using hyperspectral data to characterize alteration minerals in drill … · 2019. 1. 14. · 1000...
TRANSCRIPT
![Page 1: Using hyperspectral data to characterize alteration minerals in drill … · 2019. 1. 14. · 1000 2 − + × = × 1 ref ref ref Indexmica min 2 min 1000 2 max ( )=∑ ×100 p mineral](https://reader030.vdocuments.mx/reader030/viewer/2022012011/613fdf0cb44ffa75b80480c5/html5/thumbnails/1.jpg)
The application of hyperspectral imagery to the mineralogical mapping of host-rock alteration halos has been developed successfully using the
example of the samples from the area around Cigar Lake uranium deposit. The approach allowed the identification and differentiation of a wide
variety of minerals belonging to most alteration phases already known for this area.
The main limitations of the hyperspectral methods are:
• the difficulty in spectrally discriminating the different di-octahedral K-phyllosilicates (e.g. muscovite, illite), as well the different types of
chlorites (e.g. tri-octahedral chlorite, di-trioctahedral sudoite),
• the significant uncertainty on absolute mineral abundances due to the impossibility of quantifying quartz and fresh feldspar contents.
The alteration mineral proportions are commonly overestimated due to spectrally-inactive minerals like quartz and unaltered feldspar (Fig. 10).
Two reasons can explain this phenomenon:
• the investigation depth of this technique is deeper (i.e. 30 to 100 μm) than the thin section thickness (30 μm);
• the transparency of the silicates in the SWIR range reveals alteration products that are present behind (below) the spectrally-
inactive minerals and thus are not visible optically.
This project on mineral alteration mapping on drill cores using a HySpex SWIR-320m hyperspectral camera has highlighted the application
of hyperspectral imaging on core samples coming from an unconformity-type uranium deposit environment in Canada.
The mineral maps obtained provide information about the sample structure, such as foliation, bedding, and veining that can be present in
the core samples. Petrographic observations have validated the hyperspectral mineralogical mapping. The pseudo-modal compositions
that were obtained are directly related to the surface spectral proportions of these minerals. However, some overestimation of the alteration
mineral proportions due to the technique has to be kept in mind.
The proposed mineralogical semi-quantification methodology may be used in other geological contexts and should improve the under-
standing of the mineralogical alteration distribution around hydrothermal metal deposits.
DISCUSSION AND CONCLUSIONS
Qz
Ilt
Sud + Ilt Ms
Chl
Sud
Sud
30 µm0 µm
100 µm
1 2
1 2
Quartz Chloritized biotite Argillized feldspar
Thin section
Investigation depth:
Illite
Chlorite + Mica
or Sudoite
1
2
Hyperspectral
imagery
A B
2 mm
1
2A B
Figure 10 - Schematic sketch illustrating the local overestimation of clay mineral pro-
portions in spectral-class maps. The A-B section is represented in depth by the
scheme at the bottom. Sud: sudoite; Ilt: illite; Chl: chloritized biotite; Ms: muscovite;
Qz: quartz.
2 mm
Qz
Ilt
Sud + Ilt
Chl Ilt
Ilt
Ilt
Ilt
Ilt
Sud
Sud
Chl
Qz
Qz
Qz
Qz
Qz
Qz
Qz
Qz
Qz
Ms
1
2A B
Muscovite
Chlorite
Illite
Chlorite + Mica
or Sudoite
Mica + Chlorite
Unclassified
Legend
Color composite images quickly highlight the minerals that characterize the samples without significant
amounts of data processing (e.g. Fig. 7). However, minerals presenting a similar spectral behavior can dis-
play the same colors in one 3-band color composite image, so it is then necessary to use a series of color
composites to differentiate all of these minerals.
