(c) ; (d)
Fig. 5: Modelling an industrial site (a) Point Cloud (b-c) Images
(d) Final Model
much more general, as it uses both point cloud and image
measurements in big adjustment.
This integrated adjustment was applied to the test scenario
shown in Fig. 5. Only cylinders, boxes and tori were used from
the catalogue of CSG objects. The results of the fitting are
shown as a 3D Model in Fig. 5(d).
5. CONCLUSIONS
We have presented a modelling technique for fitting CAD
models described as CSG primitives to measurements in images
and point clouds. While the point clouds are excellent for
automatic object recognition, the comparison of improvement in
the standard deviation of the estimated parameters clearly shows
that images have a complementary role as they provide more
information on the edges and help fix the bounds of models
where point clouds fail to do so. In future we plan to extend the
fitting procedure from point measurements to edge and curve
measurements in images. Similarly different strategies for
automatic object recognition in industrial environments using a
combination of imagery and point clouds will also be
investigated.
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