用于自动描述答案评估的异常手写文本检测

Nilanjana Chatterjee, Palaiahnaakote Shivakumara, U. Pal, Tong Lu, Yue Lu
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引用次数: 0

摘要

虽然有先进的字符识别技术,但由于大量多样化的手写文本和问题的答案,自动描述性答案评估对文档图像分析社区来说是一个开放的挑战。本文提出了一种检测学生答题中异常手写文本的新方法。这种方法的提出是基于这样一个事实,即当学生对回答问题有信心时,学生通常会把答案写得清晰整齐,而他们不自信时,他们会写得很潦草,不容易让读者理解。为了检测这种异常手写文本,我们探索了一种新的傅立叶变换和深度学习相结合的边缘检测模型。这个结果保留了手写文本的结构。对于异常文本和正常文本分类的特征提取,本文提出的方法研究了文体的行为,特别是上下行文的变化。因此,本文提出的方法为边缘图像绘制不受旋转、缩放和一定程度畸变影响的主轴。对于主轴,采用最上点和最下点绘制内侧轴。将中轴线与主轴点之间的距离作为特征向量。然后,将特征向量传递给人工神经网络进行异常文本分类。通过在我们自己的数据集、性别识别标准数据集(IAM)和手写伪造检测数据集(ACPR 2019)上进行测试来评估所提出的方法。在不同数据集上的结果表明,本文提出的方法优于现有的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Handwritten Text Detection for Automatic Descriptive Answer Evaluation
Although there are advanced technologies for character recognition, automatic descriptive answer evaluation is an open challenge for the document image analysis community due to large diversified handwritten text and answers to the question. This paper presents a novel method for detecting anomaly handwritten text in the responses written by the students to the questions. The method is proposed based on the fact that when the students are confident in answering questions, the students usually write answers legibly and neatly while they are not confident, they write sloppy writing which may not be easy for the reader to understand. To detect such anomaly handwritten text, we explore a new combination of Fourier transform and deep learning model for detecting edges. This result preserves the structure of handwritten text. For extracting features for classification of anomaly text and normal text, the proposed method studies the behavior of writing style, especially the variation at ascenders and descenders. Therefore, the proposed work draws principal axis which is invariant to rotation, scaling and some extent to distortion for the edge images. With respect to principal axis, the proposed method draws medial axis using uppermost and lowermost points. The distance between the medial axis and principal axis points are considered as feature vector. Further, the feature vector is passed to Artificial Neural Network for classification of anomaly text. The proposed method is evaluated by testing on our own dataset, standard dataset of gender identification (IAM) and handwritten forgery detection dataset (ACPR 2019). The results on different datasets show that the proposed work outperforms the existing methods.
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