Full text: Close-range imaging, long-range vision

ACCURACY OF DENSE SURFACE MEASUREMENTS IN AN INTEGRA TED 
PHOTOGRAMMETRY AND MACHINE VISION FRAMEWORK 
H. Papadaki*”” 
? UCL, Department of Geomatic Engineering, Gower street, WCIE 6BT London, UK - hpapadak@ge.ucl.ac.uk 
Commission V, WG V/1 
KEY WORDS: Dense surface representation, Delaunay, measurement quality, precision, reliability, texture 
ABSTRACT: 
The increasing use of digital close range photogrammetry in engineering and metrology applications is established as a reliable and 
dependable method of high accuracy measurement. Photogrammetric processing traditionally relies on discreet target point 
measurements to achieve very high accuracy 3D results. However, the shape and surface complexity of the objects of interest dictate 
the need for more dense surface measurements than can be achieved using targets. The research described in this paper is concerned 
with the development of an automated photogrammetric measurement method that can provide dense object surface information by 
integrating target measurements with image processing algorithms, some of which eminate from the machine vision community. The 
method can produce a dense cloud of object surface points provided there is sufficient surface and image texture. Processing 
involves the automated densification of a sparse triangle network created by the targets to a surface model using dynamic Delaunay 
triangulation and geometric image constraints. The quality of the data is monitored throughout the stages of processing. This paper 
examines the accuracy of the produced point cloud by comparing the data with surface models derived from point cloud 
measurements provided by a Coordinate Measuring Machine (CMM). Further performance evaluation compares the developed 
  
method with pattern and laser dot projection under controlled conditions. 
1. INTRODUCTION 
Coordinate Measuring Machines (CMM) are currently the most 
established and reliable measurement systems in industrial and 
engineering metrology applications. Such systems are used for 
very high accuracy point based measurements and are typically 
applied to industrial quality control and mass production part 
inspection (Boeseman et al, 2001). However, CMM systems are 
expensive and inflexible in terms of their need for direct surface 
contact and measurement volume limitations. 
The automated measurement of engineering surfaces from 
multi-station close range photogrammetry can provide dense 
point clouds of known quality. The density of the point cloud 
can be directly comparable with the ones provided by some 
laser scanning solutions for close range applications (Beraldin 
et al, 2000). The research described in this paper is aimed at 
developing a flexible automated photogrammetric measurement 
method, which can create dense point data of an engineering 
standard. The method is concerned with the construction of a 
set of tools to densify a sparse triangle mesh, created by retro 
reflective targets in a photogrammetric network (Papadaki et al, 
2001a). The data is required to be dense enough to produce a 
valid representation of the object surface with a known degree 
of accuracy, precision and reliability. 
This paper is principally concerned with evaluating the 
accuracy of the photogrammetrically derived dense point cloud 
and surface model by comparing the results with measurements 
provided by a CMM. Further evaluation of the measurement 
quality is undertaken by integrating the method with pattern and 
laser dot projection. It is shown that the developed method can 
be successfully applied in cases of low image and object surface 
texture by projecting artificial texture patterns. Additionally, 
surface measurements from the densification method, using the 
existing image texture, are compared with measurements from 
laser dot projection as well as those from artificial texture 
projection. 
Consequently there are two aspects to the evaluation presented 
in this paper. The first involves the precision and reliability of 
the point clouds as derived from the least squares bundle 
adjustment. The second is concerned with assessing the 
accuracy of the point cloud data in local areas of high surface 
complexity. This is achieved by direct comparison of the point 
clouds to small reference surface patches constructed from 
CMM point data. 
2. METHOD DESCRIPTION 
The developed approach to model densification deals with the 
problem of image point correspondence in a multiple image 
network. The network set-up is implemented in a digital Close 
Range Photogrammetry System (Vision Metrology System 
VMS (software), Robson, Shortis), where the retro-reflective 
targets are measured and the imaging geometry is recovered. 
The set of target points is triangulated to produce an initial 
Delaunay triangle mesh (Woodhouse, 2000), which is 
consistent in both image and object space. 
The process of densification is initialised by applying an 
interest operator, such as Forstner (Forstner, Gulch, 1987), in 
one image to create a seed point cloud. A multiple image point 
correspondence can be reliably established for a number of 
these seed points by defining criteria selected from a 
combination of radiometric and geometric properties. Precise 
correspondence is subsequently achieved with a least squares 
based image patch matching routine (Gruen, Baltsavias, 1988) 
that has been modified to use affinity parameter starting values 
derived from differences between corresponding image and 
object triangle shapes. The number of conjugate points is 
increased in a series of stages, in which the matching routine is 
applied to all images in the network. The conjugate point search 
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