ANALYSIS AND RECOVERY OF SYSTEMATIC ERRORS IN AIRBORNE LASER
SYSTEM
Zhihe Wang*, Rong Shu ,Weiming Xu, Hongyi Pu, Bo Yao
Shanghai Institute of Technical Physics, CAS, 500 Yutian Road, Shanghai 200083, P. R. of China -
zhhwang@mail.sitp.ac.cn
Commission VI, ICWG V/I
KEY WORDS: Airborne laser system, System errors, Error recovery, adjustment model, Surface extraction
ABSTRACT:
Although some mature manufactures of airborne laser system (ALS) have been published for some years, however, in china, the
development of ALS just is on the starting step. Shanghai Institute of Technical Physics (SITP), CAS is developing a new airborne
laser instrument. It is the best difficult task to determining the systematic biases of ALS. The ultimate goal is to determine the master
systematic errors and to correct the raw laser points. By analyzing the systematic error source firstly, the adjustment model presented
in paper enable modelling and removing the actual errors in laser point sets. Interesting surfaces and regions can be determined by a
least-squares plane fit through a subset of laser points. The proposal model of solution is based on integrating the observations and
adequate control planes and the redundancy in the overlapping areas of laser data sets. It has been demonstrated that moderate slopes
are sufficient to generate reliable solutions. In addition, the precision of ranging and scan angle aiming to the same target point is
tested by laboratory experiment at the end of paper.
1. INTRODUCTION
Although some mature manufactures of airborne laser scanning
(ALS) have been published for some years, however, in china,
the development of ALS just is on the starting step. Shanghai
Institute of Technical Physics (SITP), CAS is developing a new
airborne laser instrument. Its laser pulse rates have achieved
50k Hz and its scan rates have 40 Hz. It is capable of recording
multi return signal instead of either the first or the last return. It
provides a 3D point cloud as a primary product. The
achievements in developing appropriate ALS data processing
software, however, have been rather marginal.
It is the best difficult task to determining the systematic biases
of ALS. The ultimate goal is to determine the master systematic
errors and to correct the raw laser points such that only random
errors are left. The factors affecting laser-target position
accuracy are numerous. Huising and Gomes Pereira (1998)
report about systematic errors of 20 cm in elevation and of
several meters in position between overlapping laser strips,
Crombaghs et al. (2000) identify systematic trends between
overlapping strips.
Apart from the target reflectivity properties and laser-beam
incidence angle, the main limiting factors are the accuracy of
the platform position and orientation derived from the
carrier-phase differential GPS/INS data and uncompensated
effects in system calibration. The calibration can be divided
into that of calibration of individual sensors such as the laser
range-finder and that concerning spatial (lever-arm) or
orientation (bore-sight) offsets between the sensors due to a
particular assembly. In most system installations, the
lever-arms between LiDAR-IMU-GPS sensors can be
determined separately by independent means, although this
represents certain difficulties related to the realization of the
IMU body frame. On the other hand, the determination of the
bore-sight angles is only possible in-flight once the
GPS/INS-derived orientation becomes sufficiently accurate.
The existing calibration procedures, while functional, are
recognized as being sub-optimal since they are labor-intensive
(i.e., they require manual procedures), non-rigorous and
provide no statistical quality assurance measures. Furthermore,
the existing methods often cannot reliably recover all three of
the angular mounting parameters. The problem is worsened by
the angular uncertainty due to the broad laser beam width
(Lichti, 2004). On the other hand, the cross-section method
seems to be popular in commercial systems and usually
provides satisfactory results for the bore-sight estimate in the
roll direction. However, its use for the recovery of pitch and
yaw/heading direction is less appropriate. The use of the slope
gradients in DTM/DSM for bore-sight estimation made its way
to a popular software package used for ALS data handling
(Soininen and Burman, 2005). The principal weakness of this
approach is the strong correlation of the bore-sight angles with
unknown terrain shape. Also, the implemented stochastic model
of the LiDAR trajectory assumes time-invariant behavior of
the GPS/INS errors that is not realistic.
Figure 1. Illustration of scan angle errors