GEODESY AND CARTOGRAPHY
Vol. 64, No 1, 2015, pp. 125-137
© Polish Academy of Sciences
DOI: 10.1515/geocart-2015-0010
Landscape monitoring of post-industrial areas using LiDAR
and GIS technology
Piotr Wężyk1, Marta Szostak1, Wojciech Krzaklewski2, Marek Pająk2,
Marcin Pierzchalski3, Piotr Szwed3, Paweł Hawryło1, Michał Ratajczak1
1
University of Agriculture in Krakow, Faculty of Forestry
Institute of Forest Resources Management
Department of Forest Management
Geomatics and Forest Economics – Laboratory of Geomatics
Aleja 29 Listopada 46, 31-425 Krakow, Poland
e-mail: p.wezyk@ur.krakow.pl; m.szostak@ur.krakow.pl; p.hawrylo@ur.krakow.pl; gorhydrus@gmail.com
2
University of Agriculture in Krakow
Faculty of Forestry
Institute of Forest Ecology and Silviculture
Department of Forest Ecology and Reclamation
Aleja 29 Listopada 46, 31-425 Kraków, Poland
e-mail: wkrzak@ar.krakow.pl; rlpajak@cyf-kr.edu.pl
3
ProGea Consulting Krakow
9 Henryka Pachońskiego St., 31-223 Krakow, Poland
e-mail: marcin.pierzchalski@progea.pl; piotr.szwed@progea.pl
Received: 16 October 2014 / Accepted: 23 December 2014
Abstract: The quarrying industry is changing the local landscape, forming deep open
pits and spoil heaps in close proximity to them, especially lignite mines. The impact can
include toxic soil material (low pH, heavy metals, oxidations etc.) which is the basis for
further reclamation and afforestation. Forests that stand on spoil heaps have very different
growth conditions because of the relief (slope, aspect, wind and rainfall shadows, supply
of solar energy, etc.) and type of soil that is deposited. Airborne laser scanning (ALS)
technology deliver point clouds (XYZ) and derivatives as raster height models (DTM,
DSM, nDSM=CHM) which allow the reception of selected 2D and 3D forest parameters
(e.g. height, base of the crown, cover, density, volume, biomass, etc). The automation of
ALS point cloud processing and integrating the results into GIS helps forest managers
to take appropriate decisions on silvicultural treatments in areas with failed plantations
(toxic soil, droughts on south-facing slopes; landslides, etc.) or as regular maintenance.
The ISOK country-wide project ongoing in Poland will soon deliver ALS point cloud
data which can be successfully used for the monitoring and management of many
thousands of hectares of destroyed post-industrial areas which according to the law, have
to be afforested and transferred back to the State Forest.
Keywords: ALS, vegetation parameters, post- lignite mining areas, reclamation
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1. Introduction
The industrial development of countries with mineral resources, often leads to strong
local transformations and changes in the landscape, water bodies, climate, or even
to disturbances of biodiversity. The quarrying industry frequently leaves behind hard
coal or lignite mines, such as open pits and spoil heaps, open pit quarries (stones,
sand) and open pit sulfur mine spoils as well. In Poland, in 2012 about 64343 hectares
(0.2% of the country’s area) have been devastated and degraded and approximately
2.720 ha of these sites were reclaimed (Dmochowska and Witkowski, 2013). In
the 1970’s and 80’s, every year, approx. 4.400 ha was reclaimed when in the year
2000 only 2.200 ha. Following the technical definition, land reclamation consists
of its restoration or assigning a utility or natural value. Devastated or degraded
land is restored through appropriate landscaping, improving physical and chemical
properties, regulating waterways, regenerating soils, strengthening scarps as well as
constructing or reconstructing a necessary road system. From an ecological point of
view, reclamation is a process of restoring the full functionality and complicity of the
ecosystem (Pietrzykowski and Krzaklewski, 2007).
