预处理机器学习数据以解决计算机视觉问题的方法

IF 0.4 Q4 MATHEMATICS, APPLIED
A. E. Trubin, A. Morozov, A. E. Zubanova, V. Ozheredov, V. Korepanova
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引用次数: 0

摘要

在机器学习领域,没有单一的数据预处理方法,因为该过程的所有阶段对于特定任务都是独特的。但是,在每个方向上使用特定的数据类型。本研究假设文本识别任务中数据准备的顺序和阶段是可以清晰地结构化的。本文讨论了作为ABC字符识别任务的一种具体技术的数据预处理的基本原理和连续阶段的分配。选取ETL集图像作为源数据。预处理包括处理图像的阶段,在每个阶段都对源数据进行更改。第一步是裁剪,这可以去除图像中不必要的信息。其次,考虑了将图像转换为原始宽高比的方法,确定了从灰度到黑白格式的转换方法。在下一阶段,人为地扩展字符行,以便更好地识别印刷字母。在数据预处理的最后阶段,进行了增强,使得无论ABC字符在空间中的位置如何,都可以更好地识别ABC字符。在此基础上,建立了文本识别任务数据预处理方法的总体结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The method of preprocessing machine learning data for solving computer vision problems
In the field of machine learning, there is no single methodology for data preprocessing, since all stages of this process are unique for a specific task. However, a specific data type is used in each direction. The research hypothesis assumes that it is possible to clearly structure the sequences and phases of data preparation for text recognition tasks. The article discusses the basic principles of data preprocessing and the allocation of successive stages as a specific technique for the task of recognizing ABC characters. ETL set images were selected as the source data. Preprocessing included the stages of working with images, at each of which changes were made to the source data. The first step was cropping, which allowed to get rid of unnecessary information in the image. Next, the approach of converting the image to the original aspect ratio was considered and the method of converting from shades of gray to black and white format was determined. At the next stage, the character lines were artificially expanded for better recognition of printed alphabets. At the last stage of data preprocessing, augmentation was performed, which made it possible to better recognize ABC characters regardless of their position in space. As a result, the general structure of the data preprocessing methodology for text recognition tasks was built.
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CiteScore
0.70
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