Online unsupervised cumulative learning for life-long robot operation

Y. Gatsoulis, Christopher Burbridge, T. McGinnity
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引用次数: 9

Abstract

The effective life-long operation of service robots and assistive companions depends on the robust ability of the system to learn cumulatively and in an unsupervised manner. For a cumulative learning robot there are particular characteristics that the system should have, such as being able to detect new perceptions, being able to learn online and without supervision, expand when required, etc. Bag-of-Words is a generic and compact representation of visual perceptions which has commonly and successfully been used in object recognition problems. However in its original form, it is unable to operate online and expand its vocabulary when required. This paper describes a novel method for cumulative unsupervised learning of objects by visual inspection, using an online and expanding when required Bag-of-Words. We present a set of experiments with a real-world robot, which cumulatively learns a series of objects. The results show that the system is able to learn cumulatively and recall correctly the objects it was trained on.
面向机器人终身运行的在线无监督累积学习
服务机器人和辅助同伴的有效终身运行取决于系统在无监督方式下累积学习的鲁棒能力。对于一个累积学习机器人来说,系统应该具有一些特定的特征,比如能够检测到新的感知,能够在没有监督的情况下在线学习,在需要的时候扩展,等等。词袋(Bag-of-Words)是一种通用的、紧凑的视觉感知表示,已被广泛并成功地应用于目标识别问题。然而,在其原始形式下,它无法在线操作,也无法在需要时扩展其词汇量。本文描述了一种新的通过视觉检测对目标进行累积无监督学习的方法,该方法使用在线词袋并在需要时进行扩展。我们用一个真实世界的机器人做了一组实验,它可以累积学习一系列的物体。结果表明,该系统能够进行累积学习,并正确地回忆起训练对象。
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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