The management and monitoring of the natural environment, including areas
degraded by mining activities is connected with the constant need for very precise
data, both geometric (vectors of the object borders, terrain models, the relative
elevation of the objects etc.) as well as attributes (descriptive) information. In the
case of woody vegetation, there is a whole range of features used in the forest
inventory (e.g. height, canopy density, species composition, tree stand density) for
the assessment of the development phase or the condition of forest stands. Apart
from traditional forest inventory fieldwork, a massive use of geospatial technology
is noticeable, including digital airborne photographs/orthophotomaps (RGB or CIR;
3D/2D), precise measurements using GNSS (Szostak and Wezyk, 2013; Wezyk and
Krzaklewski, 1999), UAV imagery, remote sensing satellite images (Drzewiecki et
al. 2014; Hejmanowska, 2006), or Light Detection and Ranging (LiDAR) technology
(Szostak et al., 2014; Wezyk, 2012; Wezyk et al., 2013). LiDAR is acronym for
Airborne Laser Scanning (ALS), Terrestrial Laser Scanning (TLS) or Mobile Laser
Scanning or Satellite Laser Scanning (SLS). The data sets collected with the mentioned
technologies are integrated into Geographic Information Systems (GIS) and used for
generation of new 2D and 3D spatial information.
The basic task connected with ALS data processing for vegetated areas (forest,
trees, other woodlands etc.), is the filtration of impulses reflected from the layer of
trees, and from those reflecting from the ground (Hyyppä et al., 2005). The applied
algorithms for modeling DTM (Digital Terrain Model), based on the class of points
(ground=2), was earlier selected from the whole dataset (Kraus and Pfeifer, 1998). In
this process, the most often used algorithm is that of the active TIN model (Axelsson,
2000). The TIN model in the following step of the analyses is transformed into
a raster model GRID (ESRI) or GeoTIFF (Wezyk et al., 2008). After selecting the
point cloud ALS of the class „ground”, the representations of other classes based on
Landscape monitoring of post-industrial areas using LiDAR and GIS technology
127
the relative height above the ground, e.g.: low vegetation (height range: 0.0-0.4 m),
medium (0.041-2.0 m) or high (>2.01 m). The class of buildings and infrastructure
(„buildings”) was generated automatically due to the detection of planar surfaces
(roofs) in TerraScan (Terrasolid_ software).
The application of ALS technology in environmental management, apart from
the important DTM (deriving slope and aspect) leads to using models such as:
the normalized Digital Surface Model (nDSM). The nDSM denotes the surface
representing the relative heights of objects, e.g. trees, buildings, and can be applied,
among others, to mark the limits (e.g. height class) of the vegetation, supported by
radiometric information from aerial imageries (Szostak et al., 2014). In case of forests,
the advanced analyses (2D and 3D) of vegetation structure (Koch et al., 2006) based
on the Crown Height Model (CHM) which means the same as nDSM generated from
classes; ground + vegetation. Directly in the ALS point cloud some forest inventory
parameters can be retrieved, such as: height (top of single tree, base of crown, or
mean upper height of the whole stand), horizontal canopy density or light penetration
index (2D), number of trees (e.g. ha-1), number and area of gaps (Wezyk et al., 2013),
crown size (diameter, radius, area 2D/3D, volume) or vertical structure of the forest
stand (Wezyk, 2008). Features strongly correlated with height, but impossible to
be directly defined, include the trunk diameter (DBH) or biomass (Næsset, 1997).
Counting the number of trees based on ALS data is directly connected with the
delineation of individual tree crowns (Yu et al., 2004) the use of local maxima or GIS
algorithms (e.g. the reversed catchment method; Wezyk et al., 2010). The Object Based
Image Analysis (OBIA or GEOBIA) approach based on automatic segmentation and
grouping of pixels according to the height attribute (nDSM) or standard deviation, but
also the shape and other spectral characteristics, can be used to support the integration
of ALS data with aerial or satellite imagery (Szostak et al., 2014).
The purpose of the presented work was an demonstration of the potential use
of ALS point cloud data and some derivatives (raster height models: DTM, DSM,
nDSM) to demonstrate the semi-automatic process of retrieving selected 2D and 3D
inventory parameters of the vegetation overgrowing the reclaimed spoil heaps of the
lignite mines in Turow and Belchatow (Poland) and integration within GIS system
helping to manage those newly created initial forest ecosystems.
2. Test area, material and methods
The study was performed on two spoil heaps (Figure 1) located in Turow (Bogatynia;
SW Poland) and Belchatow (central Poland), who are remnants of the brown coal
mining.
