视频流中仿射变换不变图像人脸检测、跟踪和识别的高效计算智能技术

A. J. Myers, D. Megherbi
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引用次数: 2

摘要

虽然目前有许多方法可以解决在视频序列中检测、跟踪和识别给定人脸所带来的困难,但当姿势、面部表情、方向、照明、缩放和位置存在差异时产生的困难仍然是一个开放的研究问题。在本文中,我们对三个过程中的每一个过程,即给定模板人脸检测,跟踪和识别,提出并执行计算效率的方法进行研究和分析。与现有的迭代方法相比,本文提出的算法速度更快。特别是,我们表明,与这种迭代方法不同,所提出的方法不会通过查看所有可能的面部旋转或缩放因子来估计给定的面部旋转角度或缩放因子。该方法研究了给定人脸图像中两眼瞳孔距离与图像x轴的分割和对齐。给定数据库中的参考人脸图像根据平移、旋转和缩放进行归一化。我们在这里展示了所提出的方法如何估计给定的人脸图像模板旋转和缩放因子导致实时模板图像旋转和缩放校正。这使得识别算法比迭代方法的计算复杂度更低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient computational intelligence technique for affine-transformation-invariant image face detection, tracking, and recognition in a video stream
While there are many current approaches to solving the difficulties that come with detecting, tracking, and recognizing a given face in a video sequence, the difficulties arising when there are differences in pose, facial expression, orientation, lighting, scaling, and location remain an open research problem. In this paper we present and perform the study and analysis of a computationally efficient approach for each of the three processes, namely a given template face detection, tracking, and recognition. The proposed algorithms are faster relatively to other existing iterative methods. In particular, we show that unlike such iterative methods, the proposed method does not estimate a given face rotation angle or scaling factor by looking into all possible face rotations or scaling factors. The proposed method looks into segmenting and aligning the distance between two eyes' pupils in a given face image with the image x-axis. Reference face images in a given database are normalized with respect to translation, rotation, and scaling. We show here how the proposed method to estimate a given face image template rotation and scaling factor leads to real-time template image rotation and scaling corrections. This allows the recognition algorithm to be less computationally complex than iterative methods.
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