机器人系统中透视/变异镜像神经元的自组织涌现建模

Jakub Pospíchal, I. Farkaš, Matej Pechác, Kristína Malinovská
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引用次数: 1

摘要

根据直接匹配假说,镜像神经元的一个主要作用是调解观察到的动作和主体自身的运动库之间的联系,提供“从内部”理解。镜像神经元产生了各种各样的模型,但它们没有解决的一个问题是视角/方差。STS视觉区域的神经元既可以是视角选择性的,也可以是不变性的,后来在猕猴运动前F5区域也发现了同样的变异性,表明在视角选择性方面存在不同类型的镜像神经元。我们使用模拟iCub机器人的数据将其建模为一种突发现象,该机器人学习用三种类型的抓取来抓取物体。神经网络模型的学习分为两个阶段。首先,电机(F5)和视觉(STS)模块并行训练,使用从自我角度出发的相应数据序列自组织模态映射。然后,使用预训练STS模块的输出对F5区域进行重新训练,以获得镜像属性。使用通过网格搜索找到的优化模型超参数,我们通过展示F5图中不同程度的视角选择性神经元如何出现,表明我们的模型非常适合经验观察。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Self-organized Emergence of Perspective In/variant Mirror Neurons in a Robotic System
A major role attributed to mirror neurons, according to the direct matching hypothesis, is to mediate the link between an observed action and agent's own motor repertoire, to provide understanding “from inside”. The mirror neurons gave rise to various models but one of the issues not tackled by them is the perspective in/variance. Neurons in STS visual areas can be either perspective selective or invariant and the same variability was later also discovered in premotor F5 area in macaques, showing the existence of different types of mirror neurons regarding their perspective selectivity. We model this as an emergent phenomenom using the data from the simulated iCub robot, that learns to reach for objects with three types of grasp. The neural network model learns in two phases. First, the motor (F5) and visual (STS) modules are trained in parallel to self-organize modal maps using the corresponding data sequences from the self-perspective. Then, F5 area is retrained using the output from the pretrained STS module, to acquire the mirroring property. Using the optimized model hyperparameters found by grid search, we show that our model fits very well empirical observations, by showing how neurons with various degrees of perspective selectivity emerge in the F5 map.
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