Abstract

For a robot to perform complex manipulation tasks, such as an in-hand manipulation, knowledge about the state of the grasp is required at all times. Moreover, even simple pick-and-place tasks may fail because unexpected motions of the object during the grasp are not accounted for. This letter proposes an approach that estimates the grasp state by combining finger measurements, i.e., joint positions and torques, with visual features that are extracted from monocular camera images. The different sensor modalities are fused using an extended Kalman filter. While the finger measurements allow to detect contacts and resolve collisions between the fingers and the estimated object, the visual features are used to align the object with the camera view. Experiments with the DLR robot David demonstrate the wide range of objects and manipulation scenarios that the method can be applied to. They also provide an insight into the strengths and limitations of the different complementary types of measurements.

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