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Short-term memory mechanisms in neural network learning of robot navigation tasks: A case study

机译:机器人导航任务神经网络学习中的短期记忆机制:案例研究

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This paper reports results of an investigation on the degree of influence of short-term memory mechanisms on the performance of neural classifiers when applied to robot navigation tasks. In particular, we deal with the well-known strategy of navigating by ¿wall-following¿. For this purpose, four standard neural architectures (Logistic Perceptron, Multilayer Percep-tron, Mixture of Experts and Elman network) are used to associate different spatiotemporal sensory input patterns with four predetermined action categories. All stages of the experiments-data acquisition, selection and training of the architectures in a simulator and their execution on a real mobile robot-are described. The obtained results suggest that the wall-following task, formulated as a pattern classification problem, is nonlinearly separable, a result that favors the MLP network if no memory of input patters are taken into account. If short-term memory mechanisms are used, then even a linear network is able to perform the same task successfully.
机译:本文报告了一项短期记忆机制在应用于机器人导航任务时对神经分类器性能影响程度的调查结果。尤其是,我们处理通过ƒƒÂ,,wall-followingÃÂ,,,Â进行导航的著名策略。为此,使用了四个标准的神经体系结构(后勤感知器,多层Percep-tron,专家混合物和Elman网络)来将不同的时空感官输入模式与四个预定的动作类别相关联。描述了实验的所有阶段-数据获取,选择和训练模拟器中的体系结构以及它们在真实的移动机器人上的执行。获得的结果表明,遵循模式分类问题的墙面跟踪任务是非线性可分离的,如果不考虑输入模式的记忆,则该结果将有利于MLP网络。如果使用短期存储机制,则即使线性网络也能够成功执行相同任务。

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