Kutsuzawa Kyo, Matsumoto Minami, Owaki Dai, Hayashibe Mitsuhiro
Neuro-Robotics Laboratory, Department of Robotics, Graduate School of Engineering, Tohoku University, Sendai, Japan.
Front Neurorobot. 2024 Nov 19;18:1466630. doi: 10.3389/fnbot.2024.1466630. eCollection 2024.
When humans grasp an object, they are capable of recognizing its characteristics, such as its stiffness and shape, through the sensation of their hands. They can also determine their level of confidence in the estimated object properties. In this study, we developed a method for multi-fingered hands to estimate both physical and geometric properties, such as the stiffness and shape of an object. Their confidence levels were measured using proprioceptive signals, such as joint angles and velocity.
We have developed a learning framework based on probabilistic inference that does not necessitate hyperparameters to maintain equilibrium between the estimation of diverse types of properties. Using this framework, we have implemented recurrent neural networks that estimate the stiffness and shape of grasped objects with their uncertainty in real time.
We demonstrated that the trained neural networks are capable of representing the confidence level of estimation that includes the degree of uncertainty and task difficulty in the form of variance and entropy.
We believe that this approach will contribute to reliable state estimation. Our approach would also be able to combine with flexible object manipulation and probabilistic inference-based decision making.
人类在抓取物体时,能够通过手部的感觉识别物体的特性,如硬度和形状。他们还能确定对估计的物体属性的置信程度。在本研究中,我们开发了一种用于多指手估计物体物理和几何属性(如物体硬度和形状)的方法。使用关节角度和速度等本体感觉信号来测量其置信水平。
我们开发了一种基于概率推理的学习框架,该框架无需超参数即可在不同类型属性的估计之间保持平衡。使用此框架,我们实现了递归神经网络,该网络可实时估计抓取物体的硬度和形状及其不确定性。
我们证明,经过训练的神经网络能够以方差和熵的形式表示估计的置信水平,其中包括不确定性程度和任务难度。
我们认为这种方法将有助于可靠的状态估计。我们的方法还能够与灵活的物体操纵和基于概率推理的决策相结合。