Abstract
AbstractThe goal of visual surface inspection is to analyze an object’s surface and detect defects by looking at it from different angles. Developments over the past years have made it possible to partially automate this process. Inspection systems use robots to move cameras and obtain pictures that are evaluated by image processing algorithms. Setting up these systems or adapting them to new models is primarily done manually. A key challenge is to define camera viewpoints from which the images are taken. The number of viewpoints should be as low as possible while still guaranteeing an inspection of the desired quality. System engineers define and evaluate configurations that are improved based on a time-consuming trial-and-error process leading to a sufficient, but not necessarily optimal, configuration. With the availability of 3D surface models defined by triangular meshes, this step can be done virtually. This paper presents a new scalable approach to determine a small number of well-placed camera viewpoints for optical surface inspection planning. The initial model is approximated by B-spline surfaces. A set of geometric feature functionals is defined and used for an adaptive, non-uniform surface sampling that is sparse in geometrically low-complexity areas and dense in regions of higher complexity. The presented approach is applicable to solid objects with a given 3D surface model. It makes camera viewpoint generation independent of the resolution of the triangle mesh, and it improves previous results considering number of viewpoints and their relevance.
Funder
Fraunhofer Institute for Industrial Mathematics (ITWM)
Publisher
Springer Science and Business Media LLC
Subject
Computer Science Applications,Computer Vision and Pattern Recognition,Hardware and Architecture,Software
Reference29 articles.
1. Atkinson, K.E.: An Introduction to Numerical Analysis. Wiley, Hoboken (2008)
2. Beyerer, J., León, F.P., Frese, C.: Machine Vision: Automated Visual Inspection: Theory, Practice and Applications. Springer, Berlin (2015)
3. Bradski, G.: The OpenCV Library. Dr. Dobb’s Journal of Software Tools (2000)
4. Cignoni, P., Callieri, M., Corsini, M., Dellepiane, M., Ganovelli, F., Ranzuglia, G.: MeshLab: an open-source mesh processing tool. In: Scarano, V., Chiara, R.D., Erra, U. (eds.) Eurographics Italian Chapter Conference. The Eurographics Association (2008). https://doi.org/10.2312/LocalChapterEvents/ItalChap/ItalianChapConf2008/129-136
5. Cowan, C.K., Kovesi, P.D.: Automatic sensor placement from vision task requirements. IEEE Trans. Pattern Anal. Mach. Intell. 10(3), 407–416 (1988). https://doi.org/10.1109/34.3905
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