使用机器学习技术从图像中提取和检测文本:研究综述

S. Surana, Komal Pathak, Mehul Gagnani, Vidhan Shrivastava, Mahesh T R, Sindhu Madhuri G
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引用次数: 5

摘要

机器学习是人工智能的一个子集,在世界范围内有很多研究进展。它有自己学习的能力,不需要寻求人类的帮助,也不需要根据以往的经验和知识进行任何明确的编程。主要是基于相应的输入数据集和训练集,它可以自己做出决策,或者在执行某些任务时进行预测。机器学习适用于我们日常生活中的各种实时应用。文本检测和文本提取是从各种来源捕获的图像中包含有价值信息的重要应用之一。在具有复杂背景的图像中,具有不同变化的文本在大小、方向、对齐方式、样式、低亮度或对比度方面存在差异。在阅读过程中,由于文本与图像之间的差异,读者面临着许多问题。因此,文本的检测和提取是一个非常重要和具有挑战性的问题。这里的目标是帮助来自世界不同地区的人使用不同的语言,这样他们就可以很容易地阅读和理解任何书面语言。研究人员使用各种机器学习算法和工具来识别从图像中捕获的手写文本和文本,并将其转换为数字格式。光学字符识别(OCR)是一种机器学习技术,它可以帮助我们检测和提取文档中的文本数据或信息,并将其转化为可编辑和可搜索的数据。本研究论文主要研究各种机器学习算法,这些算法适用于对手写文档、图像进行文本提取,并将其检测为数字格式,并根据用户的要求进行翻译。
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Text Extraction and Detection from Images using Machine Learning Techniques: A Research Review
Machine Learning is subset of Artificial Intelligence and there is lots of research growth across the world. It has capability to learn by its own without seeking any help from human beings or without any explicit programming based on its previous experience and knowledge. Mainly it can make its own decisions or can predict in performing certain tasks based on the res pective input dataset and its training set. Machine Learning is applicable in various real-time applications in our daily life. Text detection and text extraction is one of the important applications which contain valuable information from images captured from various sources. Text with different variations differs in their size, orientation, alignment, style, low brightness or contrast in images with complex background. Many facing issues in reading due to various variations in text on images. So, text detection and extraction is very important and challenging now a days. The objective here is to help human beings with a different language from different parts of the world so that they can easily read and understand any language written. Researchers use various machine learning algorithms and tools to recognize handwritten text and text captured from images to convert them into digital format. Optical Character Recognition (OCR) is a Machine learning technique that helps us to detect and extract text data or information of a document and turn it into editable and searchable data. This research paper mainly focusses on various machine learning algorithms that are applicable for text extraction of handwritten documents, images and detect them into digital format also translate it according to the user's requirements.
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