Full text: Proceedings; XXI International Congress for Photogrammetry and Remote Sensing (Part B1-1)

The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part BI. Beijing 2008 
Unfortunately, the relative nature of the LiDAR intensity signal 
does not allow for a general parameterization of the intensity 
values for pavement surfaces and pavement markings, and thus, 
there is no absolute threshold that would separate the two areas 
Therefore, first the distribution of the intensity signals in the 
search window should be analyzed to determine an optimal 
threshold for separating pavement and pavement marking points. 
In our approach, the point, where the curve of the pavement 
surface points levels out, was selected as a threshold, and 
subsequently used for extraction of the pavement marking 
points. The points extraction based on this threshold could 
result in errors, such as marking points are omitted or pavement 
points are included. Therefore, further checks are needed, 
which is accomplished by curve fitting and matching, described 
below, where the availability of object space information, such 
as curvature of the pavement markings, can be utilized. Figure 6 
shows the pavement markings extracted for the area pictured in 
Figure 3; the threshold was 180. 
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1 
(a) (b) 
Figure 5. Changes of intensity values along pavement markings: 
LiDAR point locations overlaid on optical image (a) and 
intensity values (b). 
Figure 6. Pavement markings extracted by thresholding. 
4. CURVE FITTING 
The extracted pavement marking and GPS-surveyed points have 
no point-to-point correspondence, and thus, a point-based 
transformation is directly not applicable. However, their shape 
can be matched, on condition that the two representations 
provide an adequate description of the same linear feature. In 
this case, the problem is simply how to match two free-shape 
curves. In the following, the key steps of curve fitting are 
presented, while the matching is discussed in the next section. 
The purpose of curve fitting is twofold: first, it provides a 
validity check for the pavement marking points extracted, and 
second, it allows for modeling both pavement marking 
descriptions as linear features, so they can be matched to each 
other. The selected curve fitting method is an extended version 
of the algorithm, originally proposed by Ichida and Kiyono in 
1977, and is a piecewise weighted least squares curve fitting 
based on cubic (third-order polynomial) model, which seemed 
to be adequate for our conditions, such as linear features with 
modest curving. To handle any kind of curves, defined as the 
locus of points f(x, y) = 0, where f(x, y) is a polynomial, the 
curve fitting is performed for smaller segments in local 
coordinate systems, which are defined by the end points of the 
curve segments. The primary advantage of using a local 
coordinate system is to avoid problems when curves become 
vertical in the mapping coordinate system. Obviously, the 
fitting results as well as the fitting constraints are always 
converted forth and back between the local and mapping 
coordinate frames, for details, see (Toth et al., 2007). 
The main steps of the piecewise cubic fitting (PCF) process are 
shortly discussed below; the notation used in the discussion is 
introduced in Figure 7. To achieve a smooth curve, the curve 
fitting to any segment is constrained by its neighbors by 
enforcing an identical curvature at the segment connection 
points; in other words, PCF polynomial is continuous with its 
first derivative at connection points x=s, x=t, etc. The equations 
describing the 3rd polynomial and its first derivative are: 
S k (x) = y s +m s-(x-s) + a s -(x-s) 2 +b s -(x-s) 3 
slope = S k (x) = m s + 2 ■ a s • (x - s) + 3 • b s • (x - s) 2 
Figure 7. Piecewise weighted least squares curve fitting method. 
The core processing includes the following steps: 1) a s and b s , 
the coefficients of the second and third order terms of the fitted 
curve for interval ‘f are estimated; consider the constant term 
(ys) and the coefficient of the first order term (m s ) fixed, known 
from the curve fitting from the previous segment. In the 
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