Kinesthetic-based In-Hand Object Recognition with an Underactuated Robotic Hand
CoRR(2024)
摘要
Tendon-based underactuated hands are intended to be simple, compliant and
affordable. Often, they are 3D printed and do not include tactile sensors.
Hence, performing in-hand object recognition with direct touch sensing is not
feasible. Adding tactile sensors can complicate the hardware and introduce
extra costs to the robotic hand. Also, the common approach of visual perception
may not be available due to occlusions. In this paper, we explore whether
kinesthetic haptics can provide in-direct information regarding the geometry of
a grasped object during in-hand manipulation with an underactuated hand. By
solely sensing actuator positions and torques over a period of time during
motion, we show that a classifier can recognize an object from a set of trained
ones with a high success rate of almost 95
a real-time majority vote during manipulation further improves recognition.
Additionally, a trained classifier is also shown to be successful in
distinguishing between shape categories rather than just specific objects.
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