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Hough Transform-Based Angular Features for Learning-Free Handwritten Keyword Spotting

机译:基于Hough的转换的角度特征用于无学习手写关键字斑点

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摘要

Handwritten keyword spotting (KWS) is of great interest to the document image research community. In this work, we propose a learning-free keyword spotting method following query by example (QBE) setting for handwritten documents. It consists of four key processes: pre-processing, vertical zone division, feature extraction, and feature matching. The pre-processing step deals with the noise found in the word images, and the skewness of the handwritings caused by the varied writing styles of the individuals. Next, the vertical zone division splits the word image into several zones. The number of vertical zones is guided by the number of letters in the query word image. To obtain this information (i.e., number of letters in a query word image) during experimentation, we use the text encoding of the query word image. The user provides the information to the system. The feature extraction process involves the use of the Hough transform. The last step is feature matching, which first compares the features extracted from the word images and then generates a similarity score. The performance of this algorithm has been tested on three publicly available datasets: IAM, QUWI, and ICDAR KWS 2015. It is noticed that the proposed method outperforms state-of-the-art learning-free KWS methods considered here for comparison while evaluated on the present datasets. We also evaluate the performance of the present KWS model using state-of-the-art deep features and it is found that the features used in the present work perform better than the deep features extracted using InceptionV3, VGG19, and DenseNet121 models.
机译:手写的关键字拍摄(KWS)对文档图像研究界非常感兴趣。在这项工作中,我们提出了一种自由语(Qbe)设置后查询的无学习关键字发现方法,用于手写文档。它由四个关键流程组成:预处理,垂直区域划分,特征提取和特征匹配。预处理步骤涉及单词图像中发现的噪声,以及由各个文字件引起的手写的歪曲。接下来,垂直区域分裂将单词图像分成几个区域。垂直区域的数量由查询字图像中的字母数引导。要在实验期间获取此信息(即,查询文字图像中的字母数),我们使用查询字图像的文本编码。用户将信息提供给系统。特征提取过程涉及使用Hough变换。最后一步是特征匹配,首先比较从单词图像中提取的功能,然后生成相似度分数。该算法的性能已在三个公开可用的数据集中进行测试:IAM,Quwi和ICDAR KWS 2015。注意到所提出的方法优于在此考虑的最先进的无学习KWS方法进行评估目前的数据集。我们还使用最先进的深度特征评估当前KWS模型的性能,并且发现本工作中使用的特征比使用Inceptionv3,VGG19和DenSenet121模型提取的深度特征更好。

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