In: Wagner W., Sz^kely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
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URBAN VEGETATION DETECTION USING HIGH DENSITY FULL-WAVEFORM
AIRBORNE LIDAR DATA - COMBINATION OF OBJECT-BASED IMAGE AND POINT
CLOUD ANALYSIS
B. Hofle 3, *, M. Hollaus b
a University of Heidelberg, Department of Geography, 69120 Heidelberg, Germany - hoefle@uni-heidelberg.de
b Vienna University of Technology, Institute of Photogrammetry and Remote Sensing, 1040 Vienna, Austria -
mh@ipf. tuwien. ac. at
KEY WORDS: Airborne LiDAR, Vegetation mapping, Open source GIS, Object-Based Image Analysis
ABSTRACT:
In this paper, a new GIS workflow for fully automated urban vegetation and tree parameter extraction from airborne LiDAR data is
presented. The strengths of both raster- and point cloud-based methods are combined, in order to derive a vegetation map layer as
well as single tree parameters (e.g. tree height and crown width) in an efficient way. The workflow is implemented in GRASS GIS
making use of standard GIS functionality and newly developed tools providing access to point cloud analysis. An edge-based
segmentation delineates potential tree crowns, which are further aggregated to single trees or group of trees by using local
topological information (e.g. percentage of outline touched by neighbors) and constraints on segment geometry (e.g. shape of
segments). Furthermore, the classification makes use of segment attributes that have been extracted from the full-waveform point
cloud (e.g. percentage of first echoes, echo width and signal amplitude). A representative study area in the City of Vienna is used to
demonstrate the applicability of the developed object-based GIS workflow. Buildings and vegetation objects could be separated with
high accuracy, where at maximum 14% of classified vegetation segments confuse with buildings (mainly building edges).
Concluding, the unique high density (50 pts/m 2 ) full-waveform LiDAR data open a new scale in 3D object extraction but demanding
for novel strategies in object-based raster and point cloud analysis.
1. INTRODUCTION
Vegetation monitoring and tree inventory play an important role
in modem urban spatial data management, as many benefits and
applications inherit from this detailed up-to-date data source
such as monitoring of functions (e.g. noise and pollution
mitigation) and creation of 3D city models (Vosselman, 2003).
Compared to predominant studies on vegetation detection and
characterization mainly in purely forested areas (e.g. Hyyppa et
al., 2001), this study concentrates on urban areas, which have a
high structural complexity with a multitude of different objects
(e.g. temporary objects, vegetation on top of buildings, road
signs, power lines and cables). Previous studies using airborne
LiDAR for vegetation and single tree detection, respectively,
used image-based methods, e.g. including orthophotos
(Hirschmugl et al., 2007; Iovan et al., 2007; Secord and Zakhor,
2007) and derived raster layers e.g. first-last-pulse difference
(Liang et al., 2007). Novel approaches include full-waveform
(FWF) information (e.g. echo width and amplitude) for urban
object detection in the 3D point cloud directly (Mallet et al.,
2008; Rutzinger et al., 2007 and 2008) and for 3D segmentation
of single trees (Reitberger et al., 2009).
Hofle et al. (2008) showed the suitability of aggregated FWF
attributes attached to segments derived from image analysis for
tree species discrimination. This paper aims at transferring this
combined object-based image (Blaschke, 2010) and point cloud
analysis from forested to complex urban areas, in order to
derive a GIS-ready vegetation mask. To date, high point density
(~50 echoes/m 2 ) LiDAR data are increasingly available in
particular for urban areas. This high point density does not
allow to apply computationally intensive 3D point cloud
analysis in an operational manner, which is a prerequisite for
being used in city map and cadastre generation. Thus, this study
presents a novel GIS framework for full-waveform LiDAR data
land cover classification, making use of both image and point
cloud analysis (cf. Hofle et al., 2009).
2. STUDY AREA AND DATASETS
The study area is located in the city centre of Vienna, Austria,
and comprise the three city parks: Rathauspark, Volksgarten
and Burggarten (Fig. 1). A great variety of planting and tree
species can be found within the test site, e.g. alley of trees,
short-cut trees, hedgerows and shrubs. Deciduous trees are
predominant, e.g. beech (Fagus sylvatica), Norway maple (Acer
platanoides), plane (Platanus acerifolia), linden (Tilia cordata,
platyphyllos) and chestnut (Aesculus hippocastanum) and
sparsely coniferous species. The area is characterized by large
building complexes (e.g. city hall, Burgtheater and parliament).
Furthermore, artificial objects such as fences, cars, power lines,
park benches as well as a high amount of people are usually
present in this central part of the city, and therefore also
included in the airborne LiDAR elevation datasets.
* Corresponding author.