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Shape Boundary Tracking with Hidden Markov Models

机译:隐马尔可夫模型的形状边界跟踪

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摘要

This paper considers a Hidden Markov Model (HMM) for shape boundary generating which can be trained to be consistent with human expert performance on such tasks. That is, shapes are defined by sequences of "shape states" each of which has a probability distribution of expected image features (feature "symbols"). The tracking procedure uses a generalization of the Viterbi method by replacing its "best-first" search by "beam-search" so allowing the procedure to consider less likely features as well in the search for optimal state sequences. Results point to the benefits of such systems as an aide for experts in depiction shape boundaries as is required, for example, in Cartography.
机译:本文考虑了用于形状边界生成的隐马尔可夫模型(HMM),可以对其进行训练,使其与人类专家在此类任务上的表现保持一致。也就是说,形状是由“形状状态”序列定义的,每个形状状态具有预期图像特征(特征“符号”)的概率分布。跟踪过程通过将其“最佳优先”搜索替换为“光束搜索”来使用维特比方法的一般化,因此允许该过程在搜索最佳状态序列时也考虑不太可能的特征。结果指出了这样的系统的好处,它是例如在制图学中所需的描绘形状边界专家的助手。

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