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Performance analysis of face recognition using state of the art approaches

机译:使用最先进方法进行人脸识别的性能分析

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Face analysis plays a vital role in building human computer Interaction. The aim of this work is to explore how to exploit the temporal information in a video progression for the task of face recognition using state of art methods. In this paper, firstly, the faces are detected from the Tamil movies which are captured under different environments and locations. In the next step, the well known feature extraction algorithms like PCA, LDA, D-SIFT and LBP are applied to extract the features from the faces. Finally, in the recognition phase, the classification is done using k-NN, SVM and SRC classifiers. Extensive experimental results on Yale, AR and Movie database (MVDB) show that the D-SIFT and LBP method with SRC classifier consistently performs much better than the other methods for face recognition under severe circumstances.
机译:人脸分析在建立人机交互方面起着至关重要的作用。这项工作的目的是探索如何利用最新技术在视频进行中利用时间信息来实现人脸识别任务。在本文中,首先,从在不同环境和位置下拍摄的泰米尔电影中检测面部。下一步,应用众所周知的特征提取算法(例如PCA,LDA,D-SIFT和LBP)从面部提取特征。最后,在识别阶段,使用k-NN,SVM和SRC分类器进行分类。在耶鲁大学,AR和电影数据库(MVDB)上进行的大量实验结果表明,在严重情况下,带有SRC分类器的D-SIFT和LBP方法始终比其他方法能够更好地进行人脸识别。

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