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Feature fusion using a modified genetic algorithm for face and signature recognition system

机译:使用改进的遗传算法的人脸和签名识别系统特征融合

摘要

Combination of multi biometrics at feature level fusion is able to give more accurate classification result. This thesis focuses on the development of feature level fusion of bimodal biometrics system for face and dynamic signature recognition system The modalities of biometric are used due to the ability to avoid spoof attack since it is difficult for impostor to imitate two different characteristics (behaviour and physical) at the same time. Most existing systems are dealing with feature fusion of the same domain such as image based of fingerprint and face. Thus, there is no issue of incompatible features to be fused compared to the proposed development. Balance of the combined features has not been assessed whereas it is essential to ensure one of the biometrics does not dominate accuracy performance. To overcome the issue of incompatible features to be combined, Wrapper Genetic Algorithm (GA) was implemented as the feature selection algorithm due to its ability to evaluate the features irrespective of which domain by masking the features with bit number. Audmodified fitness function in Wrapper GA was introduced by adding a function to maintain the balanced of the selected features. Penalty's value was imposed to the function when there is imbalance occurs in the selected features. Therefore, the accuracy performance of this system based on the fitness function that will rely onudthe percentage of correctly recognized samples and the balanced of selected features. Several approaches and benchmark data were used to validate the effectiveness of the proposed method compared to the unimodal system and normal feature selection method. Results show that the proposed method yield optimal recognition with the highest accuracy of 97.50%. In addition, the importance of both biometrics remains, while maintaining the balance of the selected features.
机译:在特征级别融合多个生物特征的组合能够给出更准确的分类结果。本文着重研究用于面部和动态特征识别系统的双峰生物特征识别系统的特征级融合。生物特征识别方法的使用具有避免欺骗攻击的能力,因为冒充者很难模仿两种不同的特征(行为和身体特征)。 ) 与此同时。大多数现有系统都在处理同一领域的特征融合,例如基于指纹和面部的图像。因此,与提出的开发相比,不存在融合不兼容特征的问题。尚未评估组合功能的平衡性,但是必须确保其中一项生物识别技术不会影响准确性。为了克服不兼容特征的组合问题,包装遗传算法(GA)被实现为特征选择算法,因为它能够通过用位数掩盖特征,而不管哪个域来评估特征。通过添加用于维持所选功能平衡的功能,引入了Wrapper GA中的 udified适应性功能。当所选要素中出现不平衡时,将惩罚值强加给该函数。因此,基于适应度函数的该系统的精度性能将取决于正确识别的样本的百分比和所选特征的平衡。与单峰系统和法线特征选择方法相比,使用了几种方法和基准数据来验证该方法的有效性。结果表明,所提方法能够以97.50%的最高准确率实现最优识别。此外,在保持所选功能平衡的同时,仍保留了两种生物识别技术的重要性。

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    Suryanti Awang;

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  • 年度 2015
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