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A novel approach for handedness detection from off-line handwriting using fuzzy conceptual reduction

机译:一种使用模糊概念归约法从离线笔迹检测手势的新方法

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A challenging area of pattern recognition is the recognition of handwritten texts in different languages and the reduction of a volume of data to the greatest extent while preserving associations (or dependencies) between objects of the original data. Until now, only a few studies have been carried out in the area of dimensionality reduction for handedness detection from off-line handwriting textual data. Nevertheless, further investigating new techniques to reduce the large amount of processed data in this field is worthwhile. In this paper, we demonstrate that it is important to select only the most characterizing features from handwritings and reject all those that do not contribute effectively to the process of handwriting recognition. To achieve this goal, the proposed approach is based mainly on fuzzy conceptual reduction by applying the Lukasiewicz implication. Handwritten texts in both Arabic and English languages are considered in this study. To evaluate the effectiveness of our proposal approach, classification is carried out using a K-Nearest-Neighbors (K-NN) classifier using a database of 121 writers. We consider left/right handedness as parameters for the evaluation where we determine the recall/precision and F-measure of each writer. Then, we apply dimensionality reduction based on fuzzy conceptual reduction by using the Lukasiewicz implication. Our novel feature reduction method achieves a maximum reduction rate of 83.43 %, thus making the testing phase much faster. The proposed fuzzy conceptual reduction algorithm is able to reduce the feature vector dimension by 31.3 % compared to the original “ best of all combined features ” algorithm.
机译:模式识别的挑战性领域是识别不同语言的手写文本,并最大程度地减少数据量,同时保留原始数据对象之间的关联(或依赖性)。迄今为止,在用于从离线手写文本数据检测手性的降维方面仅进行了很少的研究。尽管如此,在该领域进一步研究减少大量处理数据的新技术还是值得的。在本文中,我们证明了重要的一点是,从笔迹中仅选择最具特征的功能,并拒绝所有对笔迹识别过程没有有效贡献的功能。为了实现这个目标,所提出的方法主要基于通过应用Lukasiewicz蕴涵的模糊概念约简。本研究考虑阿拉伯语和英语的手写文本。为了评估我们建议方法的有效性,使用K-最近邻(K-NN)分类器并使用121位作者的数据库进行分类。我们将左/右手性作为评估的参数,在此我们确定每个作者的召回率/准确性和F量度。然后,我们通过使用Lukasiewicz蕴涵在模糊概念约简的基础上应用降维。我们新颖的特征缩减方法可实现83.43%的最大缩减率,从而使测试阶段更快。与最初的“所有组合特征中的最佳”算法相比,所提出的模糊概念约简算法能够将特征向量维数减少31.3%。

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