Feature Engineering Techniques to Improve Identification Accuracy for Offline Signature Case-Bases

Shisna Sanyal, Anindita Desarkar, Uttam Kumar Das, C. Chaudhuri
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引用次数: 12

Abstract

Handwritten signatures have been widely acclaimed for personal identification viability in educated human society. But, the astronomical growth of population in recent years warrant developing mechanized systems to remove the tedium and bias associated with manual checking. Here the proposed system, performing identification with Nearest Neighbor matching between offline signature images collected temporally. The raw images and their extracted features are preserved using Case Based Reasoning and Feature Engineering principles. Image patterns are captured through standard global and local features, along with some profitable indigenously developed features. Outlier feature values, on detection, are automatically replaced by their nearest statistically determined limit values. Search space reduction possibilities within the case base are probed on a few selected key features, applying Hierarchical clustering and Dendogram representation. Signature identification accuracy is found promising when compared with other machine learning techniques and a few existing well known approaches.
提高离线签名案例库识别精度的特征工程技术
在受过教育的人类社会,手写签名因其个人身份识别的可行性而受到广泛赞誉。但是,近年来人口的天文数字增长要求开发机械化系统,以消除与人工检查相关的乏味和偏见。本文提出了一种基于最近邻匹配的离线签名识别系统。使用基于案例的推理和特征工程原理来保存原始图像及其提取的特征。图像模式通过标准的全局和局部特征以及一些有益的本地开发特征来捕获。在检测到异常特征值时,将被其最近的统计确定极限值自动替换。应用层次聚类和树状图表示,在选定的几个关键特征上探索案例库中搜索空间约简的可能性。与其他机器学习技术和一些现有的知名方法相比,签名识别的准确性是有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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