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Conclusions
This paper has presented a novel method for the learning, fast
detection and localization of instances of 3D object classes. The
3D range and reflectance laser scanner data are transformed into
images by off-screen rendering. For fast object detection, a
cascade of classifiers is built, i.e., a linear decision tree
[25]. The classifiers are composed of classification
and regression trees (CARTs) and model the objects with their
view dependencies. Each CART makes its decisions based on feature
classifiers. The features are edge, line, center surround, or
rotated features. After object detection the object is localized
using a point matching strategy. The pose is determined with six
degrees of freedom, i.e., with respect to the , , and
positions and the roll, yaw and pitch angles. A final computation
returns a quality measure for the object localization.
The presented combination of algorithms, i.e., the system
architecture enables high accurate, fast and reliable 3D object
localization for autonomous mobile robots.
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2005-05-03