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首页> 外文期刊>WSEAS Transactions on Computers >Real-Time Background Subtraction using Adaptive Thresholding and Dynamic Updating for Biometric Face Detection
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Real-Time Background Subtraction using Adaptive Thresholding and Dynamic Updating for Biometric Face Detection

机译:实时阈值减法使用自适应阈值和动态更新进行生物特征人脸检测

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摘要

Face biometrics is an automated method of recognizing a person's face based on a physiological or behavioral characteristic. Face recognition works by first obtaining an image of a person. This process is usually known as face detection. In this paper, we describe an approach for face detection that is able to locate a human face embedded in an outdoor or indoor background. Segmentation of novel or dynamic objects in a scene, often referred to as background subtraction or foreground segmentation, is a critical early step in most computer vision applications in domains such as surveillance and human-computer interaction. All previous implementations aim to handle properly one or more problematic phenomena, such as global illumination changes, shadows, highlights, foreground-background similarity, occlusion and background clutter. Satisfactory results have been obtained but very often at the expense of real-time performance. We propose a method for modeling the background that uses per-pixel time-adaptive Gaussian mixtures in the combined input space of pixel color and pixel neighborhood. We add a safety net to this approach by splitting the luminance and chromaticity components in the background and use their density functions to detect shadows and highlights. Several criteria are then combined to discriminate foreground and background pixels. Our experiments show that the proposed method possesses robustness to problematic phenomena such as global illumination changes, shadows and highlights, without sacrificing real-time performance, making it well-suited for a live video event like face biometric that requires face detection and recognition.
机译:面部生物特征识别是一种基于生理或行为特征来识别人脸的自动化方法。面部识别通过首先获取人的图像来工作。此过程通常称为人脸检测。在本文中,我们描述了一种能够定位嵌入室外或室内背景中的人脸的人脸检测方法。场景中新颖或动态对象的分割(通常称为背景减法或前景分割)是大多数计算机视觉应用(例如监视和人机交互)领域中至关重要的早期步骤。所有先前的实现方式旨在正确处理一个或多个问题现象,例如全局照明变化,阴影,高光,前景与背景的相似性,遮挡和背景混乱。已经获得了令人满意的结果,但是经常会牺牲实时性能。我们提出了一种用于建模背景的方法,该方法在像素颜色和像素邻域的组合输入空间中使用每像素时间自适应高斯混合。我们通过分割背景中的亮度和色度分量并使用它们的密度函数来检测阴影和高光,为该方法添加了安全网。然后将几个标准组合起来以区分前景像素和背景像素。我们的实验表明,所提出的方法在不牺牲实时性能的情况下,对诸如全局照明变化,阴影和高光之类的问题现象具有鲁棒性,使其非常适合需要面部检测和识别的面部生物识别等实时视频事件。

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