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Efficient chain-code-based image manipulation for handwritten word recognition

机译:基于链码的高效图像处理,用于手写单词识别

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Abstract: Efficient image handling in the handwritten document recognition is an important research issue in real time applications. Image manipulation procedures for a fast handwritten word recognizer, including pre-processing, segmentation, and feature extraction, have been implemented using the chain code representation and presented in this paper. Pre-processing includes noise removal, slant correction and smoothing of contours. Slant angle is estimated by averaging orientation angles of vertical strokes. Smoothing removes jaggedness on contours. Segmentation points are determined using ligatures and concavity features. Average stroke width of an image is used in an adaptive fashion to locate ligatures. Concavities are located by examination of slope changes in contours. Feature extraction efficiently converts a segment into feature vectors. Experimental results demonstrate the efficiency of the algorithms developed. Three-thousand word images captured from real mail pieces, with size of 217 by 82 in average, are used in the experiments. Average processing times taken for each module are 10, 15, and 34 msec on a single Sparc 10 for pre-processing, segmentation, and feature extraction, respectively. !15
机译:摘要:手写文档识别中的有效图像处理是实时应用中的重要研究课题。本文已使用链码表示实现了用于快速手写单词识别器的图像处理程序,包括预处理,分割和特征提取。预处理包括噪声消除,倾斜校正和轮廓平滑。倾斜角是通过平均垂直笔划的方向角来估计的。平滑消除轮廓上的锯齿。分割点是使用连字和凹度特征确定的。图像的平均笔划宽度以自适应方式用于定位连字。通过检查轮廓的坡度变化来定位凹面。特征提取可将片段有效地转换为特征向量。实验结果证明了所开发算法的效率。实验使用从真实邮件中捕获的三千个单词图像,平均大小为217 x 82。在单个Sparc 10上,每个模块分别用于预处理,分割和特征提取的平均处理时间分别为10、15和34毫秒。 !15

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