基于时空压力模式学习的软机器人对柔软物体的触觉感知

Tetsushi Nonaka, Arsen Abdulali, Chapa Sirithunge, Kieran Gilday, F. Iida
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引用次数: 1

摘要

由于皮肤的变形与物体表面的变形的比例是未知的,因此对刚度低于机器人皮肤的物体的柔软度感知是具有挑战性的。这使得很难推导出通常用于刚度估计的压痕深度。为了克服这一挑战,我们在柔软的拟人化手指中实现了基于触觉信息的人性化柔软感测,而不使用有关压痕深度或位移的信息。在训练LSTM网络识别粘弹性软物体的实验中,我们证明了利用嵌入在柔软皮肤中的气压传感器的触觉信息感知的机器人手指可以成功地学习识别软物体。通过分离压力分布的动态模式和局部压力的相对贡献,我们进一步研究了可用触觉信息的差异如何影响区分粘弹性物体柔软度的能力。结果表明,机械手指软接触区域的压力分布及其变化为识别粘弹性物体的柔软性提供了信息,并且关于柔软性的触觉信息具有时空性。结果进一步表明,局部压力变化中的滞后等非线性局部动力学可以提供有关被接触物体粘弹性的附加信息。
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Soft robotic tactile perception of softer objects based on learning of spatiotemporal pressure patterns
The softness perception of objects with lower stiffness than that of robotic skin is challenging, as the proportion of the deformation of skin to that of an object's surface is unknown. This makes it difficult to derive the indentation depth typically used for stiffness estimation. To overcome this challenge, we implemented human-inspired softness sensing in a soft anthropomorphic finger based on tactile information alone without using the information about indentation depth or displacement. In the experiments where LSTM networks were trained to discriminate viscoelastic soft objects, we demonstrated that the sensorized robotic finger using tactile information from barometric sensors embedded in its soft skin could successfully learn to discriminate soft objects. By dissociating the relative contribution of the dynamic pattern of pressure distribution and that of local pressure, we further investigated how differences in available tactile information could impact the ability to distinguish the softness of viscoelastic objects. The results demonstrated that the pressure distribution and its change on the soft contact area of the robotic finger provided information to discriminate the softness of viscoelastic objects and that the tactile information about softness was spatiotemporal in nature. The results further implied that nonlinear local dynamics such as hysteresis in local pressure changes can provide additional information about the viscoelasticity of touched objects.
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