International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B2. Istanbul 2004
For the framework of the NCRST-F research, the focus was
on using 4K by 4K cameras, as this category is frequently
used as a companion digital camera for LiDAR systems. In
addition, the availability as well as the cost prohibited the use
4. TRAFFIC FLOW
Vehicle traffic over the transportation infrastructure affects
almost every facet of our life and has a primary impact on the
economy. As vehicle traffic continues to grow while the
resources to increase the road capacity are limited, the only
answer to keep up with the ever-increasing traffic is better
management. This, in turn, depends on the availability of
better traffic data, i.e., timely information on almost every
vehicle traveling on the transportation network.
Traffic flow is a generic term used to describe vehicle
movement and volume over a transportation network; two of
the most important traffic measures produced by state DOTs
and other transportation agencies around the world are
AADT and VMT (Pline ed., 1992). Average annual daily
traffic (AADT) is produced to represent the vehicle flow over
a highway segment on an average day of the year. Vehicle
miles traveled (VMT) indicates travel over the entire
highway system and is used to indicate mobility patterns and
travel trends. VMT is also used as an indicator for allocation
of highway resources. Flow data are generally obtained by
ground-based equipment, such as loop detectors or road tubes,
which are fixed to a location and are deployable as needed.
In the latter case, the sample data are collected from road
tubes placed in the traveled portion of the road, disrupting
traffic and endangering the crews when placing or collecting
the tubes. Using satellites and air-based platforms, the
survey/control crews can cover large areas, access remote
highways, and carry sensors that can collect data from safe
and non-disruptive off-the-road locations. The imagery
collects "snapshots" of traffic over large areas at an instant of
time or a sequence of snapshots over smaller areas, whereas
traditional data collection observes vehicles at a point on the
highway over much longer time intervals (McCord et. al.,
2003).
Short-term flow parameters, including daily or hourly
parameters broken down to vehicle categories are also of
high interest, but can be acquired only with a limited spatial
extent with traditional techniques, as the density of ground-
based sensors cannot be increased infinitely. The use of
airborne imagery, however, offers an on-demand deployable
tool with excellent temporal and spatial resolutions that can
easily provide for sizeable area coverage at fast sampling
rates. Therefore, the primary objective of this investigation
was to research the feasibility of obtaining short-term flow
data by using remote sensing technologies.
Figure 3. 4K by 4K digital camera ortho image of a freeway in Toronto downtown.
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of the high-end digital camera systems until recently. A
representative 4K by 4K image, acquired by the DDS digital
camera system simultaneously with the LiDAR data, is
shown in Figure 3.
5. VEHICLE EXTRACTION, GROUPING AND
TRACKING
The investigation of extracting flow data from airborne
remote sensing has been carried out using two different
sensor configurations: (1) to monitor the feasibility of
obtaining traffic flow data over road segments, LiDAR data
were acquired from several test flights, and in one case, 4K
by 4K imagery was simultaneously captured and then used as
the ground truth for the LiDAR data, and (2) to assess the
potential of flow monitoring at intersections, a 4K by 4K
digital camera and a standard video system were installed on
a helicopter platform and several test flights were conducted.
5.1 Vehicle Extraction and Grouping From LiDAR Data
In the first step of the data processing, the input LiDAR data
are filtered to reduce the point cloud to the road area. The
approximate location of the road geometry is usually
available from CAD or GIS databases, maintained by
transportation agencies. Since the accuracy of the road
location information is limited, or only the centerline data are
available, it is mandatory to perform a road-matching step.
During this process, the edge lines of the road are tracked
from the LiDAR data. Once the road surface area has been
identified, the vehicles can be extracted by a simple
thresholding. During this process the road surface modeled
and the surface normal are considered, thus, the resulting
vehicle points are reduced to the height with respect to the
modeled road surface (road invariant description of the
vehicles).
The point cloud of a vehicle can contain a varying number of
points, mainly depending on the laser point density and the
relative speed between the vehicle and LiDAR sensor. The
effect of the latter factor is more important and demands a
parameterization of points that can, at least, partially reduce
the effect of vehicle shortening and elongation (compare
vehicles in Figures 1-2 to Figure 3). The selection of
parameters has a major impact on the classification process,
namely, how reliable can the different vehicle groups be
separated. The basic model was formed from six parameters,
including the length and width of the vehicle and four height
values, representing an average height over four equal
segments of the vehicle. Figure 4 shows the interpretation of
the basic parameters.
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