Towards a segmentation and recognition-free approach for content-based document image retrieval of handwritten queries

Houssem Chatbri, K. Kameyama, P. Kwan
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引用次数: 6

Abstract

We introduce a method for content-based document image retrieval (CBDIR) of handwritten queries that is both segmentation and recognition-free. We first demonstrate that our method is underpinned by a theoretical model that exploits the Bayes' rule. Next, we present an algorithmic implementation that takes into account real world retrieval challenges caused by handwriting fluctuations and style variations. Our algorithm operates as follows: First, a number of connected components of the query are matched against the connected components of the document image using shape features. A similarity threshold is used to select the connected components of the document image that are most similar to the query components. Then, the selected components are used to detect candidate occurrences of the query in the document image by using size-adaptive bounding boxes. Finally, a score is calculated for each candidate occurrence and used for ranking. We conduct a comparative evaluation of our method on a dataset of 200 printed document images, by executing 40 printed and 200 handwritten queries of mathematical expressions. Experimental results demonstrate competitive performances expressed by P-Recall = 100%, A-Recall = 99.95% for printed queries, and P-Recall = 73.5%, A-Recall = 57.92% for handwritten queries, outperforming a state-of-the-art CBDIR algorithm.
面向基于内容的手写查询文档图像检索的无分割和无识别方法
我们介绍了一种基于内容的手写查询文档图像检索(CBDIR)方法,该方法既不需要分割又不需要识别。我们首先证明了我们的方法是由一个利用贝叶斯规则的理论模型支撑的。接下来,我们提出了一种算法实现,该算法考虑了由笔迹波动和风格变化引起的现实世界检索挑战。我们的算法操作如下:首先,使用形状特征将查询的多个连接组件与文档图像的连接组件进行匹配。相似性阈值用于选择与查询组件最相似的文档图像的连接组件。然后,通过使用自适应大小的边界框,使用选定的组件检测文档图像中查询的候选出现情况。最后,为每个候选事件计算一个分数,并用于排名。我们通过执行40个打印和200个手写的数学表达式查询,在200个打印文档图像的数据集上对我们的方法进行了比较评估。实验结果表明,打印查询的P-Recall = 100%, a - recall = 99.95%,手写查询的P-Recall = 73.5%, a - recall = 57.92%,优于最先进的CBDIR算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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