Human Visual System applied to Facial Recognition

Fatima Zohra ALLAM née CHERGUI, Latifa Hamami-Mitiche, H. Bousbia-salah
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Abstract

Research in the field of biometrics is constantly expanding. Numerous studies have been carried out to develop different techniques with the aim of ensuring reliable and efficient recognition systems. Of our five senses, vision takes up the most of the neurons in our brain. This makes the visual approach challenging. This paper proposes to develop a new facial recognition technique based on the concept of Human Visual System in order to simulate or imitate human perception. Our approach exploits the behavior of the Human Visual System in biometric systems to improve individual recognition. It focuses on Perceptual Channel Decomposition in order to generate images, confined around a certain frequency range, perfectly uncorrelated. For the extraction of characteristic vectors, our technique uses the Principal Component Analysis. The principle of the visual approach consists of exploiting one or more characteristics of the peripheral parts of the Human Visual System. These characteristics can integrate the sensitivity of the Human Visual System to spatial frequencies, its sensitivity to local contrast. The Principal Component Analysis uses a set of seventeen channels, each adjusted to a band of given radial frequencies and orientation. The seventeen output images contain the same spatial information but are perfectly uncorrelated from a spectral point of view. In the implementation phase, we limited ourselves to explore this technique by using only four frequency rings. The results obtained are conclusive and satisfactory.
应用于面部识别的人类视觉系统
生物识别领域的研究在不断扩展。为了开发不同的技术,确保识别系统的可靠性和高效性,人们进行了大量的研究。在我们的五种感官中,视觉占据了大脑中最多的神经元。因此,视觉方法具有挑战性。本文建议基于人类视觉系统的概念开发一种新的面部识别技术,以模拟或模仿人类的感知。我们的方法在生物识别系统中利用了人类视觉系统的行为,以提高个体识别率。它侧重于感知信道分解,以生成在一定频率范围内完全不相关的图像。为了提取特征向量,我们的技术采用了主成分分析法。视觉方法的原理是利用人类视觉系统外围的一个或多个特征。这些特征可以整合人类视觉系统对空间频率的敏感度和对局部对比度的敏感度。主成分分析法使用一组十七个通道,每个通道调整为给定径向频率和方向的频带。十七幅输出图像包含相同的空间信息,但从光谱角度看却完全不相关。在实施阶段,我们只使用了四个频率环来探索这项技术。结果令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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