Grounding object perception in a naive agent's sensorimotor experience

Alban Laflaquière, Nikolas J. Hemion
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引用次数: 8

Abstract

Artificial object perception usually relies on a priori defined models and feature extraction algorithms. We study how the concept of object can be grounded in the sensorimotor experience of a naive agent. Without any knowledge about itself or the world it is immersed in, the agent explores its sensorimotor space and identifies objects as consistent networks of sensorimotor transitions, independent from their context. A fundamental drive for prediction is assumed to explain the emergence of such networks from a developmental standpoint. An algorithm is proposed and tested to illustrate the approach.
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幼稚主体感觉运动经验中客体知觉的基础
人工物体感知通常依赖于先验定义的模型和特征提取算法。我们研究对象的概念是如何建立在朴素主体的感觉运动经验基础上的。在不了解自身或其所处世界的情况下,智能体探索其感觉运动空间,并将物体识别为独立于其环境的一致的感觉运动过渡网络。从发展的角度来看,预测的基本驱动力被认为可以解释这种网络的出现。本文提出了一种算法,并对其进行了测试。
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