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You live, you learn, you forget: Continuous learning of visual places with a forgetting mechanism

机译:生活,学习,忘记:通过遗忘机制持续学习视觉场所

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To fulfill the dream of having autonomous robots at home, there is a need for spatial representations augmented with semantic concepts. Vision has emerged recently as the key modality to recognize semantic categories like places (office, corridor, kitchen, etc). A crucial aspect of these semantic place representations is that they change over time, due to the dynamism of the world. This calls for visual algorithms able to learn from experience while at the same time managing the continuous flow of incoming data. This paper addresses these issues by presenting an SVM-based algorithm able to (a) learn continuously from experience with a fast updating rule, and (b) control the memory growth via a random forgetting mechanism while at the same time preserving an accuracy comparable to that of the batch algorithm. We apply our method to two different scenarios where learning from experience plays an important role: (1) continuous learning of visual places under dynamic changes, and (2) knowledge transfer of visual concepts across robot platforms. For both scenarios, results confirm the effectiveness of our approach.
机译:为了实现在家中拥有自主机器人的梦想,需要使用语义概念来扩展空间表示形式。视觉最近成为识别语义类别(如场所(办公室,走廊,厨房等))的主要方式。这些语义位置表示的一个关键方面是,由于世界的动态性,它们随着时间的推移而发生变化。这就要求视觉算法能够从经验中学习,同时管理输入数据的连续流。本文通过提出一种基于SVM的算法来解决这些问题,该算法能够(a)从经验中不断学习快速更新的规则,并且(b)通过随机遗忘机制控制内存的增长,同时保持与批处理算法。我们将我们的方法应用于两个不同的场景,在这些场景中,从经验中学习扮演着重要的角色:(1)在动态变化下不断学习视觉场所,以及(2)跨机器人平台进行视觉概念的知识转移。对于这两种情况,结果都证实了我们方法的有效性。

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