首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Learning to recognize objects on the fly: A neurally based dynamic field approach.
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Learning to recognize objects on the fly: A neurally based dynamic field approach.

机译:学习实时识别物体:一种基于神经的动态场方法。

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摘要

Autonomous robots interacting with human users need to build and continuously update scene representations. This entails the problem of rapidly learning to recognize new objects under user guidance. Based on analogies with human visual working memory, we propose a dynamical field architecture, in which localized peaks of activation represent objects over a small number of simple feature dimensions. Learning consists of laying down memory traces of such peaks. We implement the dynamical field model on a service robot and demonstrate how it learns 30 objects from a very small number of views (about 5 per object are sufficient). We also illustrate how properties of feature binding emerge from this framework.
机译:与人类用户互动的自主机器人需要构建并不断更新场景表示。这带来了在用户指导下快速学习识别新对象的问题。基于与人类视觉工作记忆的类比,我们提出了一种动态场架构,其中激活的局部峰值表示少量简单特征尺寸上的对象。学习包括确定此类峰值的记忆轨迹。我们在服务机器人上实现了动态场模型,并演示了它如何从很少的视图中学习30个对象(每个对象大约5个就足够了)。我们还将说明功能绑定的属性如何从此框架中出现。

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