RESULTS AND VALIDATION
Validation of the mineral identification results for alteration minerals obtained using hyperspectral imagery was carried out: i) through optical microscopic petrographic analysis on thin sections, and ii) by visual inter-
pretation of images digitized with a VHX 2000 numerical microscope (Keyence) and processed using the Keyence image processing software. The classical mineral identification was done using cross polarized
transmitted light. These interpretative mineral maps were superimposed on the hyperspectral maps (Fig. 9). The bivariate comparison diagrams show linear best-fit lines and correlations obtained between hyper-
spectral imaging mineral proportions and comparable data from the image processing of petrographic thin sections (Fig. 9).
The mineral maps (or spectral-class images, see Fig. 8): i) allow fast identification of the main spectral-
ly-active mineral species, especially those resulting from alteration events; and ii) highlight the main petro-
graphic textures such as foliation, bedding, veins, and the geometry of pervasive alteration.
2 mm 2 mm
Qz
Ilt
Sud + Ilt
Ms
Chl
Sud
Sud
2 mm 2 mm
Qz
Ilt
Sud + Ilt
Chl
IltIlt
Ilt
Ilt
Ilt
Sud
Sud
Chl
QzQz
Qz
Qz
Qz
Qz
Qz
Ilt
Sam
ple
: n
o.
1
(peg
mati
te)
1 2 3 4
Ms
Qz
Qz
2 mm 2 mm 2 mm
Ilt Ilt
Ilt
Ilt
Ilt
Ilt IltIlt
Ilt
IltIlt
Ilt
Ilt
Sud
Sam
ple
: n
o.
8
(peg
mati
te) Sud
2 mm
Unaltered
feldspar
Unaltered
feldspar
2 mm 2 mm 2 mm
Sam
ple
: n
o.
6b
(gn
eis
s)
2 mm
Ilt
Ms
Drv
Unaltered
feldspar
CbSudCb
Ilt
Ms
Drv
Unaltered
feldspar
2 mm 2 mm
Ilt +
Chl +
Qz
Ilt + C
hl (<
500 µ
m)
Chl (
> 5
00 µ
m)
+ Ilt
Chl (
> 5
00 µ
m)
+ Ilt
Chl
Qz +
Ilt
Qz +
Ilt
Qz +
Ilt
Qz +
Ilt
2 mm
Sam
ple
: n
o.
9b
(peg
mati
te)
2 mm
Ilt +
Chl +
Qz
Ilt + C
hl (<
500 µ
m)
Chl (
> 5
00 µ
m)
+ Ilt
Chl (
> 5
00 µ
m)
+ Ilt
Chl
Qz +
Ilt
Qz +
Ilt
Qz +
Ilt
Qz +
Ilt
CbCb
Figure 9 - Comparison between thin section images and spectral-class maps for the pegmatite samples no. 1 (A), no. 8 (B), and no. 13 (C), and for a gneiss sample (no. 6, D). 1) Thin
section images are in transmitted, polarized, and analyzed light; 2) Mineral maps from thin section interpretation; 3) Spectral-class maps, and 4) Layering of the thin section mineral
maps over the spectral-class maps. Ilt: illite; Sud: sudoite; Chl: chloritized biotite; Ms: muscovite; Cb: carbonate; Drv: dravite; Qz: quartz. The diagrams show the comparison of
the mineralogical proportions obtained by thin section analysis (X-axis) and by hyperspectral image classification (Y-axis) showing correlations between the methods.
