion
We started with a premise gleaned from the literature that great bustard distributions may be related to vegetation( topography and human
influence( and sought digital data sets that could characteri3e these features. "t the landscape scale( our analyses successfully predicted the
occurrence of bustards around Madrid province and all these features were significant predictors.
)he negative effect of human disturbance on bustard occurrence is not surprising but is interesting because at first sight it appears that the
birds are well integrated into the urban setting in Madrid province. )here is growing evidence that roads impact on large mammals !Mech
1:;:
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unoccupied sites and indicates the potential of using C?#I time series to predict avian habitats. We believe that our model largely detected
the sharp change in C?#I brought about by rapid crop growth in cereal fields in spring followed by biomass loss through harvesting in July.
$owever( based on local knowledge( it appears that the model is not simply predicting all cereal areas( because some large areas were
e*cluded. $ow the subset of more suitable fields is recogni3ed is less clear.Maurer !1::&has previously shown a relationship between
avian abundance and C?#I( but the correlation of abundance with probabilities of occurrence generated by temporal C?#I curves is new.
)he relationship here indicates that sites defined as suitable have the potential to hold most birds( although they do not necessarily do so.
8onversely( sites defined as unsuitable appear capable of holding only few birds.
?espite the coarse-grained nature of "#$%% data( models based on C?#I alone do provide significant predictions of bustard occurrence. In
some situations( remotely sensed data may be all that are available and our results indicate that they are a useful first step in model building.
$owever( we conclude that while models based on vegetation alone can provide accurate predictions of bustard habitats at some spatial
scales( terrain and human influence are also significant predictors and are needed for finer scale modelling. 5or e*ample( the breeding site in
the centre of the south-east part of the province !5ig. 11& was not predicted by the C?#I probability surface !5ig. ;& but appeared after
integration with the landscape 'I variables. We thus concur withManel et al. !1:::&that prediction success in distribution models may be
enhanced when local data are available( despite the apparent success of coarse-grained models.
)he use of an autologistic term based on a modified 'ibbs sampler !"ugustin( Mugglestone 9 ,uckland 1::0&in the logistic regression
models proved very effective in sharpening the definition between occupied and unoccupied patches. "lthough similar visual effects can be
achieved more simply in image processing through 'aussian or median fil ters( they lack an ecological basis( whereas the 'ibbs sampler
uses information on the pro*imity of occupied pi*els. We chose to consider neighbours within N km of the target pi*el !i.e. a : K : window
at 1N1-km resolution& because this seemed an appropriate scale for breeding great bustards( comparable with the average area of influence
of a lek."ugustin( Mugglestone 9 ,uckland !1::0&tried a range of window si3es to km distance for red deer Cervus elaphusbut found that
+ km gave optimum results in terms of the balance between model accuracy and computation time. 5urther work is needed on the selection
of optimum neighbourhood distances for a range of species when trying to account for spatial autocorrelation in distribution models.
'enerally( the prediction of occupied sites was more successful than the prediction of absences. 5or e*ample( the ,ayesian integrated
model !5ig. 1>& correctly predicted :+N>O of occupied sites and 4;N:O of unoccupied sites( based on a >O probability dichotomy. )his is
the opposite result to that reported byManel et al. !1:::&for si* bird species and reinforces their view that more work is needed on model
performance indicators and their determinants. ?ifferences in performance at predicting presence and absence may be due to a number of
factors !5ielding 9 ,ell 1::4& but we offer the following ecological e*planations. 5irst( the bustard census data were a single-day snapshot of
occurrences( taken when flocking was at its ma*imum at lek sites. Ander these conditions( ad@acent areas could be mistakenly regarded as
unsuitable whereas with greater flock dispersion they would be occupied. econdly( the panish great bustard population is fragmented into
numerous habitat patches and( due to high site f idelity !"lonso et al. 1::&( movement between patches for breeding may be scarce. )ilman(
/ehman 9 Eareiva !1::4&predict that these conditions will lead to the non-occupancy of some suitable sites even at population equilibrium.
