Generalized recognition of single-ended contact formations
Louis J. Everett, R. Ravuri, Richard A. Volz, M. Skubic
- 发表年份
- 1999
- 引用次数
- 14
摘要
Contact formations have proven useful for programming robots by demonstration for operations involving contact. These techniques require real time recognition of contact formations. Single ended contact formation (SECF) classifiers using only the force/torque measured at the wrist of the robot have been shown to be quite effective for this purpose. To function properly, however, previous SECF classifiers have required a sizable training set and a constant pose between the force/torque sensor and the manipulated object. Thus, if an object is re-grasped and the pose changes, one expects to have to repeat the creation of the training set. We discuss the impact of sensor-object pose changes have on two successful classifiers. Experimental data shows that they perform poorly when sensor-object pose changes. We discuss a method to regain the performance of both classifiers while minimizing the retraining necessary.
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