The Lignite Mine Turow (50°56’39.56”N; 14°58’20.05”E) lies in the Sudetic
ecoclimatic zone, submontane macroregion. The period of vegetation is one of the
longest in Poland (200–220 days), and the annual sum of precipitation ranges from
700 to 800 mm. The area of the outer dump of the Lignite Mine Turow in Bogatynia
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is about 2.175 ha and is one of the biggest in the world. Recently, the dump was
secured and the forest reclamation work was carried out. A significant part of the
reclaimed area is already administered by the National Forest Holding “State Forests”
(Forest District Piensk).
The spoil heap Belchatow (1.480 ha) is located in central part of Poland
(51°12’44.99”N; 19°25’47.28”E). The climate in the Belchatow area is transitional
and changeable due to frequent interactions between polar maritime and continental air
masses. The average annual temperature is around 7.6–8oC and the total precipitation
ranges from 550 to 600 mm. The vegetation period lasts from 210 to 218 days.
The external spoil heap ranges in height from 120 to 180 m and covers an area of
1.480 ha, where the area of slopes is 1200 ha. The Belchatow dump was constructed
with a non-selective method in period 1977-1994. About 134 million m3 of overburden
rocks covering the lignite deposit were dumped in total. The first forestations of the
outer dump of the „Belchatow mine” started in 1984, mainly with poplar trees. The
afforestations were started from the north to the east and from the west to the south.
Looking at the composition of tree species on the spoil heap, one should differentiate
between the top of the dump and its slopes, because in both cases the vegetation
fulfills different tasks and was introduced in another way. Scotch pine, despite good
growth indicators, were not grown on the slopes, but composes 50% of all species.
The remaining tree species planted on top are birch (26%), alder (12%) and native
species of oak (9%). On the slopes, the most common species are e.g.: birch 24%,
black locust 16%, alder 16%, and pine 12%.
Fig. 1. The study areas on the map of Poland (left); the enlarged part of Turow (T) with the spoil heap
(middle); and open pit with outer dump in Belchatow (B)
The ALS point cloud data used in the presented study came from the ISOK
(Informatics System of the Country Protection from extraordinary threat) project
which was run in Poland in 2011 with the goal of covering the whole country until
2016 (already approximately 70% is done). The ALS point clouds used had a density
of 4 pts/m2. The classification was done according rules of APSRS (LAS format;
ver. 1.2). The digital map of forest compartment on the outer dumps was made by
the on-screen vectorization of the analogue maps and its calibration (PL-1992) and
Landscape monitoring of post-industrial areas using LiDAR and GIS technology
129
verification using nDSM (ArMap Esri). The TerraScan and TerraModeler (Terrasolid)
modules were applied to perform: verification of ALS point clouds, classification,
filtration, generating DTM, conversion of height models into GRID etc. To define
the 2D and 3D parameters of vegetation FUSION (e.g. using cloudmetrics algorithm;
McGaughey, 2012) and LASTools (Rapidlasso, 2014) software were used. For the
GIS modelling and calculations of hillshade and some spatial analyses the ArcGIS
ESRI (ver. 10.2) software was used.
3. Results
In this chapter, some selected examples of 2D and 3D parameters for forest vegetation
growing in the Turow and Belchatow lignite mine areas, retrieved from ALS point
cloud analyses and their derivates (raster models) will be presented.
Digital Terrain Model (DTM)
Based on ALS point cloud class „ground”, the DTM was generated (TIN transform to
GRID; GSD 1.0 m, Figure 2), opening the possibility of the classification of relative
heights of three vegetation classes and GIS aspect and slope analysis and hillshade
relief of DTM as well. The last model is very useful for checking erosion risk and
searching for local landslides. Using DTM surface, the volume of the spoil heap was
calculated, reaching for Turow 1.43 milliard m3 and Belchatow 1.36 milliard m3. The
relative height of Turow was 246.9 m (from lowest part in W 223.26 m a.s.l.; max.:
470.16 m a.s.l.) and 212.4 m in case of Belchatow (lowest W part 19.15 m a.s.l.;
max.: 405.5 m a.s.l.)
Fig. 2. DTM – open pit (left) and outer dump (right) in Belchatow
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The control based on precise DTM confirmed that most slopes of the Belchatow
outer dump meet the requirements from the reclamation project (optimal slopes
values 1: 3.5). The areas of the slopes exceeding the 15o cover only 14% the area.
