基于学习的机器人增量上下文建模方法

Fethiye Irmak Dogan, Ilker Bozcan, Sinan Kalkan
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引用次数: 7

摘要

在机器人环境建模方面已经有了几次尝试。然而,这些尝试要么假设固定数量的上下文,要么使用基于规则的方法来确定何时增加上下文的数量。在本文中,我们提出了何时增加的任务作为一个学习问题,我们使用递归神经网络来解决这个问题。我们展示了网络成功地(98%的测试准确率)学会了预测何时增加,并证明,在场景建模问题(不知道正确的上下文数量)中,机器人以预期的方式增加上下文的数量(即,系统的熵减少)。我们还介绍了增量模型如何用于各种场景推理任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CINet: A Learning Based Approach to Incremental Context Modeling in Robots
There have been several attempts at modeling context in robots. However, either these attempts assume a fixed number of contexts or use a rule-based approach to determine when to increment the number of contexts. In this paper, we pose the task of when to increment as a learning problem, which we solve using a Recurrent Neural Network. We show that the network successfully (with 98% testing accuracy) learns to predict when to increment, and demonstrate, in a scene modeling problem (where the correct number of contexts is not known), that the robot increments the number of contexts in an expected manner (i.e., the entropy of the system is reduced). We also present how the incremental model can be used for various scene reasoning tasks.
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