1 2 3
1 2 3 4
4
1 2 3 4
Chlorite
Illite + Muscovite Sudoite
Kaolins,
Dravite,
Carbonates
y = 0,9256x
R² = 0,721
0
10
20
30
40
50
60
0 10 20 30 40 50 60 70
Min
era
l p
rop
ort
ion
s (
rela
tiv
e %
)
deri
ved
fro
m h
yp
ers
pectr
al
imag
e a
naly
sis
Mineral proportions (relative %) derived from thin section analysis
Chlorite
Illite + Muscovite
Sudoite
Kaolins,
Dravite,
Carbonates
y = 0,6402x
R² = 0,114
0
10
20
30
40
50
60
70
0 10 20 30 40 50 60
Mineral proportions (relative %) derived from thin section analysis
Min
era
l p
rop
ort
ion
s (
rela
tiv
e %
)
deri
ved
fro
m h
yp
ers
pectr
al
imag
e a
naly
sis
Chlorite,
Dravite,
Kaolins
Illite + Muscovite
Sudoite
Carbonates
y = 0,9686x
R² = 0,982
0
10
20
30
40
50
60
70
0 10 20 30 40 50 60 70
Mineral proportions (relative %) derived from thin section analysis
Min
era
l p
rop
ort
ion
s (
rela
tive
%)
deri
ved
fro
m h
yp
ers
pectr
al
imag
e a
naly
sis
ChloriteIllite + Muscovite
Sudoite
Dravite,
Kaolins
Carbonates
y = 0,9394x
R² = 0,629
0
5
10
15
20
25
30
35
40
45
0 10 20 30 40 50
Mineral proportions (relative %) derived from thin section analysis
Min
era
l p
rop
ort
ion
s (
rela
tive
%)
deri
ved
fro
m h
yp
ers
pectr
al
imag
e a
naly
sis
Dolomite
Magnesite
Unclassified
Rhodocrosite
Calcite
Dickite + Illite
Dickite
Kaolinite
Illite (basement)
Paragonite
Phengite
Muscovite
Illite (sandstone)
Mica + Chlorite
Chlorite + Mica
or Sudoite
Chlorite
Masked
pixels
Dravite
5 cm
5 cm
21
12
34
5
6
7
8
9
10
11
12
13
14
20
2348
21972270
(nm)
5 cm
5 cm
Figure 7 - HySpex SWIR-320m color composites defined with bands sensitive to the spectral properties of illite (red indi-
cates 2348 nm; green indicates 2270 nm; blue indicates 2197 nm) with normalized reflectance [5]. Pegmatites: samples no.
1, 2, 3, 8, 9 and 13; gneisses: samples no. 4, 5, 6, 7, 10, 11, 12 and 14; sandstones: samples no. 20 and 21.
Dickite
Illite basement
Illite sandstone
Dolomite
Figure 8 - HySpex SWIR-320m spectral-class image of the Waterbury/Cigar Lake project samples. Pegmatites: samples no.
1, 2, 3, 8, 9 and 13; gneisses: samples no. 4, 5, 6, 7, 10, 11, 12 and 14; sandstones: samples no. 20 and 21. See color key for
image color-class assignment. Note that unclassified (black) pixels correspond to quartz, feldspar, and sulphide minerals,
and also to small phyllosilicate grains that display a noisy spectral signature.
Legend
(images 3 and 4)
MuscoviteIlliteUnclassified
Mica + Chlorite
Chlorite
DolomiteDickiteChlorite + Mica or Sudoite
21
12
34
5
6
7
8
9
10
11
12
13
14
20
Minerals can be identified in each pixel of the entire image due to a spectral resolution high enough to resolve the relatively narrow OH absorption
features. Minerals can be highlighted using color composites or by classifying each pixel of the hyperspectral data cube. Two types of methods exist:
i) unsupervised, which are automatic, based on iterative processes with no operator intervention, and ii) supervised, which are manual, with operator
intervention. Most of unsupervised methods do not demonstrate proper mathematical sophistication; supervised methods have generally been used
on hyperspectral data, such as the Spectral Angle Mapper method (SAM) [19] and the Mixture-Tuned Matched Filtering method (MTMF) [20]. Conse-
quently, an algorithm was developed and implemented in the IDL language to classify minerals based on their spectral signature in two steps (see
flowchart in Fig. 4 and Fig. 5).
The first step (Fig. 4, box 1) looks for the maximum and minimum absorp-
tion feature position in a selection of characteristic ranges determined for
each mineral type listed in Table 2.
The second step (Fig. 4, box 2) uses the combination of minimum and max-
imum found in step one to classify each pixel in a class number. Some of
the minerals (e.g. carbonates, tourmaline, and kaolins) have sufficiently
contrasting signatures to be classified using only the position of their maxi-
mum absorption features (Fig. 4, box 2a). Other minerals having common
absorption bands (e.g. micas and kaolins at 2207 nm) require additional
conditions to differentiate them (Table 3 and Fig. 4, box 2b).
