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Integrating multi-sensory input in the body model — A RNN approach to connect visual features and motor control

机译:在人体模型中集成多传感器输入-一种RNN方法,用于连接视觉特征和运动控制

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An internal model of the own body can be assumed to be a central and early representation as such a model is already required in simple behavioural tasks. More and more evidence is showing that such grounded internal models are applied in higher level tasks. Internal models appear to be recruited in service for cognitive function. Understanding what another person is doing seems to rely on the ability to step into the shoes of the other person and map the observed action onto ones own action system. This rules out dedicated and highly specialized models, but presupposes a flexible internal model which can be applied in different context and fulfilling different functions. Here, we are going to present a recurrent neural network approach of an internal body model. The model can be used in the context of movement control, e.g. in reaching tasks, but can also be employed as a predictor, e.g. for planning ahead. The introduced extension allows to integrate visual features into the kinematic model. Simulation results show how in this way the model can be to utilised in perception.
机译:可以假设自己身体的内部模型是主要的早期代表,因为在简单的行为任务中已经需要这种模型。越来越多的证据表明,这种扎根的内部模型已应用于更高级别的任务。内部模型似乎是在招募中用于认知功能的。了解他人的行为似乎依赖于步入他人的鞋子并将所观察到的动作映射到自己的动作系统上的能力。这排除了专用和高度专业化的模型,但前提是要有一个灵活的内部模型,该模型可以在不同的上下文中应用并实现不同的功能。在这里,我们将介绍内部人体模型的递归神经网络方法。该模型可以在运动控制的情况下使用,例如,运动控制。在完成任务时,也可以用作预测指标,例如提前计划。引入的扩展允许将视觉特征集成到运动学模型中。仿真结果表明如何以这种方式将模型用于感知。

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