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A Normalization Process to Standardize Handwriting Data Collected from Multiple Resources for Recognition

机译:一个标准化过程,用于标准化从多种资源中收集的用于识别的笔迹数据

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This paper presents a normalization process for handwriting recognition with the ability to accommodate scribbling data of different resolutions collected from diverse devices, such as touch screens and tablets. The normalization algorithms aim at being position, scale and rotation invariant in order to standardize non-uniform handwriting results from all sorts of users. The process starts with identifying the bound of a handwriting. The cropped bound is centered to the origin and then scaled to a default size without producing undesirable distortions. Image skew problem is handled by sampling data image of multi-angles through rotation transformation to produce extra learning artifacts. Due to the high volume of pixel data, down-sampling is employed by mingling neighborhood pixels into blocks to improve learning and recognition speed. Finally, a 2D image is serialized into an array of blocks to conduct learning and recognition. The empirical studies show that this proposed standardization approach can yield a high degree of accuracy, verified by a number of popular machine learning algorithms.
机译:本文提出了一种手写识别的标准化过程,该过程具有适应从各种设备(如触摸屏和平板电脑)收集的不同分辨率的乱码数据的能力。归一化算法的目标是位置,比例和旋转不变,以便标准化来自各种用户的非均匀笔迹结果。该过程从识别笔迹的边界开始。裁剪的边界以原点为中心,然后缩放为默认大小,而不会产生不希望的变形。通过旋转变换对多角度的数据图像进行采样以产生额外的学习伪像,可以解决图像歪斜问题。由于像素数据量很大,因此通过将附近像素混合成块来采用下采样,以提高学习和识别速度。最后,将2D图像序列化为一组块以进行学习和识别。实证研究表明,这种建议的标准化方法可以产生很高的准确性,并已通过许多流行的机器学习算法进行了验证。

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