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A Primitive Based Generative Model to Infer Timing Information in Unpartitioned Handwriting Data

机译:基于原始的生成模型,可在未分区手写数据中推断时序信息

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Biological movement control and planning is based upon motor primitives. In our approach, we presume that each motor primitive takes responsibility for controlling a small sub-block of motion, containing coherent muscle activation outputs. A central timing controller cues these subroutines of movement, creating complete movement strategies that are built up by overlaying primitives, thus creating synergies of muscle activation. This partitioning allows the movement to be defined by a sparse code representing the timing of primitive activations. This paper shows that it is possible to use a factorial hidden Markov model to infer primitives in handwriting data. The variation in the handwriting data can to a large extent be explained by timing variation in the triggering of the primitives. Once an appropriate set of primitives has been inferred, the characters can be represented as a set of timings of primitive activations, along with variances, giving a very compact representation of the character. The model is naturally partitioned into a low level primitive output stage, and a top-down primitive timing stage. This partitioning gives us an insight into behaviours such as scribbling, and what is learnt in order to write a new character.
机译:生物运动控制和规划是基于电动机原语。在我们的方法中,我们假设每个电机原语都负责控制一个小型运动块,其中包含连贯的肌肉激活输出。中央时序控制器提示这些运动的这些子程序,创建通过覆盖基元构建的完整的运动策略,从而创造肌肉激活的协同。此分区允许移动由表示原始激活定时的稀疏代码来定义。本文表明,可以使用阶乘隐藏的马尔可夫模型来在手写数据中推断基元。手写数据的变化可以在很大程度上通过基元触发的定时变化来解释。一旦推断出适当的原语,字符就可以表示为原始激活的一组时间,以及差异,给出了字符的非常紧凑的表示。该模型自然地分为低电平原始输出级,以及自上而下的原始定时阶段。此分区使我们能够深入了解涂鸦等行为,并且才能编写新的角色。

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