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A Deep Incremental Boltzmann Machine for Modeling Context in Robots

机译:一种深度增量Boltzmann机器,用于在机器人中建模背景

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Context is an essential capability for robots that are to be as adaptive as possible in challenging environments. Although there are many context modeling efforts, they assume a fixed structure and number of contexts. In this paper, we propose an incremental deep model that extends Restricted Boltzmann Machines. Our model gets one scene at a time, and gradually extends the contextual model when necessary, either by adding a new context or a new context layer to form a hierarchy. We show on a scene classification benchmark that our method converges to a good estimate of the contexts of the scenes, and performs better or on-par on several tasks compared to other incremental models or non-incremental models.
机译:上下文是在充满挑战环境中尽可能适应的机器人的基本功能。虽然存在许多上下文建模努力,但它们假设固定结构和上下文数量。在本文中,我们提出了一个增量的深层模型,延伸了受限制的Boltzmann机器。我们的模型一次获取一个场景,并在必要时逐渐扩展上下文模型,可以添加新上下文或新上下文图层来形成层次结构。我们在场景分类基准上展示了我们的方法收敛到场景的上下文的良好估计,与其他增量模型或非增量模型相比,在多个任务上执行更好或更好地执行。

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