Since illite and muscovite are similar in chemistry, their differentiation
requires comparisons in multiple ranges of the spectrum. This is done
using other parameters, such as: i) depth of the absorption feature
linked to the water (around 1900 nm, Eq. 1), ii) Index mica value de-
fined by Eq. 2, and iii) spectral slope characteristics of some mineral
mixtures. An example is presented in Fig. 6 to illustrate the parameters
defined by the equations above.
The "chlorite index" (same expression as the "mica index" Eq. 2, with
different spectral ranges) is used to classify the various chlorites, with-
out species discrimination.
The “pseudo-modal” composition is the spectral proportion of identifiable
minerals present in each sample and is defined by Eq. 3.
min
20801808
ref
refrefDepth OH ×
+×=
21000
2
−
+
××= 1
refref
refIndex mica
min2min
max21000
( ) 100×= ∑p
mineral
mineralN
Pixel%Proportion
with: ref1808the reflectance value at 1808 nm
ref2080the reflectance value at 2080 nm
refmin the minimum reflectance value in
the range 1808-2080 nm
Eq. 1
Eq. 2
with: refmin the first minimum reflectance
value in the range 2139-2294 nm
refmaxthe maximum reflectance value in
the range 2207-2338 nm
ref2minthe second minimum reflectance
value in the range 2294-2377 nm
with: Proportion the proportion of a mineral
(class) in the chosen sample, in %
the sum of the pixels belonging
to the mineral
Eq. 3
Illite
Muscovite
Illite
18
08
nm
20
80
nm
21
39
nm
22
07
nm
22
94
nm
23
38
nm
18
08
nm
1 23
4
ref
a) b)
max
ref2min
refmin
Class Carbonates Kaolins Tourmaline
(dravite) Micas Chlorites
Reflectance minimum (research interval 1)
2106 - 2402 2153 - 2192 2324 - 2397 2139 - 2294 2187 - 2275
Reflectance maximum (research interval 1)
2331 - 2417 2178 - 2207 - 2207 - 2338 2251 - 2343
Reflectance minimum (research interval 2)
- 2192 - 2241 - 2294 - 2377 2275 - 2387
Reflectance maximum (research interval 2)
- 2207 - 2260 - - -
Table 2 - Spectral ranges (in nm) defined to select maximum and minimum absorption
feature positions to classify minerals.
Mineral
Membership conditions for the mineral class
Minimum reflectance position in the range (nm)
Maximum reflectance in the
range (nm) Other necessary conditions
Magnesite 2300 - 2310 2331 - 2402 -
Dolomite 2310 - 2330 2331 - 2402
-
Calcite 2330 - 2335 -
Rhodocrosite 2335 - 2336 2331 - 2402 -
Kaolinite 2160 - 2170 2207 - 2260
-
Dickite 2170 - 2180 -
Mixed Illite-Dickite -
2207 - 2338
positive slope between 1379 and 1398 nm during mica research
Paragonite 2190 - 2195 -
Illite (basement) 2192 - 2210 DepthH2O (1900 nm) > 1100
Illite (sandstone) 2192 - 2210 IndexMica > 750
Muscovite 2206 - 2210 DepthH2O (1900 nm) < 1200 IndexMica < 400
Phengite 2217 - 2222 -
Micas + Chlorites - negative slope between wavelength refmin and
wavelength refmax during mica research
Chlorites < 2260 IndexChlorite > 16
Chlorite + Micas or
Sudoite -
negative slope between 2187 nm and wavelength refmin during chlorite research
Tourmaline (Dravite) 2367 - 2369 - -
Table 3 - Spectral ranges (in nm) defined to classify minerals based on additional spec-
tral features.
Figure 4 - Processing flowchart of the algorithm developed and implemented in IDL to
classify minerals from a hyperspectral image.
