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A Comparative Study on Score Level Fusion Techniques and MACE Gabor Filters for Face Recognition in the Presence of Noises and Blurring Effects

机译:在存在噪声存在下对噪声和模糊效应的攻击性融合技术与术术术术比较研究

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Face recognition has been an intensely researched field of computer vision for the past couple of decades. Though significant strides have been made in tackling the problem in controlled domains, significant challenges remain in solving it in the unconstrained domain. Two such scenarios are while recognizing faces acquired from distant cameras and when images are corrupted. The main factors that make this a challenging problem are image degradation due to noise and blur. In this paper we have developed and analyzed Score Level Fusion Technique (SLFT) of appearance based techniques and Minimum Average Correlation Energy (MACE) Gabor filter for face recognition in the presence of various noises and blurring effects. In SLFT the scores are obtained by using combinatory approach and Z-Score normalization of appearance based techniques: Principal Component Analysis (PCA), Fisher faces (FF), Independent Component Analysis (ICA), Fourier Spectra (FS), Singular Value Decomposition (SVD) and Sparse Representation (SR). MACE Gabor filter is designed to minimize the average correlation energy (ACE) of the correlation outputs due to the training images while simultaneously satisfying the correlation peak constraints at the origin. The effect of minimizing the ACE is that the resulting correlation planes would yield values close to zero everywhere except at the location of a trained object, where it would produce a strong peak. We simulate the real world scenario by adding noises: Median noise, Salt and pepper noise and also adding blurring effects: Motion blur and Gaussian blur. To compare the performance of SLFT and MACE Gabor filter, we have considered six standard public face databases: IITK, ATT, JAFEE, CALTECH, GRIMANCE, and SHEFFIELD.
机译:面对几十年来,人脸识别是一项强烈研究的计算机愿景领域。虽然在解决受控领域的问题时已经进行了重要的进步,但在不受约束的域中求解它的重大挑战。两个这样的场景在识别出从远处相机获取的面部以及图像损坏时的面部。使这一具有挑战性问题的主要因素是由于噪音和模糊而导致的图像劣化。在本文中,我们已经开发并分析了基于外观的技术和最小平均相关能量(MACE)Gabor滤波器的得分水平融合技术(SLFT),以便在存在各种噪声和模糊效果的情况下进行面部识别。在SLFT中,通过采用基于外观的技术和Z-score归一化的组合方法和Z定量标准化来获得分数:主成分分析(PCA),Fisher面(FF),独立分量分析(ICA),傅里叶谱(FS),奇异值分解( SVD)和稀疏表示(SR)。 MACE Gabor滤波器被设计成最小化由于训练图像引起的相关输出的平均相关能量(ACE),同时满足原点的相关峰值约束。最小化ACE的效果是,除了训练对象的位置之外,所得到的相关平面将产生靠近零的值,除了训练有素的物体的位置,在那里它将产生强峰值。我们通过添加噪音来模拟现实世界场景:中位数噪音,盐和辣椒噪音以及增加模糊效果:运动模糊和高斯模糊。为了比较SLFT和MACE Gabor过滤器的性能,我们已经考虑了六个标准的公共面孔数据库:IITK,ATT,JAFEE,CALTECH,令人抱负和谢菲尔德。

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