相机捕获的手写文档中的方程检测

Koushik K S, Ankita Mahale, Shobha Rani N
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引用次数: 0

摘要

文档分析和识别领域中最重要的任务之一是检测使用相机获取的文档中的方程。该过程包括几个步骤,包括图像预处理,分割,特征提取和分类。建议的方法包括获取用户提供的输入表情图像,并将其分类为三种类型的方程之一:简单、复杂和高度复杂。通过选择初始超平面出发的决策边界,SVR算法对图像进行编码,生成更符合数据的模型。然后通过对图像进行特征分割并将其与训练好的模型进行比较来获得结果。两个循环神经网络组成了RNN编码器和解码器。一个RNN从符号序列中创建一个固定长度的向量表示,而另一个RNN将该表示解码为不同的符号序列。1900张包含各种方程的图像组成了用于训练、验证和测试SVR和RNN的数据集。该系统的准确率约为93.64%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Equation Detection in the Camera Captured Handwritten Document
One of the most important tasks in the realm of document analysis and recognition is the detection of equations in documents that were acquired using a camera. The procedure includes several steps, including pre-processing of the images, segmentation, feature extraction, and classification. The suggested method comprises taking a user-provided input expression image and classifying it into one of three types of equations: simple, complex, and highly complex. By choosing a decision boundary set off from the initial hyperplane, the SVR algorithm encodes the image, producing a model that fits the data better. The result is then obtained by character-wise segmenting the image and comparing it with trained models. Two recurrent neural networks make up the RNN encoder-decoder that is used. One RNN creates a fixed-length vector representation from a sequence of symbols, and a different RNN decodes that representation into a different sequence of symbols. 1900 images containing various equations made up the dataset utilized for training, validating, and testing the SVR and RNN. The accuracy of the system was about 93.64%.
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