)hus we might e*pect some unoccupied sites to be ecologically inseparable from occupied sites. )hirdly( recent field studies by/ane( "lonso
9 Martin !2>>1&could not discriminate occupied from unoccupied but apparently suitable areas for bustards in central pain( and it is
unreasonable to e*pect large-scale models to outperform intensive field investigations. )heir study compared 1+ areas occupied by great
bustards with a matched set of 12 unoccupied areas nearby. )hese sites could not be distinguished using discriminant analysis on a set of
variables defining relevant habitat characteristics such as crop type( substrate heterogeneity( field si3e( presence of roads( villages and
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powerlines. ,oth their study and ours indicate that not all potentially suitable areas are occupied and that great bustards show fidelity to sites
regardless of the availability of suitable habitat elsewhere. We believe that this may be due to a combination of a series of local e*tinction
processes in recent decades due to human-induced habitat deterioration and hunting( and the very low re-coloni3ation capability of the
species which arises from its complicated lek breeding system. ettlement patterns are probably determined by the presence of conspecifics
rather than habitat cues !J.8. "lonso( unpublished data&. )his means that conservation efforts must be directed towards protecting traditional
lek sites( and that once a lek is e*tinct the site will probably remain empty in the future.
)he limited number of historically documented e*tinctions !e.g. the small patch predicted as suitable west of Madrid city was occupied
2> years ago and 11& and circumstantial evidence !e.g. place names in the larger area with high probability of occurrence south of
the city& suggest that5ig. 11shows the likely distribution of great bustards some 2>B> years ago. ince then many of the predicted areas
have become vacant due to local e*tinction processes. It is also important to remember that the locations in5ig. 11were based on breeding
birds and that these perform seasonal movements and e*pand the occupied area throughout the year. 8onservation based on breeding sites
alone would almost certainly be ineffective( and a landscape-scale approach incorporating seasonal changes in locations is required.
7ur study was preliminary in developing methods for landscape-scale models but the intention is to e*amine distributions at the national
scale. We envisage two ma@or challenges in relation to scaling-up to larger study areas. 5irst( as mentioned earlier( the selection of ma*imum
value C?#I data may not lead to adequate standardi3ation over large areas due to a level-of-view and solar-angle bias. In practice( this
means that a given surface may generate a different C?#IBM#8 score at different locations on the image. )he main factor causing this is the
inherent variability of surfaces at different look angles. " traditional solution to this problem is to first standardi3e images against a common
target such as a large body of water or bare ground !annier et al. 1::;&. " better approach( however( may be to take into account the
bidirectional reflectance distribution function !,%?5& of the surfaces being sensed !8ihlar( Manak 9 #oisin 1::&. 8orrection for these effects
can be undertaken using linear semi-empirical kernel-driven models !%ou@ean( /eroy 9 ?eschamps 1::2& that ad@ust image data for ,%?5
variability and e*tract surface information. Init ial results indicate that the new models provide enormous scope for improving data quality and
also provide useful additional information !8hopping 1::;&.
)he second challenge to scaling-up is that animals may not choose habitats according to absolute needs but may adopt a comparative
approach. =articularly on the edge of a species range( occupied sites are likely to be far from the ideal habitat with poorer breeding
performance to match !/awton et al. 1::&. "lso( several habitat types with different spectral signatures may be equally suitable at large
geographical scales. /arge-scale models must therefore include samples from across the species range and analysis may be better
partitioned spatially prior to modelling.
)c*nowledgements
We are grateful to ?r "ntonio DagVe of Infocarto( .".( for supplying the C7"" data( and the "utonomous 8ommunity of Madrid 8artographic
ervice for the 'I coverages. John Mc"rthur and "lison Martin helped prepare the data for analysis. ?r 6nrique Martn( ?r Manuel Morales(
8arlos Martn( ?r imon /ane and ?r Javier ". "lonso assisted with the collection of bird data. )his research was @ointly funded by ,ritish
8ouncilHMinistry of 6ducation and 8ulture "ccion Integrada $,:0-;2 and $,:4-0: awards( ?'I8D) pro@ect =,:->>0;( and by the
?irecciXn 'eneral del Medio Catural of Madrid 8ommunity.
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