Remaining areas covers: 0o to 2.5o (32%); 2.5o-5o (13%); 5o-10o (18%) and 10o-15o
(23%). Western and northern aspects of spoil heap are predominant, where W: 24%,
N: 21%; WN: 9%; SE: 16%; NE/E: 10% each and S/SW 5% each.
Digital Forest Map (DFM)
Every area, which belongs to the Polish State Forest National Holding, should be
covered by an DFM, to have a relation to the descriptive data base SILP (forest
inventory data). On checking the geometrical correctness for Turow and Belchatow
spoil heaps it was find out that many errors of the compartment borders can be find
(Figure 3). This is because of the problems of the reference point on reclaimed areas
and lack of GNSS precise measurement done by Forest service or the lignite mining
responsible for reclamation (afforestations). The first step was, the updating of the
DFM, using nDSM in the background. Although there are examples of successful
automatic forest delineation based on ALS data (Eysn et al., 2014; Sačkov and
Kardoš, 2014), in the presented study the DFM was updated manually.
Fig. 3. Errors in geometry of Digital Forest Map (DFM) checked on nDSM
(left: Turow, right: Belchatow spoil heap)
The 2D and 3D Structure of High Vegetation
One of the important characteristic obtained from ALS point cloud, which enables
3D analysis of vegetation, is the number of returns. For example in the analyzed
sub-compartment no.: 21/2 (Turow) the number of subsequent fractions of returns
shows that the area is covered by tall vegetation, because more than 35% of
registered impulses makes: a second, third and forth echo. Using different software,
e.g. LAStools, the 2D analysis of the distribution of subsequent returns is possible,
looking for examples for places, where the signal reflects only from the ground or
Landscape monitoring of post-industrial areas using LiDAR and GIS technology
131
only from vegetation cover, not penetrating further (useful in leaf-ON period in case
of deciduous stands).
To perform the 3D statistical analyses, the ALS point cloud is reduced to so called
normalization to eliminate the influence of the changing surface of ground (Figure
4). After normalization the ground only gets 0.0 m and the remaining ALS points the
relative height up to maximum value (e.g. 32.5 m). Often the tree crowns growing
over very steep slopes can get an overestimated value of the normalized height
because of DTM used for this projection. The CloudMetrics software (FUSION
package; McGaughey, 2012) can be used for calculating values, like minimal and
maximal height, mean, median, standard deviation, skeweness of distribution or the
values of subsequent percentiles. These statistics are very useful for forest application.
The parameter “Percentile 95” for example describes the height, below which there
are 95 per cent of the whole analyzed population of the ALS points. The results
of selected 3D parameters for selected sub-compartment 21/2 (Turow) are presented
below (Table 1).
Fig. 4. Cross-sections through the classified ALS point cloud in sub-compartment 21/2 (left)
and the normalized point cloud (right)
Table 1. Basic 2D/3D indices calculated by cloudmetrics
(McGaughey 2012) on ALS point cloud
Statistics
Value [m]
maximal Height
26.64
mean Height
3.70
Height – Standard deviation
5.53
height – Variance
30.54
height – Percentile 75
6.83
height – Percentile 80
9.56
height – Percentile 85
13.52
height – Percentile 95
15.01
height – Percentile 99
17.76
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Piotr Wężyk i in.
The horizontal canopy density (2D) in the subcompartments established on
the spoil heaps, can also be defined and visualized in a raster form (ASCII Grid)
using cover algorithm (FUSION). For each pixel defined by the size, e.g. 10 x10 m,
a number of first echoes compared to all the registered returns inside the analyzed
raster is calculated (values 0-100%). The user depending of the undergrowth can
set the heightbreak for calculating the cover of the main crow layer. Performing
a traditional forest inventory is a subjective assessment of tree stand canopy density
made by a person, who usually has no possibility of objectively choosing the check
point characterizing the whole area. On the contrary, ALS method allows objective
comparison of the results from many years of the ALS campaigns in the same range
(0-100%).
Based on normalized ALS point cloud the maps of spatial distribution of woodland
height can be made to help the forest service to make a suitable decision by the
forest managers concerning some silvicultural treatments or even changing the local
water relations. The presented maps (Figure 5) show the in 2D the distribution of 3D
information of the height of vegetation.
