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首页> 外文期刊>Indian Journal of Science and Technology >Robust Face Recognition from Video based on Extensive Feature Set and Fuzzy_Bat Algorithm
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Robust Face Recognition from Video based on Extensive Feature Set and Fuzzy_Bat Algorithm

机译:基于扩展特征集和Fuzzy_Bat算法的视频鲁棒人脸识别

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Background/Objectives: This paper proposes a novel method of enhancing the face recognition process from video sequence with various pose and occlusion using an extensive feature set called Pose and Occlusion Invariant Feature set (POIF) and unsupervised learning technique. Methods/Statistical Analysis: Here an extensive feature set, POIF is created using local invariant feature namely Speeded Up Robust Feature (SURF), appearance features and weighted holo-entropy to find out the uniqueness of the face image. The Active Appearance Model (AAM) has been used to find the appearance based features in the face image. The proposed feature set, POIF is used to select the key frames in the video sequence and the key frame selection is optimised using unsupervised learning method namely, Fuzzy Clustering using Bat algorithm (FC-Bat). A dictionary of keyframes is then created, using which the faces from the test video is recognized. Findings: Experimental evaluation is done in MATLAB using McGill Real-World Unconstrained Face Video Database and Honda UCSD Dataset 1. The proposed system using FC_Bat algorithm is compared with Fuzzy optimized POIF feature set and Fuzzy c-means optimized POIF feature set and it is found that POIF with FC_Bat algorithm performs better with an accuracy of 97.5%. Applications/Improvements: The computational complexity of the proposed face recognition system is less as it uses unsupervised learning of features and best suits applications involving unlabelled data.
机译:背景/目的:本文提出了一种新颖的方法,该方法使用称为姿势和遮挡不变特征集(POIF)的广泛特征集和无监督学习技术,从具有各种姿势和遮挡的视频序列中增强人脸识别过程。方法/统计分析:这里是一个广泛的功能集,它使用局部不变特征(即快速鲁棒特征(SURF),外观特征和加权全熵)创建POIF,以找出人脸图像的唯一性。活动外观模型(AAM)已用于在面部图像中查找基于外观的特征。提出的功能集POIF用于选择视频序列中的关键帧,并且使用无监督学习方法(即使用Bat算法的模糊聚类(FC-Bat))对关键帧的选择进行了优化。然后创建关键帧字典,使用字典可以识别测试视频中的人脸。结果:使用McGill真实世界无约束人脸视频数据库和Honda UCSD数据集1在MATLAB中进行了实验评估。将拟议的使用FC_Bat算法的系统与Fuzzy优化的POIF特征集和Fuzzy c-均值优化的POIF特征集进行比较,发现带有FC_Bat算法的POIF的性能更好,准确率为97.5%。应用程序/改进:拟议的人脸识别系统的计算复杂度较小,因为它使用了特征的无监督学习,并且最适合涉及未标记数据的应用程序。

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