Novel Illumination-invariant Face Recognition Approach via Reflectance-luminance and Local Matching Model with Weighted Voting System

MD. Ashiquzzaman, S. Alam, Abu Shufian, Protik Parvez Sheikh, Ahmed Hossain Siddiqui
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Abstract

In this study, a novel approach has been introduced for face recognition that is unaffected by changes in illumination. This method is based on the reflectance-luminance model and incorporates local matching using a weighted voting technique to eliminate any artifacts present in the retina images. A total of 37 different linear and nonlinear filters were tested, including high pass and low pass filters, to achieve the reflectance component of the image, which remains invariant to changes in illumination. Among these filters, the maximum filter, which is a simple filter with low computational complexity, yielded the best results in extracting the illumination invariants. It was observed that the illumination invariants obtained through this method outperformed other methods such as QI, SQI, and image enhancement techniques in terms of recognition accuracy. Importantly, the proposed method does not require any prior knowledge about the facial shape or illumination conditions and can be applied to individual images independently. Unlike many existing methods, this approach does not rely on multiple images during the training stage and does not require any parameter selection to generate the illumination invariants. To further enhance the robustness of illumination, a weighted voting system was introduced. Certain regions of the image, which may adversely affect the recognition outcome due to poor illumination, occlusion, noise, or lack of distinctive information, were identified using predefined factors such as grayscale mean, image entropy, and mutual information. The proposed method was also compared to other face recognition methods in the presence of occlusions, and it demonstrated promising results outperforming existing methods. The Python algorithm successfully detects obstructed faces, genders, and ages in videos with a face matching accuracy between 80.9% to 96.9% based on proximity.
采用加权投票系统的反射-亮度和局部匹配模型的新型光照不变人脸识别方法
本研究引入了一种不受光照变化影响的新型人脸识别方法。这种方法以反射-亮度模型为基础,采用加权投票技术进行局部匹配,以消除视网膜图像中存在的任何伪影。共测试了 37 种不同的线性和非线性滤波器,包括高通滤波器和低通滤波器,以获得不受光照变化影响的图像反射分量。在这些滤波器中,最大滤波器是一种计算复杂度较低的简单滤波器,在提取光照不变性方面取得了最佳效果。据观察,通过该方法获得的光照不变性在识别准确率方面优于其他方法,如 QI、SQI 和图像增强技术。重要的是,所提出的方法不需要任何有关面部形状或光照条件的先验知识,而且可以独立应用于单个图像。与许多现有方法不同的是,这种方法在训练阶段不依赖多张图像,也不需要选择任何参数来生成光照不变性。为了进一步增强光照的鲁棒性,我们引入了加权投票系统。利用灰度平均值、图像熵和互信息等预定义因子,识别图像中可能因光照不足、遮挡、噪声或缺乏独特信息而对识别结果产生不利影响的某些区域。此外,还将所提出的方法与其他存在遮挡的人脸识别方法进行了比较,结果表明它优于现有方法。Python 算法成功地检测了视频中遮挡的人脸、性别和年龄,根据距离的远近,人脸匹配准确率在 80.9% 到 96.9% 之间。
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