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On the generalization of the form identification and skew detection problem

机译:论形式识别和偏斜检测问题的概括

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摘要

A new method is proposed to solve the document identification and skew detection problem. It can be applied to a widely used subclass of documents which resemble in style an application form. Unlike other approaches, we make no assumptions about the nature and/or style of the printed form. An attempt is made to solve the problem in the most general sense. The method presented here does not rely on any special features such as patterns of line crossings, or dominant lines, or even special symbols found only on specially designed forms. The Power Spectral Density of the horizontal projection profile of the form is used as a shift invariant feature vector. The Karhunen-Loeve transform is employed to de-correlate and reduce the length of the feature vectors in the training set. Training is done in such a way that no rotations of the unknown form are necessary during recognition. The eigenvectors of the covariance matrix of the power spectral densities for the training set, along with learning vector quantization, were used for training, and the Euclidean distance, for recognition. A limitation related to the amount of skew that the system can handle is alleviated with the use of a known skew detection method. (C) 2001 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 12]
机译:提出了一种新方法来解决文档识别和偏斜检测问题。它可以应用于广泛使用的文档子类,它们类似于申请表格的样式。与其他方法不同,我们没有关于印刷形式的性质和/或风格的假设。尝试在最常见的意义上解决问题。这里呈现的方法不依赖于任何特殊功能,例如线路过境的模式,或显性线,甚​​至仅在专门设计的形式上发现的特殊符号。形式的水平投影轮廓的功率谱密度用作换档不变特征向量。 Karhunen-Loeve变换用于去相关并减少训练集中的特征向量的长度。以这样的方式完成培训,即在识别期间不需要未知形式的旋转。用于训练集的功率谱密度的协方差矩阵的特征向量,以及学习矢量量化用于训练和欧几里德距离,用于识别。与使用已知的偏斜检测方法缓解了与系统可以处理的倾斜量有关的限制。 (c)2001年模式识别协会。 elsevier科学有限公司出版。保留所有权利。 [参考:12]

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