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首页> 外文期刊>Journal of Artificial Intelligence and Soft Computing Research >Score Level and Rank Level Fusion for Kinect-Based Multi-Modal Biometric System
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Score Level and Rank Level Fusion for Kinect-Based Multi-Modal Biometric System

机译:基于Kinect的多模态生物识别系统的得分水平和等级水平融合

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摘要

Computational intelligence firmly made its way into the areas of consumer applications, banking, education, social networks, and security. Among all the applications, biometric systems play a significant role in ensuring an uncompromised and secure access to resources and facilities. This article presents a first multimodal biometric system that combines KINECT gait modality with KINECT face modality utilizing the rank level and the score level fusion. For the KINECT gait modality, a new approach is proposed based on the skeletal information processing. The gait cycle is calculated using three consecutive local minima computed for the distance between left and right ankles. The feature distance vectors are calculated for each person’s gait cycle, which allows extracting the biometric features such as the mean and the variance of the feature distance vector. For Kinect face recognition, a novel method based on HOG features has been developed. Then, K-nearest neighbors feature matching algorithm is applied as feature classification for both gait and face biometrics. Two fusion algorithms are implemented. The combination of Borda count and logistic regression approaches are used in the rank level fusion. The weighted sum method is used for score level fusion. The recognition accuracy obtained for multi-modal biometric recognition system tested on KINECT Gait and KINECT Eurocom Face datasets is 93.33% for Borda count rank level fusion, 96.67% for logistic regression rank-level fusion and 96.6% for score level fusion.
机译:计算智能已牢固地进入消费者应用,银行,教育,社交网络和安全领域。在所有应用程序中,生物识别系统在确保对资源和设施的毫不妥协和安全的访问中扮演着重要角色。本文介绍了第一个多模式生物特征识别系统,该系统利用等级级别和得分级别融合将KINECT步态模式与KINECT面部模式相结合。针对KINECT的步态,提出了一种基于骨骼信息处理的新方法。使用三个连续的局部最小值计算步态周期,该三个局部最小值针对左右脚踝之间的距离进行计算。针对每个人的步态周期计算特征距离向量,从而可以提取生物特征,例如特征距离向量的均值和方差。对于Kinect人脸识别,已经开发了一种基于HOG特征的新颖方法。然后,将K近邻特征匹配算法作为步态和面部生物特征的特征分类。实现了两种融合算法。等级融合中使用了Borda计数和逻辑回归方法的组合。加权和方法用于分数级别融合。在KINECT Gait和KINECT Eurocom Face数据集上测试的多模式生物特征识别系统获得的识别准确度对于Borda计数等级融合为93.33%,对数回归等级融合为96.67%,对于得分等级融合为96.6%。

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