One possible analysis of the 3D vertical structure of forest vegetation can be
retrieved using the command DensityMetrics (FUSION; McGaughey, 2012). The
algorithm allows the information to be generated on a number of points e.g. in 1.0 m
vertical intervals, for subsequent raster cells (e.g. GSD 10.0 m). The single 1.0 m
sections in the graph (Figure 6) can be analyzed to find second layer (undergrowth or
the base of the crowns of the first floor).
Percentile 01
Percentile
01
Percentile 10
Percentile
Percentile 50
Percentile
Percentile 75
Percentile
75
Percentile 95
Percentile
95
Elevation maximum
maximum
Elevation
Elevation -- Std.
Elevation
Std.Dev.
Dev.
Allreturns
returns >1m
> 1m (%)
(%)
All
Fig. 5. The different metrix of the height of the forest stands or young plantations growing
on the Belchatow spoil heap
Landscape monitoring of post-industrial areas using LiDAR and GIS technology
133
Fig. 6. The histogram of the number of ALS impulses returned from the vegetation on different heights
(heightbreak >1 m, layers 1.0 m thick; GSD 10 m)
Analyzing the above graph (Figure 6) one can notice that the vegetation occurring
in subcompartment 21/2 (Turow) has relatively uniform character, because all the
layers, starting from 1.01 m to about 16 meters are represented by a similar number
of returns. From about 17.0 m above the ground, the number of points decreases
significantly. For each forest subcompartment on the spoil heap the 3D surface of
vegetation canopy can also be calculated. This can be done by GridSurfaceStats and
SurfaceStats commands (FUSION). With this method, each pixel can represent using
the following raster layers: maximal height, standard deviation of potential volume
(based on maximal value of the height of ALS point inside the analyzed cell) and
surface volume ratio (calculated as ratio = surface volume/ potential volume. The
Area 3D made by CHM in upper example was about 92.736 m2, while the area of the
projection 2D was only 35.169 m2. The volume of the space under the approximated
CHM (nDSM) surface was 281.361 m3. Of course not the whole 3D space is fully
filled with green vegetation, but if proper methods are applied, it will be possible
to obtain the parameters of the statistical model describing the relations between
biomass derived in the field (AOI) and 3D indices calculated based on the ALS
point cloud.
The vegetation characteristics of the forest stands in Belchatow established through
the analysis of the ALS point cloud, is given below (Figure 7). In the presented
project, the advanced spatial analysis was also implemented (3D GIS), based on the
reference models derived from the ALS data (Figure 8).
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Fig. 7. The Belchatow spoil heap – 3D metrix, from left: height of vegetation, cover density
and penetration
Fig. 8. The Belchatow spoil heap – 3D GIS, from top-left: Topographic Position Index (TPI),
Stream Power Index (SPI), Topographic Wetness Index (TWI) and Solar Radiation
4. Conclusions
Application of ALS point clouds analysis in obtaining selected forest inventory
parameters opens up new opportunities in mapping and monitoring large areas,
especially those involving the process of automation and integration of geodata
(Maltamo et al., 2014; White et al., 2013). ALS technology allows the integration
of new methods, in which, in the first stage – the assessment of the forest cover
state should be carried out using the spatial LiDAR indices of 2D/3D structure, first
modifying the DFM’s of the sub-compartment. At the second stage, after the selection
Landscape monitoring of post-industrial areas using LiDAR and GIS technology
135
of proper stratification groups (with support of GIS), the selection of proper AOI on
derived raster maps (e.g. percentile 95; canopy, etc) must be performed and they
should be found in the field (GNSS receivers) for the ground truth. Those areas (plots,
transects) will provide the information, which cannot be directly obtained from ALS
(like DBH, tree species; sub-species etc.). In the last stage using reference data and
mathematical models we can describe, e.g. the influence of: slope, aspect, height
a.s.l., soil type, the content of macro and microelements, tree species etc. on biomass
production. The automatic generation of spatial (2D/3D) characteristics of vegetation
will allow the extension of biodiversity, biomass studies, hydrologic analyses (e.g.
