Humans can easily reason about the sequence of high level actions needed to complete tasks, but it is particularly difficult to instil this ability in robots trained from relatively few examples. This work considers the task of neural action sequencing conditioned on a single reference visual state. This task is extremely challenging as it is not only subject to the significant combinatorial complexity that arises from large action sets, but also requires a model that can perform some form of symbol grounding, mapping high dimensional input data to actions, while reasoning about action relationships. This paper takes a permutation perspective and argues that action sequencing benefits from the ability to reason about both permutations and ordering concepts. Empirical analysis shows that neural models trained with latent permutations outperform standard neural architectures in constrained action sequencing tasks. Results also show that action sequencing using visual permutations is an effective mechanism to initialise and speed up traditional planning techniques and successfully scales to far greater action set sizes than models considered previously.
翻译:人类可以很容易地解释完成任务所需的高层次行动的顺序, 但是在从相对少的例子中训练的机器人中, 特别难以将这种能力灌输给这种能力。 这项工作考虑了以单一参考状态为条件的神经行动排序任务。 这项任务极具挑战性, 因为它不仅受制于大型动作组产生的巨大的组合复杂性, 而且还需要一个能够进行某种形式的符号地面定位、 绘制高维输入数据到行动的模型, 同时对行动关系进行推理。 本文从一个变换角度出发, 并论证行动排序既有利于理解变异和定序概念的能力。 经验分析显示, 以潜变模式训练的神经行动序列模型在受限制的行动排序任务中超越了标准神经结构。 结果还表明, 使用视觉变序的行动排序是一种有效的机制, 以启动和加快传统规划技术, 并且成功地将规模扩大到比以前所考虑的模型大得多的行动规模。