1
2
2a
2b
Tourmaline Kaolins Carbonates
Dra
vite
Kaolin
ite
Dic
kite
Magnesite
Calc
ite
Dolo
mite
Rhodocro
site
MicasChlorites
(Fe-c
hlo
rite)
(Int-c
hlo
rite)
(Mg-c
hlo
rite)
Para
gonite
Illite (b
asem
ent)
Muscovite
Phengite
Minimum of reflectance position (in wavelength) research and shoulder research (maximum of reflectance)
Chlo
rite +
mic
a
or s
udoïte
Mic
a +
chlo
rite
Illite +
dic
kite
Constraints :
- 1900 nm absorption depth (H2O)
- Mica index
- Slope calculation
Constraints :
- Slope calculation
- Chlorite index
- Second reflectance
minimum position
Illite (s
andsto
ne)
Chlorites
Classified image
bn
b1 Input data (hyperspectral cube)
Figure 6 - Spectral ranges and bands used to calculate the water absorption depth
near 1900 nm and the micas index. a) Spectral ranges used for the parameter re-
search. 1: minimum of reflectance research window for the H2O feature; 2: re-
search window for the first minimum of reflectance for Al-OH mica feature
(refmin); 3: research window for the maximum of reflectance for the Al-OH mica
feature (refmax); 4: research window for the second minimum of reflectance for
the Al-OH mica feature (ref2min). b) representation of the refmin, refmax, and
ref2min parameters to differentiate illite from muscovite.
min
max
2min
2min
2
min max
*
MINERALOGICAL MAPPING METHODOLOGY
Figure 5 - HySpex SWIR-320m spectra of minerals characterizing Waterbury/Cigar
Lake project samples: a) illite, b) muscovite and phengite, c) chlorite, d) dickite, e)
dolomite, and f) dravite. Continuum removal has been applied to enhance the dif-
ferences in shape between spectra. The short vertical lines indicate wavelength
location of important absorption features.
Illite 1
Illite 2a
Illite 2b
Illite 2c
Muscovite 1
Muscovite 2
Phengite
OH, H2O H2O OH, H2O
19
10
2207
23
48
2217
2197 2353
2207
2197
2343
2202
2348
Mg-OHAl-OH Mg-OHAl-OHH2O
14
13
19
10
14
13
a) b)
- -
DolomiteDravite
1934
2324
1408
1442
19342207
2241
2368
H2O (Mg,Ca)CO3 Mg-OHAl-OHH2OOHe) f)
--
Mg-Fe chlorite
Mg chlorite
Dickite
14
03
22562343
2251 2333
1384
1413
2178
2207
Mg-OHFe-OHOH, H2O Al-OHOHc) d)
- -
1808
2080
min
min
max
2min
“Pseudo-modal” composition because it takes into account only the minerals having a spectral signa-
ture in the SWIR range (i.e. excludes mainly quartz, unaltered feldspars, and sulfides).
In summary, class membership needs three conditions: i) absorption
feature positions have to be defined in a nanometer-wide range, ii) a
maximum is necessary to identify the spectral shape, and iii) for some
minerals (e.g. micas, clays and chlorites) additional constraints are
necessary.
∑ mineralPixel
mineralProportion
HySpex SWIR-320m
Motorized platform
Spectralon®
(reference)
Computer
(data acquisition)
Halogen lamp
Figure 3 - a) HySpex SWIR-320m camera: the device is mounted on the scanning system while samples are
placed on a motorized platform (the red arrow shows the translational movement of the platform during data ac-
quisition). b) Core sample set on the motorized platform.
SAMPLING
16 barren drill core sections (10 to 30 cm long), taken from drill holes within Waterbury/Cigar project area and from 1 to 8 km away from the deposit,
were selected. They represent different: i) lithologies from the basement (pelitic gneiss and pegmatites) and the sandstone, and ii) alteration types
and degrees (from retrograde to hydrothermal alteration, and from weak to strong hydrothermal alteration degree).