USLE model), or other GIS spatial analyses (like potential of solar energy), in which
up-to-date and precise information on the LULC is used in different decision support
systems managed such areas. Undoubtedly the integration of ALS and locally taken
TLS scans for representative areas (Wezyk 2012), gives new possibilities in automatic
processes of precise modeling of vegetation 2D/3D structure growing on post-mining
areas. Even MLS integration is possible if a proper network of roads exists. Finally,
different drones (UAV) are nowadays offering, not only ALS point cloud data, but
also mutli- or hyperspectral imagery at the same time as well. Aerial photographs
taken with very high overlap (e.g. 80% in leaf-ON period) can be used for generating
very dense point clouds using a photogrammetry/computer vision approach – so
called: stereomatching (e.g. Semi Global Matching algorithm). This low-cost solution
is very competitive to airborne LiDAR but need the detailed DTM, which in turn,
requires an ALS data derived in leaf-off period.
The devastated areas must be returned to nature using the reclamation investments
according to the Polish laws of the environment. The ALS technology can help not
only the quarrying industry building-up new 3D artificial objects in the landscape to
check the risk of erosion and landslides or earth volumes, but can also support forest
managers responsible for the wood biomass production, in areas transferred back to
nature.
Acknowledgments
The article is based on own research conducted at the Faculty of Forestry, University
of Agriculture in Krakow and ALS data processing performed at ProGea Consulting
servers.
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Monitorowanie terenów rekultywowanych z wykorzystaniem technologii LiDAR i GIS
Piotr Wężyk1, Marta Szostak1, Wojciech Krzaklewski2, Marek Pająk2,
Marcin Pierzchalski3, Piotr Szwed3, Paweł Hawryło1, Michał Ratajczak1
1
Uniwersytet Rolniczy w Krakowie, Wydział Leśny
Instytut Zarządzania Zasobami Leśnymi
Zakład Urządzania Lasu, Geomatyki i Ekonomiki Leśnictwa – Laboratorium Geomatyki
Aleja 29 Listopada 46, 31-425 Kraków
e-mail: p.wezyk@ur.krakow.pl; m.szostak@ur.krakow.pl; p.hawrylo@ur.krakow.pl; gorhydrus@gmail.com
2 Uniwersytet Rolniczy w Krakowie Wydział Leśny
Instytut Ekologii i Hodowli Lasu, Zakład Ekologii Lasu i Rekultywacji
Aleja 29 Listopada 46, 31-425 Kraków
e-mail: wkrzak@ar.krakow.pl; rlpajak@cyf-kr.edu.pl
3 ProGea Consulting Kraków
ul. Henryka Pachońskiego 9, 31-223 Kraków, Poland
e-mail: marcin.pierzchalski@progea.pl; piotr.szwed@progea.pl
Streszczenie
W wyniku działalności wydobywczej, w tym eksploatacji odkrywkowej, krajobraz naturalny zostaje
całkowicie zmieniony, powstają wielkoobszarowe tereny bezglebowe w formie zwałowisk i wyrobisk.
W celu powstrzymania degradacji środowiska oraz odtworzenia warunków przyrodniczych konieczne
staje się objęcie tych terenów rekultywacją i zalesianiem, z uwzględnieniem różnych warunków wzrostu
roślinności, wynikających z ukształtowania terenu (nachylenie, ekspozycja, kierunek wiatru i opadów,
dopływ energii słonecznej, itp.) czy rodzaju gruntu. Technologia lotniczego skanowania laserowego
(ALS) dostarcza chmury punktów (XYZ) oraz ich pochodne w postaci rastrowych modeli wysokości,
które umożliwiają wyznaczenie wybranych parametrów 2D i 3D roślinności (np. wysokość drzewostanów i pojedynczych drzew, wysokość podstawy korony, zwarcie, biomasa, itp). Automatyzacja przetwarzania chmur punktów ALS i integracja wyników w systemach GIS pomaga w podejmowaniu decyzji,
dotyczących zabiegów hodowlanych, także na obszarach szczególnie trudnych dla adaptacji roślinności
(toksyczne gleby, susze na południowych stokach, obsunięcia ziemi). Ogólnokrajowy projekt ISOK jest
źródłem danych pochodzących ze skanowania laserowego, które z powodzeniem mogą być używane
do monitorowania i zarządzania wieloma tysiącami hektarów zniszczonych terenów poprzemysłowych,
które zgodnie z prawem mają zostać zalesione i przekazane pod działanie Lasów Państwowych.