基于特征描述符的离线文本独立作者识别新框架

Abderrazak Chahi, Issam El Khadiri, Y. El merabet, Y. Ruichek, R. Touahni
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引用次数: 4

摘要

特征工程是机器学习应用的关键因素。笔迹鉴定是笔迹鉴定的一个基本过程,多年来一直是一个活跃而富有挑战性的研究领域。我们提出了一种概念上计算效率高,但简单快速的局部描述符,称为块明智局部二进制计数(BW-LBC),用于手写文档的离线文本独立编写器识别。建议的BW-LBC算子,表征每个写作者的写作风格,应用于从扫描的手写样本(文档或一组单词/文本行)中提取和裁剪的一组连接的组件,其中每个标记的组件被视为纹理图像。然后将从所有写入样本中的组件计算的特征向量馈送到1NN(最近邻)分类器以识别查询文档的作者。模拟实验分别在三个具有挑战性和公开可用的手写数据库(IFN/ENIT, AHTID/MW和CVL)上进行,这些数据库分别包含阿拉伯文和英文的手写文本。实验结果表明,结合BW-LBC描述符的系统在识别阿拉伯文字符上表现出优异的性能,在识别英文字符上表现出较强的竞争力。
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Effective feature descriptor-based new framework for off-line text-independent writer identification
Feature engineering is a key factor of machine learning applications. It is a fundamental process in writer identification of handwriting, which is an active and challenging field of research for many years. We propose a conceptually computationally efficient, yet simple and fast local descriptor referred to as Block Wise Local Binary Count (BW-LBC) for offline text-independent writer identification of handwritten documents. Proposed BW-LBC operator, which characterizes the writing style of each writer, is applied to a set of connected components extracted and cropped from scanned handwriting samples (documents or set of words/text lines) where each labeled component is seen as a texture image. The feature vectors computed from the components in all the writing samples are then fed to the 1NN (Nearest Neighbor) classifier to identify the writer of the query documents. Simulated experiments are performed on three challenging and publicly available handwritten databases (IFN/ENIT, AHTID/MW, and CVL) containing handwritten texts in Arabic and English languages, respectively. Experimental results show that our proposed system combined with BW-LBC descriptor demonstrate superior performance on the Arabic script and competitive performance on the English one against the old and recent writer identification systems of the state-of-the-art.
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