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Bag-of-Features HMMs for Segmentation-Free Word Spotting in Handwritten Documents

机译:用于在手写文件中无分割单词斑点的杂饼HMMS

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Recent HMM-based approaches to handwritten word spotting require large amounts of learning samples and mostly rely on a prior segmentation of the document. We propose to use Bag-of-Features HMMs in a patch-based segmentation-free framework that are estimated by a single sample. Bag-of-Features HMMs use statistics of local image feature representatives. Therefore they can be considered as a variant of discrete HMMs allowing to model the observation of a number of features at a point in time. The discrete nature enables us to estimate a query model with only a single example of the query provided by the user. This makes our method very flexible with respect to the availability of training data. Furthermore, we are able to outperform state-of-the-art results on the George Washington dataset.
机译:最近的基于HMM的手写单词斑点的方法需要大量的学习样本,并且大多依赖于文件的先前分段。我们建议在由单个样本估计的基于补丁的分段框架中使用特性杂乱的HMMS。袋式垃圾杂草嗯使用本地图片特征代表的统计信息。因此,它们可以被认为是离散HMM的变型,允许在时间点模拟观察许多特征的观察。离散性使我们能够估计仅具有用户提供的查询的单个示例的查询模型。这使得我们的方法对于培训数据的可用性非常灵活。此外,我们能够在乔治华盛顿数据集上倾斜最先进的结果。

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