TRAFFIC MONITORING FROM AIRBORNE LIDAR
- FEASIBILITY, SIMULATION AND ANALYSIS
W. Yao 3 *, S. Hinz 3 , U. Stilla”
3 Remote Sensing Techbology, Technische Universitaet Muenchen, Arcisstr.21, 80290 Munich, Germany
b Photogrammetry and Remote Sensing, Technische Universitaet Muenchen, Arcisstr.21, 80290 Munich, Germany
- (wei.yao, stefan.hinz , uwe.stilla)@bv.tum.de
Commission III, WG III/5
KEY WORDS: Airborne LiDAR, traffic monitoring, vehicle model, feasibility, simulation
ABSTRACT:
Automatic acquisition and analysis of traffic-related data has already a long tradition in the remote sensing community. Similarly
airborne laser scanning (ALS) has emerged as an efficient means to acquire the detailed 3D large-scale DSMs. The aim of this work
is to initialize research work on using ALS to extract the traffic-flow information focusing on urban areas. The laser data acquisition
configuration has firstly to be analyzed in order to obtain the optimal performance with respect to the reconstruction of traffic-
related objects. Mutual relationships between various ALS parameters and vehicle modeling in the laser points are to be elaborated.
Like other common tasks in object recognition, vehicle models for detection and motion indication from the laser data are presented;
moreover, an ALS simulator is implemented to clarify and validate motion artifact in laser data. Finally, a concept for recognizing
vehicles are proposed based on a vehicle and context model, which establishes a direct working flow simulating the human inference
routine.
1. INTRODUCTION
Automatic traffic monitoring has evolved to an important and
active research issue in the remote sensing community during
the past years, as indicated by the special issue of ISPRS
Journal in 2006 - “Airborne and spacebome traffic monitoring”
(Hinz et al., 2006). Transportation represents a major segment
of the economic activities of modem societies and has been
keeping increase worldwide which leads to adverse impact on
our environment and society, so that the increase of transport
safety and efficiency, as well as the reduction of air and noise
pollution are the main task to solve in the future.
On the one hand, today’s road monitoring systems are mainly
equipped by a series of sensors like induction loops, overhead
radar sensors and stationery video cameras, etc. They all deliver
accurate, reliable, timely, yet merely point-wise measurement.
On the other hand spacebome and airborne sensors can
complement the ground-based collection and give us synoptic
views of complex traffic situations. With the recent advances in
sensor technology, a number of approaches for automatically
detecting vehicles, tracking vehicles and estimating velocity
have recently been developed and intensively analyzed, using
different air-and spacebome remote sensing platforms, e.g.
Synthetic aperture radar (SAR), infrared(IR) cameras, frame
and linear pushbroom optical cameras. However, so far there
have been few works conducted in relation to traffic analysis
from laser scanners.
The most relevant and up-to-date research to our work is,
according to our knowledge, from Toth & Grejner-Brzezinska
(2006), Grejner-Brzezinska et al., (2004) and Toth et al., (2003).
In this work an airborne laser scanner coupled with digital
frame imaging sensor was adopted to analyze transportation
corridors and acquire traffic flow information automatically.
They have tried to extract traffic-related static and dynamical
data as part of the regular topographic mapping. Vehicle
velocity can be estimated either by analyzing motion artefacts
in the laser data or by vehicle tracking in image sequences with
reasonable acquisition rate. The experiences gained so far by
their test flying-campaigns showed that the two sensors have
different strengths and weakness for the various data processing
tasks and, in most cases, they complement each other. It can be
declared that the combination of airborne laser and imaging
sensors can provide valuable traffic flow data that can
effectively support traffic monitoring and management. But the
extensive testing of this system is limited to highway, freeway
and other heavily travelled roads where occlusions cast by
buildings, vegetations and some other anomaly objects (e.g.
guild rails) are rare in the image and laser data.
Another important category of research field related to our
scope is 3D object recognition from laser radar data, which is
primarily dedicated to the military Automatic Target
Recognition (ATR) application (Gronwall et al., 2007; Steinvall
et al., 2004; Gronwall, 2006; Ahlberg et al., 2003). The scene
can be scanned from different platforms and perspectives, such
as terrestrial or airborne platforms. The biggest difference
distinguishing the use of laser sensor for urban traffic analysis
from for the military application lies in data coverage and the
application objective. The military applications feature small
field of view (FOV) and very high-resolution (very high density
of laser points) of laser data recording. The data acquisition
process is target-orientated and limited to a relative small
coverage, the interest region or object is scanned with very high
resolution and concentrated energy. Most of algorithms
developed within this scope aim at recognition of the object
type (e.g. classification of tank) and pose estimation (e.g.
orientation of a tank); some even tried to detect fine sub
structures of object (e.g. barrel and turret of a tank). Among
these algorithms, model-based shape matching or fitting
strategies have been most frequently applied to the laser data in
order to find and recognize the corresponding object class and
its status (Koksal et al., 1999; Zheng & Der, 2001; Johansson &
Moe, 2005).
* Corresponding author.
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