HYPERSPECTRAL DATA ACQUISITION
Gneiss, pegmatite, and sandstone samples were scanned using a HySpex SWIR-320m hyperspectral camera (Table 1 and Fig. 3) in order to detect
the presence and abundance of key minerals like clays and tourmaline.
a) b)Spectralon®
Core sample
Support
Motorized
platform
Support for the Spectralon® 4 cm(approximate scale)
Manufacturer Norsk Elektro Optikk (NEO)
Dimensions (L × W × H; cm) * 36 × 14 × 15.2
Weight (kg) 7
Optical device Lens
(30 cm x 100 cm x 300 cm)
Field Of View (FOV; degrees) 14
Type of detector SWIR/HgCdTe
Spatial pixels (line) 320
Spectral range (nm) 1300-2500
Re-sampling interval (nm) User-defined
Integration time (ms) User-defined
Number of bands 239
Pixel size (mm × mm) 0.5 × 0.5
Table 1 - HySpex SWIR-320m technical specifications.
*camera support not taken into account
SAMPLES AND TOOLS
GEOLOGICAL SETTING: CIGAR LAKE DEPOSITThe Cigar Lake deposit is located in the eastern part of the Athabasca Basin (Fig. 1), at the un-
conformity between the Manitou Falls Formation (Athabasca Group) and the Archean-Pro-
terozoic basement complex (Wollaston Group). The entire orebody forms a continuous lens
approximately 2 km long by 25 to 100 m width, lying at a depth of approximately 450 m below
the surface. The high-grade core of the deposit is approximately 600 m in length and 100 m in
width.
ALTERATION
The hydrothermal host-rock alteration affects both the Athabasca sandstones and the base-
ment rocks, in particular close to reactivated fault damage zones (Fig. 2).
In the sandstones, the alteration forms haloes that are geometrically arranged around the
orebody, extending up to 300 m from the main mineralization.
In the basement, two hydrothermal alteration zones are evident. The first zone, located near
the unconformity, is composed of illite and chlorite (mainly sudoite which replaces retrograde
chlorites), replacing the original rock-forming silicate minerals (biotite, garnet, amphibole, feld-
spar), and local dravite (alkali-deficient dravitic tourmaline: magnesiofoitite sub-group). This
zone is also frequently depleted in graphite and sulphides. In the second zone the rock is
clay-altered, but the original textures and quartz are preserved, as well as graphite and sulphi-
des, and illite predominates over sudoite.
MINERALIZATION
The main orebody forms a lens lying at and above the unconformity within the Athabasca
Group sandstones; however, a minor part of the uranium mineralization occurs in the
sub-Athabasca basement rocks (Fig. 2).
20 m
20
m
Faults
Perched
mineralization
Illite 1Mc + illite 2M
+ dickite
Quartz zone
Illite 1Mc + dickite
Hematitic zone
Main mineralization
Sudoite +
hydromuscovite
1Mt
Sudoite
+ hydromuscovite
1Mt
S N
UNCONFORMITY
MANITOU FALLS
Illitized zone
Wollaston Group:
Augen textured
metapelitic gneiss
Fine-grained
metapelitic gneiss
Calc-magnesian
gneiss
OVERBURDEN
WOLLASTON GROUP
Figure 2 - Schematic cross-section showing the geology, ge-
ometry, and the alteration haloes of the Cigar Lake deposit
(modified from 15 to 18).
Figure 1 - Simplified geological map showing the location of the Water-
bury/Cigar project property and the Cigar Lake deposit within the Athabasca
Basin. Other uranium deposits are highlighted by red dots. Projection: UTM
Zone 13, datum NAD 1983.
INTRODUCTIONHyperspectral imaging is a technique that combines both spectral and spatial imaging methods. It is based on the representation of objects in hun-
dreds of narrow and contiguous spectral bands, with a spectral resolution of 10 nm or less [1]. The acquired images correspond to a "hyperspectral
cube" [2] endowed with two spatial dimensions (i.e. X and Y) and an electromagnetic spectral dimension (i.e. Z).
Hyperspectral imaging systems have been used in mineral exploration to map minerals of economic interest at different scales: from space-borne [3,
4] and airborne scales [4, 5] that cover large areas, to more local scales such as outcrops on the ground [6] or laboratory-scale on collected samples
[7].
