244
7 CONCLUSIONS
We have studied the task of removing arbitrary objects one by one from a heap without the use of object models.
Instead we rely on range data from two range sensors which are arranged in such a way as to capture as much
as possible of the object surfaces. The two data sets are integrated and the result is segmented into connected
components which are regarded as object hypotheses. We are, however, interested not so much in the objects
themselves but rather in the identification of grasping opportunities. It has been shown that all knowledge
necessary for their recognition can be extracted from the range data and from the gripper properties. We have
found it useful to decompose the identification of grasping opportunities into two steps: with the help of two
heuristics we first choose a preferred “region of action”. Then, in this restricted domain, we acquire the features
which are necessary for a good grasp. They can be viewed as evidence for the presence of such an opportunity.
The accumulated evidence allows the decision to grasp or not. We view the object heap and the gripper in its
pre-grasp pose in a renderer. In the very near future the actual grasping will be implemented.
8 ACKNOWLEDGEMENT
This work was supported by the Swiss National Science foundation, grant NFP/SPP-IF 5003-34415.
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IAPRS, Vol. 30, Part 5W1, ISPRS Intercommission Workshop "From Pixels to Sequences", Zurich, March 22-24 1995