AMOS; active perception of an autonomous system

M. Knick, C. Schlegel
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引用次数: 7

Abstract

In the autonomous mobile systems project (AMOS), the FAW uses a mobile robot to study questions related to the deep integration of sub-symbolic and symbolic information processing. AMOS aims at methods for autonomously acquiring new concepts via induction from its interaction with its environment. This paper presents an architecture which integrates both symbolic planning as well as nonsymbolic reactive mechanisms, thus providing a basic autonomy, so that the robot can freely maneuver around without any detailed model of itself and its complex real-world environment . Substantial differences between expectation and observation are used as hints-generated via the robot's interaction with the environment-to situations which are of relevance for the robot. In particular, the concepts of plan breakdown and region of interest play a fundamental role. Autonomously, based on the robot's decision, images are taken and clustered without supervision into groups which are expected to correspond to semantically similar situations. These hypotheses shall be used in further work as a necessary pre-requisite in order to autonomously generate a new concept relating the recognition of such perception classes to appropriate actions.<>
阿摩司;自主系统的主动感知
在自主移动系统项目(AMOS)中,一汽利用移动机器人研究子符号和符号信息处理的深度融合问题。AMOS旨在通过与环境的相互作用进行归纳,自主获取新概念的方法。本文提出了一种集成符号规划和非符号反应机制的体系结构,从而提供了基本的自主性,使机器人可以自由地四处移动,而无需对自身及其复杂的现实环境进行任何详细的建模。期望和观察之间的实质性差异被用作线索——通过机器人与环境的相互作用产生——用于与机器人相关的情况。其中,平面分解和兴趣区域的概念起着至关重要的作用。基于机器人的决策,自动地将图像采集并在没有监督的情况下聚类成组,这些组对应于语义相似的情况。这些假设在进一步的工作中是必要的先决条件,以便自主地产生一个新的概念,将这些感知类别的识别与适当的行动联系起来
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