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Selection of optimized features for fusion of palm print and finger knuckle-based person authentication

机译:选择棕榈印刷和手指关节的人身份融合的优化功能

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摘要

The impact of digital technology in biometrics is much more efficient at interpreting data than humans, which results in completely replacement of manual identification procedures in forensic science. Because the single modality-based biometric frameworks limit performance in terms of accuracy and anti-spoofing capabilities due to the presence of low quality data, therefore, information fusion of more than one biometric characteristic in pursuit of high recognition results can be beneficial. In this article, we present a multimodal biometric system based on information fusion of palm print and finger knuckle traits, which are least associated to any criminal investigation as evidence yet. The proposed multimodal biometric system might be useful to identify the suspects in case of physical beating or kidnapping and establish supportive scientific evidences, when no fingerprint or face information is present in photographs. The first step in our work is data preprocessing, in which region of interest of palm and finger knuckle images have been extracted. To minimize nonuniform illumination effects, we first normalize the detected circular palm or finger knuckle and then apply line ordinal pattern (LOP)-based encoding scheme for texture enrichment. The nondecimated quaternion wavelet provides denser feature representation at multiple scales and orientations when extracted over proposed LOP encoding and increases the discrimination power of line and ridge features. To best of our knowledge, this first attempt is a combination of backtracking search algorithm and 2D(2)LDA has been employed to select the dominant palm and knuckle features for classification. The classifiers output for two modalities are combined at unsupervised rank level fusion rule through Borda count method, which shows an increase in performance in terms of recognition and verification, that is, 100% (correct recognition rate), 0.26% (equal error rate), 3.52 (discriminative index), and 1,262 m (speed).
机译:数字技术在生物识别中的影响在解释数据中比人类更有效,这导致完全更换法医学中的手动识别程序。由于基于单个模态的生物识别框架在精度和反欺骗能力方面限制了由于存在低质量数据,因此,信息融合在追求高识别结果的追求中的一个以上的生物识别特性可能是有益的。在本文中,我们介绍了一种基于掌纹和手指指关节特征的信息融合的多模态生物识别系统,这与任何刑事调查有关的证据。当照片中没有指纹或面部信息存在时,所提出的多模态生物识别系统可能有助于识别出于物理殴打或绑架并建立支持性科学证据的嫌疑人。我们工作的第一步是数据预处理,其中已经提取了Palm和手指指关节图像的感兴趣区域。为了最大限度地减少非均匀照明效果,首先首先使检测到的圆形手掌或指关节归一化,然后施加线序图案(循环)的编码方案以进行纹理富集。当通过提出的循环编码提取时,不确定的四元数小波在多个尺度和方向上提供了密度特征表示,并增加了线路和脊特征的辨别力。为了使我们的知识,第一次尝试是回溯搜索算法和2D(2)LDA的组合,用于选择分类的主导手掌和指关节功能。两种方式的分类器通过BORDA Count方法在无监督的排名级融合规则中组合,这在识别和验证方面显示了性能的增加,即100%(正确识别率),0.26%(相等的错误率) ,3.52(鉴别指数)和1,262米(速度)。

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