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A Model of the Visual Dorsal Pathway for Computing Coordinate Transformations: An Unsupervised Approach

机译:用于计算坐标转换的视觉背部路径模型:无监督的方法

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In humans, the problem of coordinate transformations is far from being completely understood. The problem is often addressed using a mix of supervised and unsupervised learning techniques. In this paper, we propose a novel learning framework which requires only unsupervised learning. We design a neural architecture that models the visual dorsal pathway and learns coordinate transformations in a computer simulation comprising an eye, a head and an arm (each entailing one degree of freedom). The learning is carried out in two stages. First, we train a posterior parietal cortex (PPC) model to learn different frames of reference transformations. And second, we train a head-centered neural layer to compute the position of an arm with respect to the head. Our results show the self-organization of the receptive fields (gain fields) in the PPC model and the self-tuning of the response of the head-centered population of neurons.
机译:在人类中,坐标变换的问题远远完全理解。使用监督和无监督的学习技术的组合来解决问题。在本文中,我们提出了一种新的学习框架,只需要无监督的学习。我们设计了一种模拟视觉背部通路的神经结构,并在包括眼睛,头部和臂(每个引起一定程度的自由度)的计算机模拟中学习坐标变换。该学习是在两个阶段进行的。首先,我们训练后部皮质皮层(PPC)模型来学习不同的参考变换框架。其次,我们训练一个头中心的神经层来计算臂相对于头部的位置。我们的结果显示了PPC模型中的接收领域(GAIN字段)的自我组织,以及自我调整的神经元的头部居所响应。

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