基于模糊软生物特征数据集成改进手写签名身份预测

Márjory Da Costa-Abreu, M. Fairhurst
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引用次数: 5

摘要

使用生物识别技术的个人自动识别在不同领域的应用越来越多,但设计实用的系统仍然存在重大挑战。选择采用的模式、最适合应用的分类/匹配技术、使用最有效的传感器等等,都是重要的考虑因素,可以帮助改善可能影响最佳性能的因素。然而,研究较少的是如何通过利用通常在特定任务中可用的更广泛的信息来优化性能,特别是所谓的“软”生物识别数据的利用经常被忽视。本文以被试年龄为例,提出了一种将软生物特征数据集成到识别任务有效处理结构中的新方法,该方法采用固有连续信息的模糊表示。我们的结果表明,这是一种很有前途的方法,在许多潜在的困难的实际情况下可能会有好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Handwritten Signature-Based Identity Prediction through the Integration of Fuzzy Soft-Biometric Data
Automated identification of individuals using biometric technologies is finding increasing application in diverse areas, yet designing practical systems can still present significant challenges. Choice of the modality to adopt, the classification/matching techniques best suited to the application, the most effective sensors to use, and so on, are all important considerations, and can help to ameliorate factors which might detract from optimal performance. Less well researched, however, is how to optimise performance by means of exploiting broader-based information often available in a specific task and, in particular, the exploitation of so-called "soft" biometric data is often overlooked. This paper proposes a novel approach to the integration of soft biometric data into an effective processing structure for an identification task by adopting a fuzzy representation of information which is inherently continuous, using subject age as a typical example. Our results show this to be a promising methodology with possible benefits in a number of potentially difficult practical scenarios.
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