Unconformity-type uranium deposits are formed at the redox interface between
oxidized uranium-bearing fluids and a reducing environment [8, 9]. The mineral-
ization is intimately associated with alteration minerals that can be used in mineral
exploration as proxies for uranium ore [10, 11, 12].
To characterize such mineralogical alterations in the field, hand-held infrared
spectrometers are used, with spectral data being acquired along drill cores at dis-
crete sampling intervals (e.g. every 2 to 3 m). To date, only a few studies on core
sample material from uranium deposits using hyperspectral imagery have been
performed [13, 14], however, this type of study has not been conducted on uncon-
formity-type U deposits.
The aim of this study is to evaluate the utility of mapping host-rock alterations on
sampled drill core material using hyperspectral imaging. This analytical tool will in-
crease the data density, as well as data quality, to better identify alteration miner-
als due to higher spatial and spectral resolutions.
A series of samples were collected from drill holes on the Waterbury/Cigar explo-
ration project managed by AREVA Resources Canada Inc. (ARC; Fig. 1). The
samples were scanned (hyperspectral imaging), analyzed, and interpreted for
mineralogy, with calibration using petrography by optical microscopy. A computer
algorithm was developed to classify and discriminate minerals based on both the
position and the depth of diagnostic absorption bands.
INTRODUCTION
Using hyperspectral data to characterize alteration minerals
in drill core from Cigar Lake U depositMAGALI MATHIEU , REGIS ROY , PATRICK LAUNEAU , MICHEL CATHELINEAU , DAVID QUIRT
1,3 1 2 3 1
1) AREVA Resources Canada Inc., P.O. Box 9204, 810 - 45th Street West, Saskatoon, SK S7K 3X5, Canada 2) Laboratoire de Planétologie & Géodynamique/UMR-CNRS 6112, Université de Nantes, BP 92209, F-44322 Nantes Cedex 3, France 3) Université de Lorraine, CNRS, CREGU GeoRessources Laboratory, BP 70239, F-54506 Vandoeuvre-lès-Nancy, France
References[1] Goetz et al. (1985), Science 228 (4704), 1147-1153. [2] Vane and Goetz (1988), Remote Sens. Environ. 24, 1-29. [3] Kruse et al. (2003), Geosci. Remote Sens. 41(6), 1388-1400. [4] Kruse et al. (2012), Int. J. Remote Sens. 33 (6). [5] Roy et al. (2009), Geochem. Geophys. Geosyst. 10. [6] Kurz et al. (2013), Int. J. Remote Sens. 34 (5), 1798-1822. [7] Baissa et al. (2011), J. Afr. Earth Sci. 61 (1), 1-9. [8] Hoeve and Quirt (1987), Canada. Bull. Mineral. 110, 157–171. [9] Jefferson et al. (2007), Fifth Decennial International Conference on Mineral Exploration, 741-769. [10] Hoeve and Quirt (1984), Saskatchewan Research Council, SRC Technical Report, 187 pp. [11] Quirt (2010), GeoCanada 2010, Calgary. May 2010, 4 pp. [12] Quirt (2013), The 15th International Clay Conference, July 7-11 2013, Rio de Janeiro, Brazil. [13] Zhang et al. (2013), Uranium Geology 29 (4), 249-255. [14] Sun et al.(2015), AER-Advances in Engineering Research 9, 392-395. [15] Bruneton (1987), Economic Minerals of Saskatchewan, Special publication no. 8, 99-119. [16] Cramer (1986), Canadian Nuclear Society, Winnipeg, Man, 697-702. [17] Fouques et al. (1986), Canadian Institute of Mining
and Metallurgy (33) 218-229. [18] Pacquet and Weber (1993), Can. J. Earth Sci. 30, 674-688. [19] Kruse et al. (1993), Remote Sens. Environ. 44, 145-163. [20] Williams and Hunt (2002), Remote Sens. Environ. 82 (2-3), 446-456.