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The writer independent online handwriting recognition system frog on hand and cluster generative statistical dynamic time warping

机译:作者独立的在线手写识别系统青蛙手头和集群生成统计动态时间规整。

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In this paper, we give a comprehensive description of our writer-independent online handwriting recognition system frog on hand. The focus of this work concerns the presentation of the classification/training approach, which we call cluster generative statistical dynamic time warping (CSDTW). CSDTW is a general, scalable, HMM-based method for variable-sized, sequential data that holistically combines cluster analysis and statistical sequence modeling. It can handle general classification problems that rely on this sequential type of data, e.g., speech recognition, genome processing, robotics, etc. Contrary to previous attempts, clustering and statistical sequence modeling are embedded in a single feature space and use a closely related distance measure. We show character recognition experiments of frog on hand using CSDTW on the UNIPEN online handwriting database. The recognition accuracy is significantly higher than reported results of other handwriting recognition systems. Finally, we describe the real-time implementation of frog on hand on a Linux Compaq iPAQ embedded device.
机译:在本文中,我们全面描述了我们的独立于作者的在线手写识别系统frog。这项工作的重点涉及分类/训练方法的介绍,我们称其为聚类生成统计动态时间规整(CSDTW)。 CSDTW是一种通用的,可扩展的,基于HMM的方法,用于可变大小的顺序数据,该方法将聚类分析和统计序列建模全面结合。它可以处理依赖于这种连续数据类型的一般分类问题,例如语音识别,基因组处理,机器人技术等。与之前的尝试相反,聚类和统计序列建模被嵌入到单个特征空间中并使用紧密相关的距离测量。我们在UNIPEN在线手写数据库上显示了使用CSDTW进行的手蛙的字符识别实验。识别精度明显高于其他手写识别系统的报告结果。最后,我们描述了在Linux Compaq iPAQ嵌入式设备上实现frog的实时实现。

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