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On Detectors and Descriptors based Techniques for Face Recognition

机译:基于检测器和描述符的人脸识别技术

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Out of all forms of biometrics, Face Recognition (FR) emerges as the most incredible one. Apart from offering revolutionary applications for business and law-enforcement purposes, it has also opened numerous research avenues in various domains like security, surveillance and social network. One of the many factors critical to having an efficient face recognition system is having at hand, a suitable combination of feature descriptor and feature detector. A feature detector makes use of methods that make local decisions regarding the presence/absence of image features of a given type. A feature descriptor, on the other hand, simplifies the image by extracting useful information and disposing irrelevant information. Our research discusses the goodness of various feature descriptor-detector combination. We do this by simply carrying out the process of feature matching using various combinations of detectors and descriptors. This experiment includes incorporation of dimensionality reduction on the images using Hypercomplex Fourier Transform (HFT) and RANSAC for noise reduction. Out of the diverse options available, we chose to test LGHD, PCEHD and EHD for feature descriptors; for feature detectors, we chose the ones that make use of popular algorithms like Harris-Stephen Algorithm, Minimum Eigen Value and SURF. A series of strict and thorough experiments on popularly available datasets - Faces94 and Grimace led us to an astonishing observation - an accuracy of 90.67% for the former and 71.3% for the latter for Minimum Eigen Value paired with LGHD! This in comparison to those for all other combinations is a lot superior. We thereby conclusively state that feature detector using Minimum Eigen Value algorithm paired with feature descriptor - LGHD outplays other combinations making this combination the best choice for Face Recognition.
机译:在所有形式的生物识别技术中,人脸识别(FR)成为最令人难以置信的一种。除了提供用于商业和执法目的的革命性应用程序之外,它还在安全,监视和社交网络等各个领域开辟了许多研究途径。对于拥有高效人脸识别系统至关重要的众多因素之一,就是拥有特征描述符和特征检测器的适当组合。特征检测器利用做出关于给定类型的图像特征的存在/不存在的本地决策的方法。另一方面,特征描述符通过提取有用的信息并处理不相关的信息来简化图像。我们的研究讨论了各种特征描述符-检测器组合的优点。我们可以通过使用检测器和描述符的各种组合简单地执行特征匹配的过程来实现。该实验包括使用超复杂傅立叶变换(HFT)和RANSAC进行降维处理,以降低图像的降噪效果。在可用的各种选项中,我们选择测试LGHD,PCEHD和EHD的功能描述符。对于特征检测器,我们选择了使用诸如Harris-Stephen算法,最小特征值和SURF之类的流行算法的特征检测器。对流行的数据集进行了一系列严格而彻底的实验-Faces94和Grimace使我们惊讶地观察到-与LGHD配对的最小特征值的准确度为90.67%,后者为71.3%!与所有其他组合相比,它要优越得多。因此,我们最终确定使用最小特征值算法与特征描述符配对的特征检测器-LGHD胜过其他组合,使该组合成为人脸识别的最佳选择。

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