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Face Recognition Based on Windowing Technique Using DCT, Average Covariance and Artificial Neural Network

机译:基于窗口技术的人脸识别使用DCT,平均协方差和人工神经网络

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The field of Face Recognition (FR) is still a thought-provoking problem, while in recent advances of Artificial Neural Networks (ANN) has shown improved performance in FR rate. In this paper, we propose face recognition based on windowing technique using Discrete Cosine Transform (DCT), average covariance and ANN. The novel concept of windowing technique is used to divide each image to 4x4,8X8 and 16X16 size of windows. The DCT is applied on each window to obtain DCT co-efficients. The covariance matrix is computed on each DCT coefficient matrix and average value of each block is also computed to obtain final feature value. The computation of an average covariance reduces the original size of face image by around 97% i.e., the number of co-efficients in the final feature set is only around 3% of the original size of an image. The proposed method is very efficient in identifying with very less number of features. Network is created and trained the input dataset and target dataset to reach the desired output. The trained net is then tested to compute performance parameters of the network. The experiments are conducted on some popularly used face databases to illuminate the performance and the efficiency of the proposed algorithm. The experimental results are tabulated and are compared with the existing methods. It is observed that, the proposed model achieves better recognition accuracy for 16X16 windowing and also with existing algorithms.
机译:面部识别领域(FR)仍然是一个思想挑衅问题,而在最近人工神经网络(ANN)的进步中已经显示了FR速率的提高性能。在本文中,我们基于使用离散余弦变换(DCT),平均协方差和ANN的窗口技术的人脸识别。窗口技术的新颖概念用于将每个图像划分为4x4,8x8和16x16的窗口大小。在每个窗口上施加DCT以获得DCT共同效率。协方差矩阵在每个DCT系数矩阵上计算,并且还计算每个块的平均值以获得最终特征值。平均协方差的计算将面部图像的原始大小减小约97%,即最终特征集中的共同效率的数量仅为图像的原始大小的3%。所提出的方法在识别非常少的特征时非常有效。创建并训练输入数据集和目标数据集以达到所需输出的网络。然后测试培训的网络以计算网络的性能参数。实验在一些普遍使用的面部数据库上进行,以照亮所提出的算法的性能和效率。实验结果表明并与现有方法进行比较。观察到,所提出的模型可以为16x16窗口和现有算法实现更好的识别精度。

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