A non-linear approach to space dimension perception by a naive agent

Alban Laflaquière, S. Argentieri, Olivia Breysse, Stéphane Genet, B. Gas
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引用次数: 24

Abstract

Developmental Robotics offers a new approach to numerous AI features that are often taken as granted. Traditionally, perception is supposed to be an inherent capacity of the agent. Moreover, it largely relies on models built by the system's designer. A new approach is to consider perception as an experimentally acquired ability that is learned exclusively through the analysis of the agent's sensorimotor flow. Previous works, based on H.Poincaré's intuitions and the sensorimotor contingencies theory, allow a simulated agent to extract the dimension of geometrical space in which it is immersed without any a priori knowledge. Those results are limited to infinitesimal movement's amplitude of the system. In this paper, a non-linear dimension estimation method is proposed to push back this limitation.
幼稚智能体空间维度感知的非线性方法
发展机器人为许多人工智能功能提供了一种新方法,这些功能通常被认为是理所当然的。传统上,感知被认为是agent的一种固有能力。此外,它在很大程度上依赖于系统设计者建立的模型。一种新的方法是认为知觉是一种实验获得的能力,只能通过分析主体的感觉运动流来学习。先前的工作,基于h . poincarcarve的直觉和感觉运动偶然性理论,允许模拟主体在没有任何先验知识的情况下提取其所沉浸的几何空间的维度。这些结果仅限于系统的无穷小运动幅度。本文提出了一种非线性维数估计方法来克服这一限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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