High-performance two-stage face recognition algorithm for reduced illumination effect

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Abstract

Face recognition, which is a method of identifying a person in a digital image, is widely applied to biometric-based authentication systems. A significant decrease in recognition rate is caused by extracted features that are affected by illumination. In an attempt to resolve this problem, in this paper, we present a two-stage algorithm, namely, a local binary pattern (LBP) followed by the algorithm Fisherface. As the first step of this work, a face image is converted to an LBP, which is then projected onto a low-dimensional feature space using Fisherface for subsequent classification and recognition. As a result, the outperformance of this work is demonstrated by a recognition rate of up to 96.45%, a figure far beyond 67.97% using the LBP histogram (LBPH), 84.69% using Fisherface, and 93.09% using the support vector machine (SVM) algorithm.

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Yeh, C. Y., Chen, C. F., & Lin, C. C. (2019). High-performance two-stage face recognition algorithm for reduced illumination effect. Sensors and Materials, 31(9), 2771–2776. https://doi.org/10.18494/SAM.2019.2348

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