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Handwriting recognition using sinusoidal model parameters

机译:使用正弦模型参数进行手写识别

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Handwriting is produced by the oscillatory motion of the hand in both horizontal and vertical directions, with a constant drift velocity along its writing direction. The velocity profiles of handwriting in these orthogonal directions have an invariant bell-shaped nature with zero velocities at the change in trajectory directions. According to recent studies, online handwriting can be suitably characterized by modeling the velocity profiles with sinusoidal oscillations. In this paper, we propose a set of features derived from sinusoidal modeling of handwriting velocities for online handwriting recognition (HR) task. Although the predominant information of handwriting is modeled in the velocity profiles, the first derivatives of the velocity profiles (i.e. acceleration) and the x- and y-coordinates are also important in characterizing the handwriting. Accordingly, these signals are also modeled by sinusoidal oscillations, and the parameters are utilized as features to develop the HR system. As these parameters are extracted directly using the hand movement generation theory, therefore it may also contain additional information describing the generation of the pattern along with its spatial shape information. The efficacy of the proposed features is shown for character and word recognition task employing hidden Markov model (HMM) and support vector machine (SVM) classifiers. The experiments are conducted on three online handwritten databases: Assamese digit database, UNIPEN English character database and UNIPEN ICROW-03 English word database. The results obtained are promising over the prior works for these databases. (c) 2018 Elsevier B.V. All rights reserved.
机译:手写是通过手在水平和垂直方向上的振荡运动产生的,沿其书写方向具有恒定的漂移速度。在这些正交方向上的笔迹速度分布具有不变的钟形性质,在轨迹方向的变化处速度为零。根据最近的研究,可以通过对具有正弦振荡的速度分布进行建模来适当地表征在线手写。在本文中,我们提出了一系列用于在线手写识别(HR)任务的手写速度正弦建模衍生的功能。尽管笔迹的主要信息是在速度曲线中建模的,但速度剖面的一阶导数(即加速度)以及x和y坐标对于表征笔迹也很重要。因此,这些信号也通过正弦振荡进行建模,并且这些参数被用作开发HR系统的特征。由于这些参数是使用手移动生成理论直接提取的,因此它可能还包含描述图案生成及其空间形状信息的其他信息。利用隐藏的马尔可夫模型(HMM)和支持向量机(SVM)分类器,显示了所提出功能对字符和单词识别任务的功效。实验是在三个在线手写数据库上进行的:阿萨姆数字数据库,UNIPEN英文字符数据库和UNIPEN ICROW-03英文单词数据库。获得的结果比这些数据库的先前工作有希望。 (c)2018 Elsevier B.V.保留所有权利。

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