离线手写识别任务中基于统计和神经的线条分割方法概述

Oleg Yakovchuk, W. Rogoza
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引用次数: 0

摘要

研究对象是线条分割任务。为了从图像格式的文档中识别手写文本,使用了离线手写识别技术。文本识别器模块接受的输入是独立的行,因此重要的预处理步骤之一是检测所有手写文本并将其分割成不同的行。本文研究了手写文本行分割任务、其要求、问题和挑战。本文回顾了现代识别系统中用于该任务的两种主要方法。这两种方法分别是基于统计投影的方法和基于神经的方法。对每种方法的多篇作品和研究论文进行了评述,并根据所述任务、限制条件和输入数据的特殊性分析了它们的优缺点。获得的总体结果将形成一个表格进行比较。根据使用深度神经网络的最新作品,介绍了在识别系统中使用这些方法的新可能性,而这些可能性是传统统计分割方法所不具备的。这些结果可进一步用于在手写识别系统中正确选择合适的方法,以提高其性能和质量,也可用于该领域的进一步研究。
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An overview of statistical and neural-based line segmentation methods for offline handwriting recognition task
The object of the research is the line segmentation task. To recognize the handwritten text from the documents in image format offline handwriting recognition technology is used. The text recognizer module accepts input as separate lines, so one of the important preprocessing steps is the detection and splitting of all handwritten text into distinct lines. In this paper, the handwritten text line segmentation task, its requirements, problems, and challenges are examined. Two main approaches for this task that are used in modern recognition systems are reviewed. These approaches are statistical projection-based methods and neural-based methods. Multiple works and research papers for each type of approach are reviewed analyzing their strengths and weaknesses considering the described tasks, constraints, and input data peculiarities. Overall acquired results are formed in a single table for comparison. Based on the latest works that utilize deep neural networks the new possibilities of using these methods in recognition systems are described that were unavailable with traditional statistical segmentation approaches. The constructive conclusions are made based on the review, describing the main pros and cons of these two approaches for the line segmentation task. These results can be further used for the correct selection of suitable methods in handwriting recognition systems to improve their performance and quality, and for further research in this area.
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发文量
89
审稿时长
8 weeks
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