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Local gradient full-scale transform patterns based off-line text-independent writer identification

机译:基于偏远的非独立作者识别的本地梯度全尺度变换模式

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摘要

Handwriting based writer identification is one of the reliable components of behavioral biometrics. A huge effort has been done in recent years to improve the writer identification performance. Our paper presents a new and effective off-line text-independent system for writer identification. Extracting features from handwriting substantially impacts the ability of the classification process to identify the query writers. With the use of suitable classifier, a well-designed and discriminative feature extraction improves the classification performance. For that, we introduce a discriminative yet simple feature method, referred to as Local gradient full-Scale Transform Patterns (LSTP). The proposed LSTP algorithm captures salient local writing structure at small regions of interest of the writing. These writing regions are termed as connected components. In the classification stage, we perform Hamming distance based NN classifier to compare and match LSTP feature vectors. The proposed framework is evaluated on 9 well-known handwritten benchmarks. Experimental results show high identification performance against the current state-of-the-art. (C) 2020 Elsevier B.V. All rights reserved.
机译:基于手写的作者识别是行为生物识别性的可靠组件之一。近年来一直在做出巨大的努力,以改善作者识别性能。我们的论文提出了一种新的有效的离线文本文本的作者识别系统。从手写中提取特征大大影响了分类过程识别查询作家的能力。通过使用合适的分类器,精心设计的辨别特征提取可以提高分类性能。为此,我们介绍了一种辨别又简单的特征方法,称为本地梯度全尺度变换模式(LSTP)。所提出的LSTP算法在写作的小区域中捕获突出的本地写入结构。这些写入区域称为连接组件。在分类阶段,我们执行基于汉明距离的NN分类器以比较和匹配LSTP特征向量。拟议的框架是在9名知名手写基准中进行评估。实验结果表明,对目前最先进的识别性能很高。 (c)2020 Elsevier B.V.保留所有权利。

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